Skip to main content
Top
Published in: Knowledge and Information Systems 8/2020

18-03-2020 | Regular Paper

A survey of state-of-the-art approaches for emotion recognition in text

Authors: Nourah Alswaidan, Mohamed El Bachir Menai

Published in: Knowledge and Information Systems | Issue 8/2020

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Emotion recognition in text is an important natural language processing (NLP) task whose solution can benefit several applications in different fields, including data mining, e-learning, information filtering systems, human–computer interaction, and psychology. Explicit emotion recognition in text is the most addressed problem in the literature. The solution to this problem is mainly based on identifying keywords. Implicit emotion recognition is the most challenging problem to solve because such emotion is typically hidden within the text, and thus, its solution requires an understanding of the context. There are four main approaches for implicit emotion recognition in text: rule-based approaches, classical learning-based approaches, deep learning approaches, and hybrid approaches. In this paper, we critically survey the state-of-the-art research for explicit and implicit emotion recognition in text. We present the different approaches found in the literature, detail their main features, discuss their advantages and limitations, and compare them within tables. This study shows that hybrid approaches and learning-based approaches that utilize traditional text representation with distributed word representation outperform the other approaches on benchmark corpora. This paper also identifies the sets of features that lead to the best-performing approaches; highlights the impacts of simple NLP tasks, such as part-of-speech tagging and parsing, on the performances of these approaches; and indicates some open problems.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Footnotes
Literature
1.
go back to reference Abdullah M, Shaikh S (2018) TeamUNCC at SemEval-2018 task 1: emotion detection in English and Arabic tweets using deep learning. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 350–357 Abdullah M, Shaikh S (2018) TeamUNCC at SemEval-2018 task 1: emotion detection in English and Arabic tweets using deep learning. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 350–357
2.
go back to reference Agrawal A, An A (2012) Unsupervised emotion detection from text using semantic and syntactic relations. In: Proceedings of the 2012 IEEE/WIC/ACM international joint conferences on web intelligence and intelligent agent technology. IEEE Computer Society, Washington, DC, WI-IAT ’12, pp 346–353 Agrawal A, An A (2012) Unsupervised emotion detection from text using semantic and syntactic relations. In: Proceedings of the 2012 IEEE/WIC/ACM international joint conferences on web intelligence and intelligent agent technology. IEEE Computer Society, Washington, DC, WI-IAT ’12, pp 346–353
3.
go back to reference Agrawal P, Suri A (2019) NELEC at SemEval-2019 task 3: think twice before going deep. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 266–271 Agrawal P, Suri A (2019) NELEC at SemEval-2019 task 3: think twice before going deep. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 266–271
4.
go back to reference Alm CO, Roth D, Sproat R (2005) Emotions from text: machine learning for text-based emotion prediction. In: Proceedings of the conference on human language technology and empirical methods in natural language processing. Association for Computational Linguistics, Stroudsburg, PA, HLT ’05, pp 579–586 Alm CO, Roth D, Sproat R (2005) Emotions from text: machine learning for text-based emotion prediction. In: Proceedings of the conference on human language technology and empirical methods in natural language processing. Association for Computational Linguistics, Stroudsburg, PA, HLT ’05, pp 579–586
5.
go back to reference Almahdawi A, Teahan WJ (2017) Emotion recognition in text using PPM. In: Bramer M, Petridis M (eds) Artificial intelligence XXXIV, vol 10630. Lecture notes in computer science. Springer, Cham, pp 149–155 Almahdawi A, Teahan WJ (2017) Emotion recognition in text using PPM. In: Bramer M, Petridis M (eds) Artificial intelligence XXXIV, vol 10630. Lecture notes in computer science. Springer, Cham, pp 149–155
6.
go back to reference Aman S, Szpakowicz S (2007) Identifying expressions of emotion in text. In: Proceedings of the 10th international conference on text, speech and dialogue, TSD’07. Springer, Berlin, pp 196–205 Aman S, Szpakowicz S (2007) Identifying expressions of emotion in text. In: Proceedings of the 10th international conference on text, speech and dialogue, TSD’07. Springer, Berlin, pp 196–205
7.
go back to reference Aman S, Szpakowicz S (2008) Using roget’s thesaurus for fine-grained emotion recognition. In: Proceedings of the 3rd international joint conference on natural language processing (IJCNLP), pp 312–318 Aman S, Szpakowicz S (2008) Using roget’s thesaurus for fine-grained emotion recognition. In: Proceedings of the 3rd international joint conference on natural language processing (IJCNLP), pp 312–318
8.
go back to reference Amelia W, Maulidevi NU (2016) Dominant emotion recognition in short story using keyword spotting technique and learning-based method. In: 2016 International conference on advanced informatics: concepts, theory and application (ICAICTA), pp 1–6 Amelia W, Maulidevi NU (2016) Dominant emotion recognition in short story using keyword spotting technique and learning-based method. In: 2016 International conference on advanced informatics: concepts, theory and application (ICAICTA), pp 1–6
9.
go back to reference Anusha V, Sandhya B (2015) A learning based emotion classifier with semantic text processing. In: El-Alfy MES, Thampi MS, Takagi H, Piramuthu S, Hanne T (eds) Advances in intelligent informatics. Springer, Cham, pp 371–382 Anusha V, Sandhya B (2015) A learning based emotion classifier with semantic text processing. In: El-Alfy MES, Thampi MS, Takagi H, Piramuthu S, Hanne T (eds) Advances in intelligent informatics. Springer, Cham, pp 371–382
10.
go back to reference Baccianella S, Esuli A, Sebastiani F (2010) Sentiwordnet 3.0: an enhanced lexical resource for sentiment analysis and opinion mining. In: Proceedings of the seventh conference on international language resources and evaluation (LREC’10). European Language Resources Association (ELRA), Valletta, vol 25, pp 2200–2204 Baccianella S, Esuli A, Sebastiani F (2010) Sentiwordnet 3.0: an enhanced lexical resource for sentiment analysis and opinion mining. In: Proceedings of the seventh conference on international language resources and evaluation (LREC’10). European Language Resources Association (ELRA), Valletta, vol 25, pp 2200–2204
11.
go back to reference Badaro G, Baly R, Hajj H, Habash N, El-Hajj W (2014) A large scale arabic sentiment lexicon for arabic opinion mining. In: Proceedings of the EMNLP 2014 workshop on arabic natural language processing (ANLP). Association for Computational Linguistics, pp 165–173 Badaro G, Baly R, Hajj H, Habash N, El-Hajj W (2014) A large scale arabic sentiment lexicon for arabic opinion mining. In: Proceedings of the EMNLP 2014 workshop on arabic natural language processing (ANLP). Association for Computational Linguistics, pp 165–173
12.
go back to reference Badaro G, El Jundi O, Khaddaj A, Maarouf A, Kain R, Hajj H, El-Hajj W (2018) EMA at SemEval-2018 task 1: emotion mining for arabic. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 236–244 Badaro G, El Jundi O, Khaddaj A, Maarouf A, Kain R, Hajj H, El-Hajj W (2018) EMA at SemEval-2018 task 1: emotion mining for arabic. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 236–244
13.
go back to reference Badaro G, Jundi H, Hajj H, El-Hajj W, Habash N (2018) Arsel: a large scale arabic sentiment and emotion lexicon. In: The 3rd workshop on open-source arabic corpora and processing tools (OSACT3) co-located with LREC 2018 Badaro G, Jundi H, Hajj H, El-Hajj W, Habash N (2018) Arsel: a large scale arabic sentiment and emotion lexicon. In: The 3rd workshop on open-source arabic corpora and processing tools (OSACT3) co-located with LREC 2018
14.
15.
go back to reference Bandhakavi A, Wiratunga N, Padmanabhan D, Massie S (2017) Lexicon based feature extraction for emotion text classification. Pattern Recognit Lett 93:133–142 Bandhakavi A, Wiratunga N, Padmanabhan D, Massie S (2017) Lexicon based feature extraction for emotion text classification. Pattern Recognit Lett 93:133–142
16.
go back to reference Basile A, Franco-Salvador M, Pawar N, Štajner S, Chinea Rios M, Benajiba Y (2019) SymantoResearch at SemEval-2019 task 3: combined neural models for emotion classification in human-chatbot conversations. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 330–334 Basile A, Franco-Salvador M, Pawar N, Štajner S, Chinea Rios M, Benajiba Y (2019) SymantoResearch at SemEval-2019 task 3: combined neural models for emotion classification in human-chatbot conversations. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 330–334
17.
go back to reference Baziotis C, Pelekis N, Doulkeridis C (2017) Datastories at semeval-2017 task 4: deep LSTM with attention for message-level and topic-based sentiment analysis. In: Proceedings of the 11th international workshop on semantic evaluation (SemEval-2017). Association for Computational Linguistics, pp 747–754 Baziotis C, Pelekis N, Doulkeridis C (2017) Datastories at semeval-2017 task 4: deep LSTM with attention for message-level and topic-based sentiment analysis. In: Proceedings of the 11th international workshop on semantic evaluation (SemEval-2017). Association for Computational Linguistics, pp 747–754
18.
go back to reference Baziotis C, Nikolaos A, Chronopoulou A, Kolovou A, Paraskevopoulos G, Ellinas N, Narayanan S, Potamianos A (2018) NTUA-SLP at SemEval-2018 task 1: predicting affective content in tweets with deep attentive rnns and transfer learning. In: Proceedings of The 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 245–255 Baziotis C, Nikolaos A, Chronopoulou A, Kolovou A, Paraskevopoulos G, Ellinas N, Narayanan S, Potamianos A (2018) NTUA-SLP at SemEval-2018 task 1: predicting affective content in tweets with deep attentive rnns and transfer learning. In: Proceedings of The 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 245–255
19.
go back to reference Biagioni R (2016) Senticnet. In: The SenticNet sentiment lexicon: exploring semantic richness in multi-word concepts. Springer, Cham, pp 17–31 Biagioni R (2016) Senticnet. In: The SenticNet sentiment lexicon: exploring semantic richness in multi-word concepts. Springer, Cham, pp 17–31
20.
go back to reference Binali H, Potdar V (2012) Emotion detection state of the art. In: Proceedings of the CUBE international information technology conference, CUBE’12. ACM, New York, pp 501–507 Binali H, Potdar V (2012) Emotion detection state of the art. In: Proceedings of the CUBE international information technology conference, CUBE’12. ACM, New York, pp 501–507
21.
go back to reference Bojanowski P, Grave E, Joulin A, Mikolov T (2017) Enriching word vectors with subword information. Trans Assoc Comput Linguist 5:135–146 Bojanowski P, Grave E, Joulin A, Mikolov T (2017) Enriching word vectors with subword information. Trans Assoc Comput Linguist 5:135–146
22.
go back to reference Bradley MM, Lang PJ (1999) Affective norms for English words (ANEW): stimuli, instruction manual, and affective ratings. Tech. rep., Center for Research in Psychophysiology, University of Florida, Gainesville Bradley MM, Lang PJ (1999) Affective norms for English words (ANEW): stimuli, instruction manual, and affective ratings. Tech. rep., Center for Research in Psychophysiology, University of Florida, Gainesville
23.
go back to reference Bravo-Marquez F, Frank E, Mohammad SM, Pfahringer B (2016) Determining word-emotion associations from tweets by multi-label classification. In: 2016 IEEE/WIC/ACM international conference on web intelligence, WI 2016. IEEE Computer Society, pp 536–539 Bravo-Marquez F, Frank E, Mohammad SM, Pfahringer B (2016) Determining word-emotion associations from tweets by multi-label classification. In: 2016 IEEE/WIC/ACM international conference on web intelligence, WI 2016. IEEE Computer Society, pp 536–539
24.
go back to reference Cambria E, Livingstone A, Hussain A (2012) The hourglass of emotions. In: Esposito A, Esposito AM, Vinciarelli A, Hoffmann R, Müller VC (eds) Cognitive behavioural systems. Springer, Berlin, pp 144–157 Cambria E, Livingstone A, Hussain A (2012) The hourglass of emotions. In: Esposito A, Esposito AM, Vinciarelli A, Hoffmann R, Müller VC (eds) Cognitive behavioural systems. Springer, Berlin, pp 144–157
25.
go back to reference Canales L, Martínez-Barco P (2014) Emotion detection from text: a survey. In: Processing in the 5th information systems research working days (JISIC 2014), pp 37–43 Canales L, Martínez-Barco P (2014) Emotion detection from text: a survey. In: Processing in the 5th information systems research working days (JISIC 2014), pp 37–43
26.
go back to reference Carlson A, Cumby C, Rosen J, Roth D (1999) The SNoW learning architecture. Tech. rep., Technical report UIUCDCS Carlson A, Cumby C, Rosen J, Roth D (1999) The SNoW learning architecture. Tech. rep., Technical report UIUCDCS
27.
go back to reference Cer D, Yang Y, Kong S, Hua NH, Limtiaco N, St John R, Constant N, Guajardo-Cespedes M, Yuan S, Tar C, Sung Y, Strope B, Kurzweil R (2018) Universal sentence encoder. CoRR abs/1803.11175 Cer D, Yang Y, Kong S, Hua NH, Limtiaco N, St John R, Constant N, Guajardo-Cespedes M, Yuan S, Tar C, Sung Y, Strope B, Kurzweil R (2018) Universal sentence encoder. CoRR abs/1803.11175
28.
go back to reference Chaffar S, Inkpen D (2011) Using a heterogeneous dataset for emotion analysis in text. In: Butz C, Lingras P (eds) Proceedings of the 24th Canadian conference on advances in artificial intelligence, Canadian AI’11. Springer, Berlin, pp 62–67 Chaffar S, Inkpen D (2011) Using a heterogeneous dataset for emotion analysis in text. In: Butz C, Lingras P (eds) Proceedings of the 24th Canadian conference on advances in artificial intelligence, Canadian AI’11. Springer, Berlin, pp 62–67
29.
go back to reference Chatterjee A, Narahari KN, Joshi M, Agrawal P (2019) Semeval-2019 task 3: emocontext: contextual emotion detection in text. In: Proceedings of the 13th international workshop on semantic evaluation (SemEval-2019), Minneapolis Chatterjee A, Narahari KN, Joshi M, Agrawal P (2019) Semeval-2019 task 3: emocontext: contextual emotion detection in text. In: Proceedings of the 13th international workshop on semantic evaluation (SemEval-2019), Minneapolis
30.
go back to reference Chen KJ, Huang CR, Chang LP, Hsu HL (1996) Sinica corpus: design methodology for balanced corpora. In: Proceedings of the 11th Pacific Asia conference on language, information and computation. Kyung Hee University, pp 167–176 Chen KJ, Huang CR, Chang LP, Hsu HL (1996) Sinica corpus: design methodology for balanced corpora. In: Proceedings of the 11th Pacific Asia conference on language, information and computation. Kyung Hee University, pp 167–176
31.
go back to reference Cohen WW (1995) Fast effective rule induction. In: Prieditis A, Russell S (eds) Machine learning proceedings 1995. Morgan Kaufmann, San Francisco, pp 115–123 Cohen WW (1995) Fast effective rule induction. In: Prieditis A, Russell S (eds) Machine learning proceedings 1995. Morgan Kaufmann, San Francisco, pp 115–123
32.
go back to reference Dai Z, Yang Z, Yang Y, Carbonell JG, Le QVL, Salakhutdinov R (2019) Transformer-xl: attentive language models beyond a fixed-length context. arXiv:1901.02860 Dai Z, Yang Z, Yang Y, Carbonell JG, Le QVL, Salakhutdinov R (2019) Transformer-xl: attentive language models beyond a fixed-length context. arXiv:​1901.​02860
33.
go back to reference Danisman T, Alpkocak A (2008) Feeler: emotion classification of text using vector space model. In: AISB 2008 convention communication, interaction and social intelligence, Aberdeen, vol 2, pp 53–60 Danisman T, Alpkocak A (2008) Feeler: emotion classification of text using vector space model. In: AISB 2008 convention communication, interaction and social intelligence, Aberdeen, vol 2, pp 53–60
34.
go back to reference Darwin C (1872) The expression of the emotions in man and animals. John Murray, London Darwin C (1872) The expression of the emotions in man and animals. John Murray, London
35.
go back to reference De Bruyne L, De Clercq O, Hoste V (2018) LT3 at SemEval-2018 task 1: a classifier chain to detect emotions in tweets. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 123–127 De Bruyne L, De Clercq O, Hoste V (2018) LT3 at SemEval-2018 task 1: a classifier chain to detect emotions in tweets. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 123–127
36.
go back to reference Deborah SA, Milton R, Hannah S (2016) A survey of emotion analysis. Middle East J Sci Res 24:32–38 Deborah SA, Milton R, Hannah S (2016) A survey of emotion analysis. Middle East J Sci Res 24:32–38
37.
go back to reference Deborah SA, Rajalakshmi S, Rajendram SM, Mirnalinee TT (2018) SSN MLRG1 at SemEval-2018 task 1: Emotion and sentiment intensity detection using rule based feature selection. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 324–328 Deborah SA, Rajalakshmi S, Rajendram SM, Mirnalinee TT (2018) SSN MLRG1 at SemEval-2018 task 1: Emotion and sentiment intensity detection using rule based feature selection. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 324–328
38.
go back to reference Desmet B, Hoste VH (2013) Emotion detection in suicide notes. Expert Syst Appl 40(16):6351–6358 Desmet B, Hoste VH (2013) Emotion detection in suicide notes. Expert Syst Appl 40(16):6351–6358
39.
go back to reference Devlin J, Chang M, Lee K, Toutanova K (2019) BERT: pre-training of deep bidirectional transformers for language understanding. In: Proceedings of the 2019 conference of the North American chapter of the association for computational linguistics: human language technologies, NAACL-HLT 2019, vol 1, pp 4171–4186 Devlin J, Chang M, Lee K, Toutanova K (2019) BERT: pre-training of deep bidirectional transformers for language understanding. In: Proceedings of the 2019 conference of the North American chapter of the association for computational linguistics: human language technologies, NAACL-HLT 2019, vol 1, pp 4171–4186
40.
go back to reference Dong Z, Dong Q (1999) Hownet knowledge database Dong Z, Dong Q (1999) Hownet knowledge database
41.
go back to reference Douiji Y, Mousannif H, Al Moatassime H (2016) Using youtube comments for text-based emotion recognition. Procedia Comput Sci 83:292–299 Douiji Y, Mousannif H, Al Moatassime H (2016) Using youtube comments for text-based emotion recognition. Procedia Comput Sci 83:292–299
42.
go back to reference Du P, Nie JY (2018) Mutux at SemEval-2018 task 1: exploring impacts of context information on emotion detection. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 345–349 Du P, Nie JY (2018) Mutux at SemEval-2018 task 1: exploring impacts of context information on emotion detection. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 345–349
43.
go back to reference Eisner B, Rocktäschel T, Augenstein I, Bosnjak M, Riedel S (2016) emoji2vec: learning emoji representations from their description. In: Proceedings of the fourth international workshop on natural language processing for social media. Association for Computational Linguistics, pp 48–54 Eisner B, Rocktäschel T, Augenstein I, Bosnjak M, Riedel S (2016) emoji2vec: learning emoji representations from their description. In: Proceedings of the fourth international workshop on natural language processing for social media. Association for Computational Linguistics, pp 48–54
44.
go back to reference Ekman P (1999) Basic emotions. In: Dalgleish T, Power M (eds) The handbook of cognition and emotion. Wiley, New York, pp 45–60 Ekman P (1999) Basic emotions. In: Dalgleish T, Power M (eds) The handbook of cognition and emotion. Wiley, New York, pp 45–60
45.
go back to reference Ellsworth PC (2013) Appraisal theory: old and new questions. Emotion Rev 5(2):125–131 Ellsworth PC (2013) Appraisal theory: old and new questions. Emotion Rev 5(2):125–131
46.
go back to reference Esuli A, Sebastiani F (2005) Determining the semantic orientation of terms through gloss classification. In: Proceedings of the 14th ACM international conference on information and knowledge management, CIKM’05. ACM, New York, pp 617–624 Esuli A, Sebastiani F (2005) Determining the semantic orientation of terms through gloss classification. In: Proceedings of the 14th ACM international conference on information and knowledge management, CIKM’05. ACM, New York, pp 617–624
47.
go back to reference Esuli A, Sebastiani F (2006) Sentiwordnet: a publicly available lexical resource for opinion mining. In: Proceedings of the 5th conference on language resources and evaluation (LREC’06). European Language Resources Association (ELRA), Genoa, pp 417–422 Esuli A, Sebastiani F (2006) Sentiwordnet: a publicly available lexical resource for opinion mining. In: Proceedings of the 5th conference on language resources and evaluation (LREC’06). European Language Resources Association (ELRA), Genoa, pp 417–422
48.
go back to reference Ezen-Can A, Can EF (2018) RNN for affects at SemEval-2018 task 1: formulating affect identification as a binary classification problem. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 162–166 Ezen-Can A, Can EF (2018) RNN for affects at SemEval-2018 task 1: formulating affect identification as a binary classification problem. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 162–166
49.
go back to reference Felbo B, Mislove A, Søgaard A, Rahwan I, Lehmann S (2017) Using millions of emoji occurrences to learn any-domain representations for detecting sentiment, emotion and sarcasm. In: Proceedings of the 2017 conference on empirical methods in natural language processing. Association for Computational Linguistics, pp 1615–1625 Felbo B, Mislove A, Søgaard A, Rahwan I, Lehmann S (2017) Using millions of emoji occurrences to learn any-domain representations for detecting sentiment, emotion and sarcasm. In: Proceedings of the 2017 conference on empirical methods in natural language processing. Association for Computational Linguistics, pp 1615–1625
50.
go back to reference Fellbaum C (1998) WordNet: an electronic lexical database. Language, speech, and communication. MIT Press, CambridgeMATH Fellbaum C (1998) WordNet: an electronic lexical database. Language, speech, and communication. MIT Press, CambridgeMATH
51.
go back to reference Frijda NH (1993) Moods, emotion episodes and emotions. In: Lewis M, Haviland JM (eds) Handbook of emotions. Guilford Press, New York, pp 381–403 Frijda NH (1993) Moods, emotion episodes and emotions. In: Lewis M, Haviland JM (eds) Handbook of emotions. Guilford Press, New York, pp 381–403
52.
go back to reference Gao K, Xu H, Wang J (2014) Emotion classification based on structured information. In: 2014 International conference on multisensor fusion and information integration for intelligent systems (MFI), pp 1–6 Gao K, Xu H, Wang J (2014) Emotion classification based on structured information. In: 2014 International conference on multisensor fusion and information integration for intelligent systems (MFI), pp 1–6
53.
go back to reference Ge S, Qi T, Wu C, Huang Y (2019) \(\text{THU}\_\text{ NGN }\) at SemEval-2019 task 3: dialog emotion classification using attentional LSTM-CNN. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 340–344 Ge S, Qi T, Wu C, Huang Y (2019) \(\text{THU}\_\text{ NGN }\) at SemEval-2019 task 3: dialog emotion classification using attentional LSTM-CNN. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 340–344
54.
go back to reference Gee G, Wang E (2018) psyML at SemEval-2018 task 1: transfer learning for sentiment and emotion analysis. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 369–376 Gee G, Wang E (2018) psyML at SemEval-2018 task 1: transfer learning for sentiment and emotion analysis. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 369–376
55.
go back to reference Ghazi D, Inkpen D, Szpakowicz S (2010) Hierarchical versus flat classification of emotions in text. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 140–146 Ghazi D, Inkpen D, Szpakowicz S (2010) Hierarchical versus flat classification of emotions in text. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 140–146
56.
go back to reference Ghazi D, Inkpen D, Szpakowicz S (2014) Prior and contextual emotion of words in sentential context. Comput Speech Lang 28(1):76–92 Ghazi D, Inkpen D, Szpakowicz S (2014) Prior and contextual emotion of words in sentential context. Comput Speech Lang 28(1):76–92
57.
go back to reference Gievska S, Koroveshovski K, Chavdarova T (2014) A hybrid approach for emotion detection in support of affective interaction. In: 2014 IEEE international conference on data mining workshop (ICDMW), pp 352–359 Gievska S, Koroveshovski K, Chavdarova T (2014) A hybrid approach for emotion detection in support of affective interaction. In: 2014 IEEE international conference on data mining workshop (ICDMW), pp 352–359
58.
go back to reference Godin F, Vandersmissen B, De Neve W, Van de Walle R (2015) Multimedia lab @ ACL WNUT NER shared task: Named entity recognition for twitter microposts using distributed word representations. In: Proceedings of the workshop on noisy user-generated text. Association for Computational Linguistics, Beijing, pp 146–153 Godin F, Vandersmissen B, De Neve W, Van de Walle R (2015) Multimedia lab @ ACL WNUT NER shared task: Named entity recognition for twitter microposts using distributed word representations. In: Proceedings of the workshop on noisy user-generated text. Association for Computational Linguistics, Beijing, pp 146–153
59.
go back to reference Goodfellow I, Bengio Y, Courville A (2016) Deep learning. MIT Press, CambridgeMATH Goodfellow I, Bengio Y, Courville A (2016) Deep learning. MIT Press, CambridgeMATH
60.
go back to reference Grandjean D, Sander D, Scherer KR (2008) Conscious emotional experience emerges as a function of multilevel, appraisal-driven response synchronization. Conscious Cognit 17(2):484–495 Grandjean D, Sander D, Scherer KR (2008) Conscious emotional experience emerges as a function of multilevel, appraisal-driven response synchronization. Conscious Cognit 17(2):484–495
61.
go back to reference Graves A, Schmidhuber J (2005) Framewise phoneme classification with bidirectional lstm and other neural network architectures. Neural Netw 18(5):602–610 Graves A, Schmidhuber J (2005) Framewise phoneme classification with bidirectional lstm and other neural network architectures. Neural Netw 18(5):602–610
62.
go back to reference Gunes H, Pantic M (2010) Automatic, dimensional and continuous emotion recognition. Int J Synth Emot (IJSE) 1(1):68–99 Gunes H, Pantic M (2010) Automatic, dimensional and continuous emotion recognition. Int J Synth Emot (IJSE) 1(1):68–99
63.
go back to reference Haggag MH (2014) Frame semantics evolutionary model for emotion detection. Comput Inf Sci 7(1):136–161 Haggag MH (2014) Frame semantics evolutionary model for emotion detection. Comput Inf Sci 7(1):136–161
64.
go back to reference Hall M, Frank E, Holmes G, Pfahringer B, Reutemann P, Witten IH (2009) The weka data mining software: an update. SIGKDD Explor Newsl 11(1):10–18 Hall M, Frank E, Holmes G, Pfahringer B, Reutemann P, Witten IH (2009) The weka data mining software: an update. SIGKDD Explor Newsl 11(1):10–18
65.
go back to reference Herzig J, Shmueli-Scheuer M, Konopnicki D (2017) Emotion detection from text via ensemble classification using word embeddings. In: Proceedings of the ACM SIGIR international conference on theory of information retrieval, ICTIR’17. ACM, New York, pp 269–272 Herzig J, Shmueli-Scheuer M, Konopnicki D (2017) Emotion detection from text via ensemble classification using word embeddings. In: Proceedings of the ACM SIGIR international conference on theory of information retrieval, ICTIR’17. ACM, New York, pp 269–272
66.
go back to reference Ho DT, Cao TH (2012) A high-order hidden markov model for emotion detection from textual data. In: Proceedings of the 12th Pacific rim conference on knowledge management and acquisition for intelligent systems, PKAW’12. Springer, Berlin, pp 94–105 Ho DT, Cao TH (2012) A high-order hidden markov model for emotion detection from textual data. In: Proceedings of the 12th Pacific rim conference on knowledge management and acquisition for intelligent systems, PKAW’12. Springer, Berlin, pp 94–105
67.
go back to reference Howard J, Ruder S (2018) Universal language model fine-tuning for text classification. In: Proceedings of the 56th annual meeting of the association for computational linguistics, vol 1. Association for Computational Linguistics, Melbourne, pp 328–339 Howard J, Ruder S (2018) Universal language model fine-tuning for text classification. In: Proceedings of the 56th annual meeting of the association for computational linguistics, vol 1. Association for Computational Linguistics, Melbourne, pp 328–339
68.
go back to reference Hu M, Liu B (2004) Mining and summarizing customer reviews. In: Proceedings of the 10th ACM SIGKDD international conference on knowledge discovery and data mining, KDD’04. ACM, New York, pp 168–177 Hu M, Liu B (2004) Mining and summarizing customer reviews. In: Proceedings of the 10th ACM SIGKDD international conference on knowledge discovery and data mining, KDD’04. ACM, New York, pp 168–177
69.
go back to reference Huang CR, Chen Y, Lee SYM (2010) Textual emotion processing from event analysis. In: Proceedings of the joint conference on Chinese language processing, Beijing Huang CR, Chen Y, Lee SYM (2010) Textual emotion processing from event analysis. In: Proceedings of the joint conference on Chinese language processing, Beijing
70.
go back to reference Hudlicka E (2015) Computational analytical framework for affective modeling: towards guidelines for designing computational models of emotions. In: Vallverdú J (ed) Handbook of research on synthesizing human emotion in intelligent systems and robotics. IGI Global, Hershey, pp 1–62 Hudlicka E (2015) Computational analytical framework for affective modeling: towards guidelines for designing computational models of emotions. In: Vallverdú J (ed) Handbook of research on synthesizing human emotion in intelligent systems and robotics. IGI Global, Hershey, pp 1–62
71.
go back to reference Hume D (2012) Emotion and moods. In: Robbins SP, Judge TA (eds) Organizational behaviour. Pearson, New York, pp 258–297 Hume D (2012) Emotion and moods. In: Robbins SP, Judge TA (eds) Organizational behaviour. Pearson, New York, pp 258–297
72.
go back to reference Hutto C, Gilbert E (2014) Vader: a parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the 8th international conference on weblogs and social media, ICWSM 2014, pp 216–225 Hutto C, Gilbert E (2014) Vader: a parsimonious rule-based model for sentiment analysis of social media text. In: Proceedings of the 8th international conference on weblogs and social media, ICWSM 2014, pp 216–225
73.
go back to reference Izard CE (1971) The face of emotion. Century psychology series. Appleton-Century-Crofts Izard CE (1971) The face of emotion. Century psychology series. Appleton-Century-Crofts
74.
go back to reference Izard CE (1977) Human emotions. Plenum Press, New York Izard CE (1977) Human emotions. Plenum Press, New York
75.
go back to reference Jain U, Sandhu A (2015) A review on the emotion detection from text using machine learning techniques. Int J Curr Eng Technol 5(4):2645–2650 Jain U, Sandhu A (2015) A review on the emotion detection from text using machine learning techniques. Int J Curr Eng Technol 5(4):2645–2650
76.
go back to reference Jain VK, Kumar S, Fernandes SL (2017) Extraction of emotions from multilingual text using intelligent text processing and computational linguistics. J Comput Sci 21:316–326 Jain VK, Kumar S, Fernandes SL (2017) Extraction of emotions from multilingual text using intelligent text processing and computational linguistics. J Comput Sci 21:316–326
77.
go back to reference Jarmasz M, Szpakowicz S (2001) The design and implementation of an electronic lexical knowledge base. In: Stroulia E, Matwin S (eds) Advances in artificial intelligence. Lecture notes in artificial intelligence, vol 2056. Springer, Berlin, pp 325–334 Jarmasz M, Szpakowicz S (2001) The design and implementation of an electronic lexical knowledge base. In: Stroulia E, Matwin S (eds) Advances in artificial intelligence. Lecture notes in artificial intelligence, vol 2056. Springer, Berlin, pp 325–334
78.
go back to reference Jin X, Wang Z (2005) An emotion space model for recognition of emotions in spoken Chinese. In: Proceedings of the first international conference on affective computing and intelligent interaction, ACII’05. Springer, Berlin, pp 397–402 Jin X, Wang Z (2005) An emotion space model for recognition of emotions in spoken Chinese. In: Proceedings of the first international conference on affective computing and intelligent interaction, ACII’05. Springer, Berlin, pp 397–402
79.
go back to reference Kao ECC, Liu CC, Yang TH, Hsieh CT, Soo VW (2009) Towards text-based emotion detection—a survey and possible improvements. In: Proceedings of the 2009 international conference on information management and engineering, ICIME’09. IEEE Computer Society, Washington, pp 70–74 Kao ECC, Liu CC, Yang TH, Hsieh CT, Soo VW (2009) Towards text-based emotion detection—a survey and possible improvements. In: Proceedings of the 2009 international conference on information management and engineering, ICIME’09. IEEE Computer Society, Washington, pp 70–74
80.
go back to reference Ke G, Meng Q, Finley T, Wang T, Chen W, Ma W, Ye Q, Liu TY (2017) Lightgbm: a highly efficient gradient boosting decision tree. In: Advances in neural information processing systems. Curran Associates, Inc., pp 3146–3154 Ke G, Meng Q, Finley T, Wang T, Chen W, Ma W, Ye Q, Liu TY (2017) Lightgbm: a highly efficient gradient boosting decision tree. In: Advances in neural information processing systems. Curran Associates, Inc., pp 3146–3154
81.
go back to reference Kim SM, Valitutti A, Calvo RA (2010) Evaluation of unsupervised emotion models to textual affect recognition. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 62–70 Kim SM, Valitutti A, Calvo RA (2010) Evaluation of unsupervised emotion models to textual affect recognition. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 62–70
82.
go back to reference Kim Y, Lee H, Jung K (2018) AttnConvnet at SemEval-2018 task 1: attention-based convolutional neural networks for multi-label emotion classification. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 141–145 Kim Y, Lee H, Jung K (2018) AttnConvnet at SemEval-2018 task 1: attention-based convolutional neural networks for multi-label emotion classification. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 141–145
83.
go back to reference Kiritchenko S, Zhu X, Mohammad SM (2014) Sentiment analysis of short informal texts. J Artif Intell Res (JAIR) 50(1):723–762 Kiritchenko S, Zhu X, Mohammad SM (2014) Sentiment analysis of short informal texts. J Artif Intell Res (JAIR) 50(1):723–762
84.
go back to reference Kleinginna PR, Kleinginna AM (1981) A categorized list of emotion definitions, with suggestions for a consensual definition. Motiv Emotion 5(4):345–379 Kleinginna PR, Kleinginna AM (1981) A categorized list of emotion definitions, with suggestions for a consensual definition. Motiv Emotion 5(4):345–379
85.
go back to reference Kravchenko D, Pivovarova L (2018) DL Team at SemEval-2018 task 1: tweet affect detection using sentiment lexicons and embeddings. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 172–176 Kravchenko D, Pivovarova L (2018) DL Team at SemEval-2018 task 1: tweet affect detection using sentiment lexicons and embeddings. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 172–176
86.
go back to reference Lee SYM, Chen Y, Huang CR (2010) A text-driven rule-based system for emotion cause detection. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 45–53 Lee SYM, Chen Y, Huang CR (2010) A text-driven rule-based system for emotion cause detection. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 45–53
87.
go back to reference Li M, Dong Z, Fan Z, Meng K, Cao J, Ding G, Liu Y, Shan J, Li B (2018) ISCLAB at SemEval-2018 task 1: Uir-miner for affect in tweets. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 286–290 Li M, Dong Z, Fan Z, Meng K, Cao J, Ding G, Liu Y, Shan J, Li B (2018) ISCLAB at SemEval-2018 task 1: Uir-miner for affect in tweets. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 286–290
88.
go back to reference Li X, Pang J, Mo B, Rao Y (2016) Hybrid neural networks for social emotion detection over short text. In: 2016 International joint conference on neural networks (IJCNN), pp 537–544 Li X, Pang J, Mo B, Rao Y (2016) Hybrid neural networks for social emotion detection over short text. In: 2016 International joint conference on neural networks (IJCNN), pp 537–544
89.
go back to reference Liu H, Singh P (2004) Conceptnet—a practical commonsense reasoning tool-kit. BT Technol J 22(4):211–226 Liu H, Singh P (2004) Conceptnet—a practical commonsense reasoning tool-kit. BT Technol J 22(4):211–226
90.
go back to reference Ma C, Prendinger H, Ishizuka M (2005) Emotion estimation and reasoning based on affective textual interaction. In: Tao J, Tieniu T, Picard RW (eds) Affective computing and intelligent interaction. Springer, Berlin, pp 622–628 Ma C, Prendinger H, Ishizuka M (2005) Emotion estimation and reasoning based on affective textual interaction. In: Tao J, Tieniu T, Picard RW (eds) Affective computing and intelligent interaction. Springer, Berlin, pp 622–628
91.
go back to reference Ma L, Zhang L, Ye W, Hu W (2019) PKUSE at SemEval-2019 task 3: emotion detection with emotion-oriented neural attention network. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 287–291 Ma L, Zhang L, Ye W, Hu W (2019) PKUSE at SemEval-2019 task 3: emotion detection with emotion-oriented neural attention network. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 287–291
92.
go back to reference Manning C, Surdeanu M, Bauer J, Finkel J, Bethard S, McClosky D (2014) The stanford corenlp natural language processing toolkit. In: Proceedings of 52nd annual meeting of the association for computational linguistics: system demonstrations. Association for Computational Linguistics, pp 55–60 Manning C, Surdeanu M, Bauer J, Finkel J, Bethard S, McClosky D (2014) The stanford corenlp natural language processing toolkit. In: Proceedings of 52nd annual meeting of the association for computational linguistics: system demonstrations. Association for Computational Linguistics, pp 55–60
93.
go back to reference Meisheri H, Dey L (2018) TCS research at SemEval-2018 task 1: learning robust representations using multi-attention architecture. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 291–299 Meisheri H, Dey L (2018) TCS research at SemEval-2018 task 1: learning robust representations using multi-attention architecture. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 291–299
94.
go back to reference Merity S, Xiong C, Bradbury J, Socher R (2017) Pointer sentinel mixture models. In: 5th International conference on learning representations, ICLR 2017 Merity S, Xiong C, Bradbury J, Socher R (2017) Pointer sentinel mixture models. In: 5th International conference on learning representations, ICLR 2017
95.
go back to reference Mikolov T, Chen K, Corrado G, Dean J (2013) Efficient estimation of word representations in vector space. arXiv preprint arXiv:1301.3781 Mikolov T, Chen K, Corrado G, Dean J (2013) Efficient estimation of word representations in vector space. arXiv preprint arXiv:​1301.​3781
96.
go back to reference Mikolov T, Sutskever I, Chen K, Corrado G, Dean J (2013) Distributed representations of words and phrases and their compositionality. In: Proceedings of the 26th international conference on neural information processing systems, Vol 2, NIPS’13. Curran Associates Inc., USA, pp 3111–3119 Mikolov T, Sutskever I, Chen K, Corrado G, Dean J (2013) Distributed representations of words and phrases and their compositionality. In: Proceedings of the 26th international conference on neural information processing systems, Vol 2, NIPS’13. Curran Associates Inc., USA, pp 3111–3119
97.
go back to reference Mikolov T, Grave E, Bojanowski P, Puhrsch C, Joulin A (2018) Advances in pre-training distributed word representations. In: Proceedings of the eleventh international conference on language resources and evaluation (LREC-2018). European Languages Resources Association (ELRA), Miyazaki Mikolov T, Grave E, Bojanowski P, Puhrsch C, Joulin A (2018) Advances in pre-training distributed word representations. In: Proceedings of the eleventh international conference on language resources and evaluation (LREC-2018). European Languages Resources Association (ELRA), Miyazaki
98.
go back to reference Mohammad SM (2012) #Emotional tweets. In: Proceedings of the first joint conference on lexical and computational semantics—volume 1: proceedings of the main conference and the shared task, and volume 2: proceedings of the sixth international workshop on semantic evaluation, SemEval’12. Association for Computational Linguistics, Stroudsburg, pp 246–255 Mohammad SM (2012) #Emotional tweets. In: Proceedings of the first joint conference on lexical and computational semantics—volume 1: proceedings of the main conference and the shared task, and volume 2: proceedings of the sixth international workshop on semantic evaluation, SemEval’12. Association for Computational Linguistics, Stroudsburg, pp 246–255
99.
go back to reference Mohammad SM (2018) Obtaining reliable human ratings of valence, arousal, and dominance for 20,000 english words. In: Proceedings of the annual conference of the association for computational linguistics (ACL), pp 174–184 Mohammad SM (2018) Obtaining reliable human ratings of valence, arousal, and dominance for 20,000 english words. In: Proceedings of the annual conference of the association for computational linguistics (ACL), pp 174–184
100.
go back to reference Mohammad SM (2018) Word affect intensities. In: Proceedings of the 11th edition of the language resources and evaluation conference (LREC-2018), Miyazaki Mohammad SM (2018) Word affect intensities. In: Proceedings of the 11th edition of the language resources and evaluation conference (LREC-2018), Miyazaki
101.
go back to reference Mohammad SM, Kiritchenko S (2015) Using hashtags to capture fine emotion categories from tweets. Comput Intell 31(2):301–326MathSciNet Mohammad SM, Kiritchenko S (2015) Using hashtags to capture fine emotion categories from tweets. Comput Intell 31(2):301–326MathSciNet
102.
go back to reference Mohammad SM, Turney PD (2010) Emotions evoked by common words and phrases: using mechanical turk to create an emotion lexicon. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 26–34 Mohammad SM, Turney PD (2010) Emotions evoked by common words and phrases: using mechanical turk to create an emotion lexicon. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 26–34
103.
go back to reference Mohammad SM, Turney PD (2013) Crowdsourcing a word-emotion association lexicon. Comput Intell 29(3):436–465MathSciNet Mohammad SM, Turney PD (2013) Crowdsourcing a word-emotion association lexicon. Comput Intell 29(3):436–465MathSciNet
104.
go back to reference Mohammad SM, Bravo-Marquez F, Salameh M, Kiritchenko S (2018) SemEval-2018 Task 1: affect in tweets. In: Proceedings of international workshop on semantic evaluation (SemEval-2018), New Orleans Mohammad SM, Bravo-Marquez F, Salameh M, Kiritchenko S (2018) SemEval-2018 Task 1: affect in tweets. In: Proceedings of international workshop on semantic evaluation (SemEval-2018), New Orleans
105.
go back to reference Muljono, Winarsih NAS, Supriyanto C (2016) Evaluation of classification methods for Indonesian text emotion detection. In: 2016 International seminar on application for technology of information and communication (ISemantic), pp 130–133 Muljono, Winarsih NAS, Supriyanto C (2016) Evaluation of classification methods for Indonesian text emotion detection. In: 2016 International seminar on application for technology of information and communication (ISemantic), pp 130–133
106.
go back to reference Mulki H, Bechikh Ali C, Haddad H, Babaoglu I (2018) Tw-StAR at SemEval-2018 task 1: preprocessing impact on multi-label emotion classification. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 167–171 Mulki H, Bechikh Ali C, Haddad H, Babaoglu I (2018) Tw-StAR at SemEval-2018 task 1: preprocessing impact on multi-label emotion classification. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 167–171
107.
go back to reference Neviarouskaya A, Prendinger H, Ishizuka M (2009) Compositionality principle in recognition of fine-grained emotions from text. In: Proceedings of the third international ICWSM conference, pp 278–281 Neviarouskaya A, Prendinger H, Ishizuka M (2009) Compositionality principle in recognition of fine-grained emotions from text. In: Proceedings of the third international ICWSM conference, pp 278–281
108.
go back to reference Neviarouskaya A, Prendinger H, Ishizuka M (2010) AM: textual attitude analysis model. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 80–88 Neviarouskaya A, Prendinger H, Ishizuka M (2010) AM: textual attitude analysis model. In: Proceedings of the NAACL HLT 2010 workshop on computational approaches to analysis and generation of emotion in text, CAAGET’10. Association for Computational Linguistics, Stroudsburg, pp 80–88
109.
go back to reference Nielsen FÅ (2011) A new ANEW: evaluation of a word list for sentiment analysis in microblogs. In: Proceedings of the ESWC2011 workshop on ’Making Sense of Microposts’: big things come in small packages. Heraklion, Crete, pp 93–98 Nielsen FÅ (2011) A new ANEW: evaluation of a word list for sentiment analysis in microblogs. In: Proceedings of the ESWC2011 workshop on ’Making Sense of Microposts’: big things come in small packages. Heraklion, Crete, pp 93–98
110.
go back to reference Ortony A, Clore GL, Collins A (1990) The cognitive structure of emotions. Cambridge University Press, Cambridge Ortony A, Clore GL, Collins A (1990) The cognitive structure of emotions. Cambridge University Press, Cambridge
111.
go back to reference Owoputi O, O’Connor B, Dyer C, Gimpel K, Schneider N, Smith NA (2013) Improved part-of-speech tagging for online conversational text with word clusters. In: Proceedings of the 2013 conference of the North American chapter of the association for computational linguistics: human language technologies. Association for Computational Linguistics, pp 380–390 Owoputi O, O’Connor B, Dyer C, Gimpel K, Schneider N, Smith NA (2013) Improved part-of-speech tagging for online conversational text with word clusters. In: Proceedings of the 2013 conference of the North American chapter of the association for computational linguistics: human language technologies. Association for Computational Linguistics, pp 380–390
112.
go back to reference Panksepp J (2004) Affective neuroscience: the foundations of human and animal emotions. Series in affective science. Oxford University Press, Oxford Panksepp J (2004) Affective neuroscience: the foundations of human and animal emotions. Series in affective science. Oxford University Press, Oxford
113.
go back to reference Park JH, Xu P, Fung P (2018) PlusEmo2Vec at SemEval-2018 task 1: exploiting emotion knowledge from emoji and #hashtags. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 264–272 Park JH, Xu P, Fung P (2018) PlusEmo2Vec at SemEval-2018 task 1: exploiting emotion knowledge from emoji and #hashtags. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 264–272
114.
go back to reference Parrott WG (ed) (2001) Emotions in social psychology: essential readings. Key readings in social psychology. Psychology Press, New York Parrott WG (ed) (2001) Emotions in social psychology: essential readings. Key readings in social psychology. Psychology Press, New York
115.
go back to reference Pennington J, Socher R, Manning C (2014) Glove: global vectors for word representation. In: Proceedings of the 2014 conference on empirical methods in natural language processing (EMNLP). Association for Computational Linguistics, pp 1532–1543 Pennington J, Socher R, Manning C (2014) Glove: global vectors for word representation. In: Proceedings of the 2014 conference on empirical methods in natural language processing (EMNLP). Association for Computational Linguistics, pp 1532–1543
116.
go back to reference Perikos I, Hatzilygeroudis I (2013) Recognizing emotion presence in natural language sentences. In: Iliadis L, Papadopoulos H, Jayne C (eds) Engineering applications of neural networks. Springer, Berlin, pp 30–39 Perikos I, Hatzilygeroudis I (2013) Recognizing emotion presence in natural language sentences. In: Iliadis L, Papadopoulos H, Jayne C (eds) Engineering applications of neural networks. Springer, Berlin, pp 30–39
117.
go back to reference Pestian J, Nasrallah H, Matykiewicz P, Bennett A, Leenaars A (2010) Suicide note classification using natural language processing: a content analysis. Biomed Inform Insights 3:19–28 Pestian J, Nasrallah H, Matykiewicz P, Bennett A, Leenaars A (2010) Suicide note classification using natural language processing: a content analysis. Biomed Inform Insights 3:19–28
118.
go back to reference Picard RW (1997) Affective computing. MIT Press, Cambridge Picard RW (1997) Affective computing. MIT Press, Cambridge
119.
go back to reference Plaza-del Arco FM, Jiménez-Zafra SM, Martin M, Ureña-López LA (2018) SINAI at SemEval-2018 task 1: emotion recognition in tweets. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 128–132 Plaza-del Arco FM, Jiménez-Zafra SM, Martin M, Ureña-López LA (2018) SINAI at SemEval-2018 task 1: emotion recognition in tweets. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 128–132
120.
go back to reference Plutchik R (2001) The nature of emotions. Am Sci 89(4):344–350 Plutchik R (2001) The nature of emotions. Am Sci 89(4):344–350
121.
go back to reference Posner J, Russell JA, Peterson BS (2005) The circumplex model of affect: an integrative approach to affective neuroscience, cognitive development, and psychopathology. Dev Psychopathol 17(3):715–734 Posner J, Russell JA, Peterson BS (2005) The circumplex model of affect: an integrative approach to affective neuroscience, cognitive development, and psychopathology. Dev Psychopathol 17(3):715–734
122.
go back to reference Quan C, Ren F (2010) A blog emotion corpus for emotional expression analysis in chinese. Comput Speech Lang 24(4):726–749MathSciNet Quan C, Ren F (2010) A blog emotion corpus for emotional expression analysis in chinese. Comput Speech Lang 24(4):726–749MathSciNet
124.
go back to reference Ragheb W, Azé J, Bringay S, Servajean M (2019) LIRMM-advanse at SemEval-2019 task 3: attentive conversation modeling for emotion detection and classification. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 251–255 Ragheb W, Azé J, Bringay S, Servajean M (2019) LIRMM-advanse at SemEval-2019 task 3: attentive conversation modeling for emotion detection and classification. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 251–255
125.
go back to reference Rathnayaka P, Abeysinghe S, Samarajeewa C, Manchanayake I, Walpola MJ, Nawaratne R, Bandaragoda T, Alahakoon D (2019) Gated recurrent neural network approach for multilabel emotion detection in microblogs. arXiv preprint arXiv:1907.07653 Rathnayaka P, Abeysinghe S, Samarajeewa C, Manchanayake I, Walpola MJ, Nawaratne R, Bandaragoda T, Alahakoon D (2019) Gated recurrent neural network approach for multilabel emotion detection in microblogs. arXiv preprint arXiv:​1907.​07653
126.
go back to reference Řehůřek R, Sojka P (2010) Software framework for topic modelling with large corpora. In: Proceedings of the LREC 2010 workshop on new challenges for nlp frameworks. European Language Resources Association (ELRA), Valletta, pp 45–50 Řehůřek R, Sojka P (2010) Software framework for topic modelling with large corpora. In: Proceedings of the LREC 2010 workshop on new challenges for nlp frameworks. European Language Resources Association (ELRA), Valletta, pp 45–50
127.
go back to reference Riahi N, Safari P (2016) Implicit emotion detection from text with information fusion. J Adv Comput Res 7(2):85–99 Riahi N, Safari P (2016) Implicit emotion detection from text with information fusion. J Adv Comput Res 7(2):85–99
128.
go back to reference Roseman IJ (1991) Appraisal determinants of discrete emotions. Cognit Emotion 5(3):161–200 Roseman IJ (1991) Appraisal determinants of discrete emotions. Cognit Emotion 5(3):161–200
129.
go back to reference Rosenthal S, Farra N, Nakov P (2017) SemEval-2017 task 4: sentiment analysis in twitter. In: Proceedings of the 11th international workshop on semantic evaluation. Association for Computational Linguistics, Vancouver, SemEval’17 Rosenthal S, Farra N, Nakov P (2017) SemEval-2017 task 4: sentiment analysis in twitter. In: Proceedings of the 11th international workshop on semantic evaluation. Association for Computational Linguistics, Vancouver, SemEval’17
130.
go back to reference Rozental A, Fleischer D (2018) Amobee at SemEval-2018 task 1: Gru neural network with a cnn attention mechanism for sentiment classification. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 218–225 Rozental A, Fleischer D (2018) Amobee at SemEval-2018 task 1: Gru neural network with a cnn attention mechanism for sentiment classification. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 218–225
131.
go back to reference Russell JA (1980) A circumplex model of affect. J Personal Soc Psychol 39(6):1161–1178 Russell JA (1980) A circumplex model of affect. J Personal Soc Psychol 39(6):1161–1178
132.
go back to reference Scherer KR (2005) Appraisal theory. In: Dalgleish T, Power MJ (eds) Handbook of cognition and emotion. Wiley, New York, pp 637–663 Scherer KR (2005) Appraisal theory. In: Dalgleish T, Power MJ (eds) Handbook of cognition and emotion. Wiley, New York, pp 637–663
133.
go back to reference Scherer KR, Wallbott HG (1994) Evidence for universality and cultural variation of differential emotion response patterning. J Personal Soc Psychol 66(2):310–328 Scherer KR, Wallbott HG (1994) Evidence for universality and cultural variation of differential emotion response patterning. J Personal Soc Psychol 66(2):310–328
134.
go back to reference Seol YS, Kim DJ, Kim HW (2008) Emotion recognition from text using knowledge-based ann. In: Proceedings of the 32nd international technical conference on circuits/systems, computers and communications (ITC-CSCC 2008), pp 1569–1572 Seol YS, Kim DJ, Kim HW (2008) Emotion recognition from text using knowledge-based ann. In: Proceedings of the 32nd international technical conference on circuits/systems, computers and communications (ITC-CSCC 2008), pp 1569–1572
135.
go back to reference Seyeditabari A, Tabari N, Gholizadeh S, Zadrozny W (2019) Emotion detection in text: focusing on latent representation. arXiv preprint arXiv:1907.09369 Seyeditabari A, Tabari N, Gholizadeh S, Zadrozny W (2019) Emotion detection in text: focusing on latent representation. arXiv preprint arXiv:​1907.​09369
136.
go back to reference Shaheen S, El-Hajj W, Hajj H, Elbassuoni S (2014) Emotion recognition from text based on automatically generated rules. In: 2014 IEEE international conference on data mining workshop (ICDMW), pp 383–392 Shaheen S, El-Hajj W, Hajj H, Elbassuoni S (2014) Emotion recognition from text based on automatically generated rules. In: 2014 IEEE international conference on data mining workshop (ICDMW), pp 383–392
137.
go back to reference Shivhare SN, Garg S, Mishra A (2015) Emotionfinder: detecting emotion from blogs and textual documents. In: International conference on computing, communication & automation (ICCCA), pp 52–57 Shivhare SN, Garg S, Mishra A (2015) Emotionfinder: detecting emotion from blogs and textual documents. In: International conference on computing, communication & automation (ICCCA), pp 52–57
138.
go back to reference Shrivastava K, Kumar S, Jain DK (2019) An effective approach for emotion detection in multimedia text data using sequence based convolutional neural network. Multimed Tools Appl 78:29607–29639 Shrivastava K, Kumar S, Jain DK (2019) An effective approach for emotion detection in multimedia text data using sequence based convolutional neural network. Multimed Tools Appl 78:29607–29639
139.
go back to reference Sidorov G, Miranda-Jiménez S, Viveros-Jiménez F, Gelbukh A, Castro-Sánchez N, Velásquez F, Díaz-Rangel I, Suárez-Guerra S, Treviño A, Gordon J (2013) Empirical study of machine learning based approach for opinion mining in tweets. In: Batyrshin I, González Mendoza M (eds) Advances in artificial intelligence. Springer, Berlin, pp 1–14 Sidorov G, Miranda-Jiménez S, Viveros-Jiménez F, Gelbukh A, Castro-Sánchez N, Velásquez F, Díaz-Rangel I, Suárez-Guerra S, Treviño A, Gordon J (2013) Empirical study of machine learning based approach for opinion mining in tweets. In: Batyrshin I, González Mendoza M (eds) Advances in artificial intelligence. Springer, Berlin, pp 1–14
140.
go back to reference Singh L, Singh S, Aggarwal N (2019) Two-stage text feature selection method for human emotion recognition. In: Krishna CR, Dutta M, Kumar R (eds) Proceedings of 2nd international conference on communication, computing and networking, lecture notes in networks and systems, vol 46. Springer, Singapore, pp 531–538 Singh L, Singh S, Aggarwal N (2019) Two-stage text feature selection method for human emotion recognition. In: Krishna CR, Dutta M, Kumar R (eds) Proceedings of 2nd international conference on communication, computing and networking, lecture notes in networks and systems, vol 46. Springer, Singapore, pp 531–538
141.
go back to reference Smith CA, Ellsworth PC (1985) Patterns of cognitive appraisal in emotion. J Pers Soc Psychol 48(4):813–838 Smith CA, Ellsworth PC (1985) Patterns of cognitive appraisal in emotion. J Pers Soc Psychol 48(4):813–838
142.
go back to reference Smith CA, Lazarus RS (1993) Appraisal components, core relational themes, and the emotions. Cognit Emotion 7(3–4):233–269 Smith CA, Lazarus RS (1993) Appraisal components, core relational themes, and the emotions. Cognit Emotion 7(3–4):233–269
143.
go back to reference Soliman AB, Eissa K, El-Beltagy SR (2017) Aravec: a set of Arabic word embedding models for use in Arabic NLP. Procedia Comput Sci 117:256–265 Soliman AB, Eissa K, El-Beltagy SR (2017) Aravec: a set of Arabic word embedding models for use in Arabic NLP. Procedia Comput Sci 117:256–265
144.
go back to reference Speer R, Chin J, Havasi C (2017) Conceptnet 5.5: an open multilingual graph of general knowledge. In: Proceedings of the thirty-first AAAI conference on artificial intelligence, AAAI’17. AAAI Press, pp 4444–4451 Speer R, Chin J, Havasi C (2017) Conceptnet 5.5: an open multilingual graph of general knowledge. In: Proceedings of the thirty-first AAAI conference on artificial intelligence, AAAI’17. AAAI Press, pp 4444–4451
145.
go back to reference Staiano J, Guerini M (2014) Depechemood: a lexicon for emotion analysis from crowd-annotated news. In: Proceedings of the 52nd annual meeting of the association for computational linguistics (volume 2: short papers), pp 427–433 Staiano J, Guerini M (2014) Depechemood: a lexicon for emotion analysis from crowd-annotated news. In: Proceedings of the 52nd annual meeting of the association for computational linguistics (volume 2: short papers), pp 427–433
146.
go back to reference Steunebrink BR, Dastani M, Meyer JJC (2009) The OCC model revisitedt. In: Reichardt D (ed) Proceedings of the 4th workshop on emotion and computing—current research and future impact, Paderborn, pp 40–47 Steunebrink BR, Dastani M, Meyer JJC (2009) The OCC model revisitedt. In: Reichardt D (ed) Proceedings of the 4th workshop on emotion and computing—current research and future impact, Paderborn, pp 40–47
147.
go back to reference Stone PJ, Dunphy DC, Smith MS, Ogilvie DM (1966) The general inquirer: a computer approach to content analysis. MIT Press, Cambridge Stone PJ, Dunphy DC, Smith MS, Ogilvie DM (1966) The general inquirer: a computer approach to content analysis. MIT Press, Cambridge
148.
go back to reference Strapparava C, Mihalcea R (2007) Semeval-2007 task 14: affective text. In: Proceedings of the 4th international workshop on semantic evaluations, SemEval’07. Association for Computational Linguistics. Stroudsburg, pp 70–74 Strapparava C, Mihalcea R (2007) Semeval-2007 task 14: affective text. In: Proceedings of the 4th international workshop on semantic evaluations, SemEval’07. Association for Computational Linguistics. Stroudsburg, pp 70–74
149.
go back to reference Strapparava C, Valitutti A (2004) Wordnet-affect: an affective extension of wordnet. In: Proceedings of the 4th international conference on language resources and evaluation (LREC-2004), pp 1083–1086 Strapparava C, Valitutti A (2004) Wordnet-affect: an affective extension of wordnet. In: Proceedings of the 4th international conference on language resources and evaluation (LREC-2004), pp 1083–1086
150.
go back to reference Tang D, Wei F, Yang N, Zhou M, Liu T, Qin B (2014) Learning sentiment-specific word embedding for twitter sentiment classification. In: Proceedings of the 52nd annual meeting of the association for computational linguistics, vol 1. Association for Computational Linguistics, Baltimore, pp 1555–1565 Tang D, Wei F, Yang N, Zhou M, Liu T, Qin B (2014) Learning sentiment-specific word embedding for twitter sentiment classification. In: Proceedings of the 52nd annual meeting of the association for computational linguistics, vol 1. Association for Computational Linguistics, Baltimore, pp 1555–1565
151.
go back to reference Tao J (2004) Context based emotion detection from text input. In: Proceedings of the 8th international conference on spoken language processing (ICSLP), pp 1337–1340 Tao J (2004) Context based emotion detection from text input. In: Proceedings of the 8th international conference on spoken language processing (ICSLP), pp 1337–1340
152.
go back to reference Thelwall M, Buckley K, Paltoglou G (2012) Sentiment strength detection for the social web. J Assoc Inf Sci Technol (JASIST) 63(1):163–173 Thelwall M, Buckley K, Paltoglou G (2012) Sentiment strength detection for the social web. J Assoc Inf Sci Technol (JASIST) 63(1):163–173
153.
go back to reference Thomas B, Vinod P, Dhanya KA (2014) Multiclass emotion extraction from sentences. Int J Sci Eng Res (IJSER) 5(2):12–15 Thomas B, Vinod P, Dhanya KA (2014) Multiclass emotion extraction from sentences. Int J Sci Eng Res (IJSER) 5(2):12–15
154.
go back to reference Tomkins SS (1991) Affect imagery consciousness: volume III: the negative affects: anger and fear. Springer, Berlin Tomkins SS (1991) Affect imagery consciousness: volume III: the negative affects: anger and fear. Springer, Berlin
155.
go back to reference Udochukwu O, He Y (2015) A rule-based approach to implicit emotion detection in text. In: Biemann C, Handschuh S, Freitas A, Meziane F, Métais E (eds) Natural language processing and information systems. Lecture notes in computer science. Springer, Cham, pp 197–203 Udochukwu O, He Y (2015) A rule-based approach to implicit emotion detection in text. In: Biemann C, Handschuh S, Freitas A, Meziane F, Métais E (eds) Natural language processing and information systems. Lecture notes in computer science. Springer, Cham, pp 197–203
156.
go back to reference van der Goot R, van Noord G (2017) Monoise: modeling noise using a modular normalization system. Comput Linguist Neth J 7:129–144 van der Goot R, van Noord G (2017) Monoise: modeling noise using a modular normalization system. Comput Linguist Neth J 7:129–144
157.
go back to reference Vaswani A, Shazeer N, Parmar N, Uszkoreit J, Jones L, Gomez AN, Kaiser L, Polosukhin I (2017) Attention is all you need. In: Proceedings of the 31st international conference on neural information processing systems, NIPS’17. Curran Associates Inc, New York, pp 6000–6010 Vaswani A, Shazeer N, Parmar N, Uszkoreit J, Jones L, Gomez AN, Kaiser L, Polosukhin I (2017) Attention is all you need. In: Proceedings of the 31st international conference on neural information processing systems, NIPS’17. Curran Associates Inc, New York, pp 6000–6010
158.
go back to reference Wang M, Liu M, Feng S, Wang D, Zhang Y (2014) A novel calibrated label ranking based method for multiple emotions detection in chinese microblogs. In: Zong C, Nie JY, Zhao D, Feng Y (eds) Natural language processing and chinese computing. Springer, Berlin, pp 238–250 Wang M, Liu M, Feng S, Wang D, Zhang Y (2014) A novel calibrated label ranking based method for multiple emotions detection in chinese microblogs. In: Zong C, Nie JY, Zhao D, Feng Y (eds) Natural language processing and chinese computing. Springer, Berlin, pp 238–250
159.
go back to reference Wang Y, Feng S, Wang D, Yu G, Zhang Y (2016) Multi-label chinese microblog emotion classification via convolutional neural network. In: Li F, Shim K, Zheng K, Liu G (eds) Web technologies and applications: APWeb 2016, vol 9931. Lecture notes in computer science. Springer, Cham, pp 567–580 Wang Y, Feng S, Wang D, Yu G, Zhang Y (2016) Multi-label chinese microblog emotion classification via convolutional neural network. In: Li F, Shim K, Zheng K, Liu G (eds) Web technologies and applications: APWeb 2016, vol 9931. Lecture notes in computer science. Springer, Cham, pp 567–580
160.
go back to reference Warriner AB, Kuperman V, Brysbaert M (2013) Norms of valence, arousal, and dominance for 13,915 english lemmas. Behav Res Methods 45(4):1191–1207 Warriner AB, Kuperman V, Brysbaert M (2013) Norms of valence, arousal, and dominance for 13,915 english lemmas. Behav Res Methods 45(4):1191–1207
161.
go back to reference Watson D, Tellegen A (1985) Toward a consensual structure of mood. Psychol Bull 98(2):219–235 Watson D, Tellegen A (1985) Toward a consensual structure of mood. Psychol Bull 98(2):219–235
162.
go back to reference Watson D, Tellegen A (1999) Issues in dimensional structure of affect—effects of descriptors, measurement error, and response formats: comment on russell and carroll (1999). Psychol Bull 125:601–610 Watson D, Tellegen A (1999) Issues in dimensional structure of affect—effects of descriptors, measurement error, and response formats: comment on russell and carroll (1999). Psychol Bull 125:601–610
163.
go back to reference Weiss HM, Cropanzano R (1996) Affective events theory: a theoretical discussion of the structure, cause and consequences of affective experiences at work. In: Staw BM, Cummings LL (eds) Research in organizational behavior: an annual series of analytical essays and critical reviews, vol 18. JAI Press Inc, Stamford, pp 1–74 Weiss HM, Cropanzano R (1996) Affective events theory: a theoretical discussion of the structure, cause and consequences of affective experiences at work. In: Staw BM, Cummings LL (eds) Research in organizational behavior: an annual series of analytical essays and critical reviews, vol 18. JAI Press Inc, Stamford, pp 1–74
164.
go back to reference Wilson T, Wiebe J, Hoffmann P (2005) Recognizing contextual polarity in phrase-level sentiment analysis. In: Proceedings of the conference on human language technology and empirical methods in natural language processing, HLT’05. Association for Computational Linguistics, Stroudsburg, pp 347–354 Wilson T, Wiebe J, Hoffmann P (2005) Recognizing contextual polarity in phrase-level sentiment analysis. In: Proceedings of the conference on human language technology and empirical methods in natural language processing, HLT’05. Association for Computational Linguistics, Stroudsburg, pp 347–354
165.
go back to reference Wundt WM (1904) Principles of physiological psychology. Swan Sonnenschein & Co., London Wundt WM (1904) Principles of physiological psychology. Swan Sonnenschein & Co., London
166.
go back to reference Xiao J (2019) Figure eight at SemEval-2019 task 3: ensemble of transfer learning methods for contextual emotion detection. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 220–224 Xiao J (2019) Figure eight at SemEval-2019 task 3: ensemble of transfer learning methods for contextual emotion detection. In: May J, Shutova E, Herbelot A, Zhu XZ, Apidianaki M, Mohammad SM (eds) Proceedings of the 13th international workshop on semantic evaluation. Association for Computational Linguistics, Minneapolis, pp 220–224
167.
go back to reference Xu H, Yang W, Wang J (2015) Hierarchical emotion classification and emotion component analysis on chinese micro-blog posts. Expert Syst Appl 42(22):8745–8752 Xu H, Yang W, Wang J (2015) Hierarchical emotion classification and emotion component analysis on chinese micro-blog posts. Expert Syst Appl 42(22):8745–8752
168.
go back to reference Xu H, Lan M, Wu Y (2018) ECNU at SemEval-2018 task 1: emotion intensity prediction using effective features and machine learning models. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 231–235 Xu H, Lan M, Wu Y (2018) ECNU at SemEval-2018 task 1: emotion intensity prediction using effective features and machine learning models. In: Proceedings of the 12th international workshop on semantic evaluation. Association for Computational Linguistics, pp 231–235
169.
go back to reference Yan JLS, Turtle HR (2016) Exploring fine-grained emotion detection in tweets. In: Proceedings of the North American chapter of the association for computational linguistics: human language technologies (NAACL-HLT). San Diego, pp 73–80 Yan JLS, Turtle HR (2016) Exploring fine-grained emotion detection in tweets. In: Proceedings of the North American chapter of the association for computational linguistics: human language technologies (NAACL-HLT). San Diego, pp 73–80
170.
go back to reference Yang Z, Yang D, Dyer C, He X, Smola A, Hovy E (2016) Hierarchical attention networks for document classification. In: Proceedings of the 2016 conference of the North American chapter of the association for computational linguistics: human language technologies. Association for Computational Linguistics, San Diego, pp 1480–1489 Yang Z, Yang D, Dyer C, He X, Smola A, Hovy E (2016) Hierarchical attention networks for document classification. In: Proceedings of the 2016 conference of the North American chapter of the association for computational linguistics: human language technologies. Association for Computational Linguistics, San Diego, pp 1480–1489
171.
go back to reference Yenala H, Jhanwar A, Chinnakotla MK, Goyal J (2018) Deep learning for detecting inappropriate content in text. Int J Data Sci Anal 6(4):273–286 Yenala H, Jhanwar A, Chinnakotla MK, Goyal J (2018) Deep learning for detecting inappropriate content in text. Int J Data Sci Anal 6(4):273–286
172.
go back to reference Yu C, Aoki PM, Woodruff A (2004) Detecting user engagement in everyday conversations. In: Proceedings of 8th international conference on spoken language processing (ICSLP), pp 1329–1332 Yu C, Aoki PM, Woodruff A (2004) Detecting user engagement in everyday conversations. In: Proceedings of 8th international conference on spoken language processing (ICSLP), pp 1329–1332
173.
go back to reference Yuan Z, Purver M (2015) Predicting emotion labels for chinese microblog texts. In: Gaber MM, Cocea M, Wiratunga N, Goker A (eds) Advances in social media analysis. Springer, Cham, pp 129–149 Yuan Z, Purver M (2015) Predicting emotion labels for chinese microblog texts. In: Gaber MM, Cocea M, Wiratunga N, Goker A (eds) Advances in social media analysis. Springer, Cham, pp 129–149
174.
go back to reference Zhang F, Xu H, Wang J, Sun X, Deng J (2016) Grasp the implicit features: hierarchical emotion classification based on topic model and SVM. In: 2016 International joint conference on neural networks (IJCNN), pp 3592–3599 Zhang F, Xu H, Wang J, Sun X, Deng J (2016) Grasp the implicit features: hierarchical emotion classification based on topic model and SVM. In: 2016 International joint conference on neural networks (IJCNN), pp 3592–3599
Metadata
Title
A survey of state-of-the-art approaches for emotion recognition in text
Authors
Nourah Alswaidan
Mohamed El Bachir Menai
Publication date
18-03-2020
Publisher
Springer London
Published in
Knowledge and Information Systems / Issue 8/2020
Print ISSN: 0219-1377
Electronic ISSN: 0219-3116
DOI
https://doi.org/10.1007/s10115-020-01449-0

Other articles of this Issue 8/2020

Knowledge and Information Systems 8/2020 Go to the issue

Premium Partner