Skip to main content
Top
Published in: Arabian Journal for Science and Engineering 4/2021

06-01-2021 | Research Article-Computer Engineering and Computer Science

Deep Learning for Discussion-Based Cross-Domain Performance Prediction of MOOC Learners Grouped by Language on FutureLearn

Authors: Ismail Duru, Ayse Saliha Sunar, Su White, Banu Diri

Published in: Arabian Journal for Science and Engineering | Issue 4/2021

Log in

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

search-config
loading …

Abstract

Analysing learners’ behaviours in MOOCs has been used to identify predictive features associated with positive outcomes in engagement and learning success. Early methods predominantly analysed numerical features of behaviours such as the page views, video views, and assessment grades. Analysing extracted numeric features using baseline machine learning algorithms performed well to predict the learners’ future performance in MOOCs. We propose categorising learners by likely English language proficiency and extending the range of data to include the content of comment texts. We compare results to a model trained with a combined set of extracted features. Not all platforms provide this rich variety of data. We analysed a series of a FutureLearn language focused MOOCs. Our data were from discussions embedded into each lesson’s content. Analysing whether we gained any additional insights, over 420,000 comments were used to train the algorithm. We created a method for identifying one’s possible first language from their country. We found that using comments alone is a weaker predictive approach than using a combination including extracted features from learners’ activities. Our study contributes to research on generalisability of learning algorithms. We replicated the method across different MOOCs—the performance varies on the model though it always remained over 50%. One of the deep learning architecture, Bidirectional LSTM, trained with discussions on the language learning 73% successfully predicted learners’ performance on a different MOOC.

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 "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!

Literature
1.
go back to reference Khalil, M., Taraghi, B., Ebner, M.: Engaging learning analytics in MOOCs: the good, the bad, and the ugly. In: International Conference on Education and New Developments 2016 (2016) Khalil, M., Taraghi, B., Ebner, M.: Engaging learning analytics in MOOCs: the good, the bad, and the ugly. In: International Conference on Education and New Developments 2016 (2016)
2.
go back to reference Muslim, A.; Chatti, M.A.; Guesmi, M.: Open learning analytics: a systematic literature review and future perspectives. In: Artificial Intelligence Supported Educational Technologies, pp. 3–29. Springer (2020) Muslim, A.; Chatti, M.A.; Guesmi, M.: Open learning analytics: a systematic literature review and future perspectives. In: Artificial Intelligence Supported Educational Technologies, pp. 3–29. Springer (2020)
3.
go back to reference Yu, C.H.; Wu, J.; Liu, A.C.: Predicting learning outcomes with MOOC clickstreams. Educ. Sci. 9(2), 104 (2019)CrossRef Yu, C.H.; Wu, J.; Liu, A.C.: Predicting learning outcomes with MOOC clickstreams. Educ. Sci. 9(2), 104 (2019)CrossRef
4.
go back to reference Kőrösi, G.; Farkas, R.: MOOC performance prediction by deep learning from raw clickstream data. In: International Conference on Advances in Computing and Data Sciences, pp. 474–485. Springer (2020) Kőrösi, G.; Farkas, R.: MOOC performance prediction by deep learning from raw clickstream data. In: International Conference on Advances in Computing and Data Sciences, pp. 474–485. Springer (2020)
5.
go back to reference Lemay, D.J.; Doleck, T.: Grade prediction of weekly assignments in MOOCs: mining video-viewing behavior. Educ. Inf. Technol. 25(2), 1333–1342 (2020)CrossRef Lemay, D.J.; Doleck, T.: Grade prediction of weekly assignments in MOOCs: mining video-viewing behavior. Educ. Inf. Technol. 25(2), 1333–1342 (2020)CrossRef
6.
go back to reference Sunar, A.S.; Abbasi, R.A.; Davis, H.C.; White, S.; Aljohani, N.R.: Modelling MOOC learners’ social behaviours. Comput. Hum. Behav. (2018) Sunar, A.S.; Abbasi, R.A.; Davis, H.C.; White, S.; Aljohani, N.R.: Modelling MOOC learners’ social behaviours. Comput. Hum. Behav. (2018)
7.
go back to reference Wang, W.; Guo, L.; He, L.; Wu, Y.J.: Effects of social-interactive engagement on the dropout ratio in online learning: insights from MOOC. Behav. Inf. Technol. 38(6), 621–636 (2019)CrossRef Wang, W.; Guo, L.; He, L.; Wu, Y.J.: Effects of social-interactive engagement on the dropout ratio in online learning: insights from MOOC. Behav. Inf. Technol. 38(6), 621–636 (2019)CrossRef
8.
go back to reference Cobos, R.; Olmos, L.: A learning analytics tool for predictive modeling of dropout and certificate acquisition on MOOCs for professional learning. In: 2018 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM), pp. 1533–1537. IEEE (2018) Cobos, R.; Olmos, L.: A learning analytics tool for predictive modeling of dropout and certificate acquisition on MOOCs for professional learning. In: 2018 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM), pp. 1533–1537. IEEE (2018)
9.
go back to reference Moreno-Marcos, P.M.; Muñoz-Merino, P.J.; Maldonado-Mahauad, J.; Pérez-Sanagustín, M.; Alario-Hoyos, C.; Kloos, C.D.: Temporal analysis for dropout prediction using self-regulated learning strategies in self-paced MOOCs. Comput. Educ. 145, 103728 (2020)CrossRef Moreno-Marcos, P.M.; Muñoz-Merino, P.J.; Maldonado-Mahauad, J.; Pérez-Sanagustín, M.; Alario-Hoyos, C.; Kloos, C.D.: Temporal analysis for dropout prediction using self-regulated learning strategies in self-paced MOOCs. Comput. Educ. 145, 103728 (2020)CrossRef
10.
go back to reference Chen, C.; Sonnert, G.; Sadler, P.M.; Sasselov, D.D.; Fredericks, C.; Malan, D.J.: Going over the cliff: MOOC dropout behavior at chapter transition. Distance Educ. 41(1), 6–25 (2020)CrossRef Chen, C.; Sonnert, G.; Sadler, P.M.; Sasselov, D.D.; Fredericks, C.; Malan, D.J.: Going over the cliff: MOOC dropout behavior at chapter transition. Distance Educ. 41(1), 6–25 (2020)CrossRef
11.
go back to reference Duru, I.; Sunar, A.S.; White, S.; Diri, B.; Dogan, G.: A case study on English as a second language speakers for sustainable MOOC study. Sustainability 11(10), 2808 (2019)CrossRef Duru, I.; Sunar, A.S.; White, S.; Diri, B.; Dogan, G.: A case study on English as a second language speakers for sustainable MOOC study. Sustainability 11(10), 2808 (2019)CrossRef
12.
go back to reference Schmidhuber, J.: Deep learning in neural networks: an overview. Neural Netw. 61, 85–117 (2015)CrossRef Schmidhuber, J.: Deep learning in neural networks: an overview. Neural Netw. 61, 85–117 (2015)CrossRef
13.
go back to reference Xing, W.; Du, D.: Dropout prediction in MOOCs: using deep learning for personalized intervention. J. Educ. Comput. Res. 57(3), 547–570 (2019)CrossRef Xing, W.; Du, D.: Dropout prediction in MOOCs: using deep learning for personalized intervention. J. Educ. Comput. Res. 57(3), 547–570 (2019)CrossRef
14.
go back to reference Aljohani, T.; Cristea, A.I.: Predicting learners’ demographics characteristics: deep learning ensemble architecture for learners’ characteristics prediction in MOOCs. In: Proceedings of the 2019 4th International Conference on Information and Education Innovations, pp. 23–27. ACM (2019) Aljohani, T.; Cristea, A.I.: Predicting learners’ demographics characteristics: deep learning ensemble architecture for learners’ characteristics prediction in MOOCs. In: Proceedings of the 2019 4th International Conference on Information and Education Innovations, pp. 23–27. ACM (2019)
15.
go back to reference Goodfellow, I.; Bengio, Y.; Courville, A.; Bengio, Y.: Deep Learning, vol. 1. MIT Press, Cambridge (2016)MATH Goodfellow, I.; Bengio, Y.; Courville, A.; Bengio, Y.: Deep Learning, vol. 1. MIT Press, Cambridge (2016)MATH
16.
go back to reference Ferguson, R.; Clow, D.; Beale, R.; Cooper, A.J.; Morris, N.; Bayne, S.; Woodgate, A.: Moving through MOOCs: pedagogy, learning design and patterns of engagement. In: Design for Teaching and Learning in a Networked World, pp. 70–84. Springer (2015) Ferguson, R.; Clow, D.; Beale, R.; Cooper, A.J.; Morris, N.; Bayne, S.; Woodgate, A.: Moving through MOOCs: pedagogy, learning design and patterns of engagement. In: Design for Teaching and Learning in a Networked World, pp. 70–84. Springer (2015)
17.
go back to reference Tubman, P.; Oztok, M.; Benachour, P.: Being social or social learning: a sociocultural analysis of the Futurelearn MOOC platform. In: 2016 IEEE 16th International Conference on Advanced Learning Technologies (ICALT), pp. 1–2. IEEE (2016) Tubman, P.; Oztok, M.; Benachour, P.: Being social or social learning: a sociocultural analysis of the Futurelearn MOOC platform. In: 2016 IEEE 16th International Conference on Advanced Learning Technologies (ICALT), pp. 1–2. IEEE (2016)
18.
go back to reference Shi, L.; Cristea, A.I.; Toda, A.M.; Oliveira, W.: Social engagement versus learning engagement an exploratory study of Futurelearn learners. In: 2019 IEEE 14th International Conference on Intelligent Systems and Knowledge Engineering (ISKE), pp. 476–483. IEEE (2019) Shi, L.; Cristea, A.I.; Toda, A.M.; Oliveira, W.: Social engagement versus learning engagement an exploratory study of Futurelearn learners. In: 2019 IEEE 14th International Conference on Intelligent Systems and Knowledge Engineering (ISKE), pp. 476–483. IEEE (2019)
19.
go back to reference O’Riordan, T.; Millard, D.E.; Schulz, J.: Is critical thinking happening? Testing content analysis schemes applied to MOOC discussion forums. Comput. Appl. Eng. Educ. (2020) O’Riordan, T.; Millard, D.E.; Schulz, J.: Is critical thinking happening? Testing content analysis schemes applied to MOOC discussion forums. Comput. Appl. Eng. Educ. (2020)
20.
go back to reference Pennington, J.; Socher, R.; Manning, C.D.: Glove: global vectors for word representation. In: Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP), pp. 1532–1543 (2014) Pennington, J.; Socher, R.; Manning, C.D.: Glove: global vectors for word representation. In: Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP), pp. 1532–1543 (2014)
21.
go back to reference Uchidiuno, J.; Ogan, A.; Yarzebinski, E.; Hammer, J.: Understanding ESL students’ motivations to increase MOOC accessibility. In: Proceedings of the Third (2016) ACM Conference on Learning@ Scale, pp. 169–172 (2016) Uchidiuno, J.; Ogan, A.; Yarzebinski, E.; Hammer, J.: Understanding ESL students’ motivations to increase MOOC accessibility. In: Proceedings of the Third (2016) ACM Conference on Learning@ Scale, pp. 169–172 (2016)
22.
go back to reference Reilly, E.D.; Williams, K.M.; Stafford, R.E.; Corliss, S.B.; Walkow, J.C.; Kidwell, D.K.: Global times call for global measures: investigating automated essay scoring in linguistically-diverse MOOCs. Online Learn. 20(2), 217–229 (2016)CrossRef Reilly, E.D.; Williams, K.M.; Stafford, R.E.; Corliss, S.B.; Walkow, J.C.; Kidwell, D.K.: Global times call for global measures: investigating automated essay scoring in linguistically-diverse MOOCs. Online Learn. 20(2), 217–229 (2016)CrossRef
23.
go back to reference Dalipi, F.; Imran, A.S.; Kastrati, Z.: MOOC dropout prediction using machine learning techniques: Review and research challenges. In: 2018 IEEE Global Engineering Education Conference (EDUCON), pp. 1007–1014. IEEE (2018) Dalipi, F.; Imran, A.S.; Kastrati, Z.: MOOC dropout prediction using machine learning techniques: Review and research challenges. In: 2018 IEEE Global Engineering Education Conference (EDUCON), pp. 1007–1014. IEEE (2018)
25.
go back to reference Hernández-Blanco, A.; Herrera-Flores, B.; Tomás, D.; Navarro-Colorado, B.: A systematic review of deep learning approaches to educational data mining. Complexity 2019 (2019) Hernández-Blanco, A.; Herrera-Flores, B.; Tomás, D.; Navarro-Colorado, B.: A systematic review of deep learning approaches to educational data mining. Complexity 2019 (2019)
26.
go back to reference Wang, W.; Yu, H.; Miao, C.: Deep model for dropout prediction in MOOCs. In: Proceedings of the 2nd International Conference on Crowd Science and Engineering, pp. 26–32. ACM (2017) Wang, W.; Yu, H.; Miao, C.: Deep model for dropout prediction in MOOCs. In: Proceedings of the 2nd International Conference on Crowd Science and Engineering, pp. 26–32. ACM (2017)
27.
go back to reference Sun, D.; Mao, Y.; Du, J.; Xu, P.; Zheng, Q.; Sun, H.: Deep learning for dropout prediction in MOOCs. In: 2019 Eighth International Conference on Educational Innovation through Technology (EITT), pp. 87–90. IEEE (2019) Sun, D.; Mao, Y.; Du, J.; Xu, P.; Zheng, Q.; Sun, H.: Deep learning for dropout prediction in MOOCs. In: 2019 Eighth International Conference on Educational Innovation through Technology (EITT), pp. 87–90. IEEE (2019)
28.
go back to reference Xiong, F.; Zou, K.; Liu, Z.; Wang, H.: Predicting learning status in MOOCs using LSTM. In: Proceedings of the ACM Turing Celebration Conference-China, p. 74. ACM (2019) Xiong, F.; Zou, K.; Liu, Z.; Wang, H.: Predicting learning status in MOOCs using LSTM. In: Proceedings of the ACM Turing Celebration Conference-China, p. 74. ACM (2019)
29.
go back to reference Tang, S.; Pardos, Z.A.: Personalized behavior recommendation: a case study of applicability to 13 courses on edX. In: Adjunct Publication of the 25th Conference on User Modeling, Adaptation and Personalization, pp. 165–170. ACM (2017) Tang, S.; Pardos, Z.A.: Personalized behavior recommendation: a case study of applicability to 13 courses on edX. In: Adjunct Publication of the 25th Conference on User Modeling, Adaptation and Personalization, pp. 165–170. ACM (2017)
30.
go back to reference Yang, T.Y.; Brinton, C.G.; Joe-Wong, C.; Chiang, M.: Behavior-based grade prediction for MOOCs via time series neural networks. IEEE J. Sel. Top. Signal Process. 11(5), 716–728 (2017) Yang, T.Y.; Brinton, C.G.; Joe-Wong, C.; Chiang, M.: Behavior-based grade prediction for MOOCs via time series neural networks. IEEE J. Sel. Top. Signal Process. 11(5), 716–728 (2017)
31.
go back to reference Almatrafi, O.; Johri, A.; Rangwala, H.: Needle in a haystack: identifying learner posts that require urgent response in MOOC discussion forums. Comput. Educ. 118, 1–9 (2018)CrossRef Almatrafi, O.; Johri, A.; Rangwala, H.: Needle in a haystack: identifying learner posts that require urgent response in MOOC discussion forums. Comput. Educ. 118, 1–9 (2018)CrossRef
32.
go back to reference Chaplot, D.S.; Rhim, E.; Kim, J.: Predicting student attrition in MOOCs using sentiment analysis and neural networks. AIED Workshops 53, 54–57 (2015) Chaplot, D.S.; Rhim, E.; Kim, J.: Predicting student attrition in MOOCs using sentiment analysis and neural networks. AIED Workshops 53, 54–57 (2015)
33.
go back to reference Xing, W.; Tang, H.; Pei, B.: Beyond positive and negative emotions: looking into the role of achievement emotions in discussion forums of MOOCs. Internet High. Educ. 43, 100690 (2019)CrossRef Xing, W.; Tang, H.; Pei, B.: Beyond positive and negative emotions: looking into the role of achievement emotions in discussion forums of MOOCs. Internet High. Educ. 43, 100690 (2019)CrossRef
34.
go back to reference Chen, J.; Feng, J.; Sun, X.; Liu, Y.: Co-training semi-supervised deep learning for sentiment classification of MOOC forum posts. Symmetry 12(1), 8 (2020)CrossRef Chen, J.; Feng, J.; Sun, X.; Liu, Y.: Co-training semi-supervised deep learning for sentiment classification of MOOC forum posts. Symmetry 12(1), 8 (2020)CrossRef
35.
go back to reference Wei, X.; Lin, H.; Yang, L.; Yu, Y.: A convolution-LSTM-based deep neural network for cross-domain MOOC forum post classification. Information 8(3), 92 (2017)CrossRef Wei, X.; Lin, H.; Yang, L.; Yu, Y.: A convolution-LSTM-based deep neural network for cross-domain MOOC forum post classification. Information 8(3), 92 (2017)CrossRef
36.
go back to reference Sun, X.; Guo, S.; Gao, Y.; Zhang, J.; Xiao, X.; Feng, J.: Identification of urgent posts in MOOC discussion forums using an improved RCNN. In: 2019 IEEE World Conference on Engineering Education (EDUNINE), pp. 1–5. IEEE (2019) Sun, X.; Guo, S.; Gao, Y.; Zhang, J.; Xiao, X.; Feng, J.: Identification of urgent posts in MOOC discussion forums using an improved RCNN. In: 2019 IEEE World Conference on Engineering Education (EDUNINE), pp. 1–5. IEEE (2019)
37.
go back to reference Harrak, F.; Luengo, V.; Bouchet, F.; Bachelet, R.: Towards improving students’ forum posts categorization in MOOCs and impact on performance prediction. In: Proceedings of the Sixth (2019) ACM Conference on Learning@ Scale, pp. 1–4 (2019) Harrak, F.; Luengo, V.; Bouchet, F.; Bachelet, R.: Towards improving students’ forum posts categorization in MOOCs and impact on performance prediction. In: Proceedings of the Sixth (2019) ACM Conference on Learning@ Scale, pp. 1–4 (2019)
38.
go back to reference Chanaa, A.; El Faddouli, N.E.: BERT and prerequisite based ontology for predicting learner’s confusion in MOOCs discussion forums. In: International Conference on Artificial Intelligence in Education, pp. 54–58. Springer (2020) Chanaa, A.; El Faddouli, N.E.: BERT and prerequisite based ontology for predicting learner’s confusion in MOOCs discussion forums. In: International Conference on Artificial Intelligence in Education, pp. 54–58. Springer (2020)
39.
go back to reference Doleck, T.; Lemay, D.J.; Basnet, R.B.; Bazelais, P.: Predictive analytics in education: a comparison of deep learning frameworks. Educ. Inf. Technol. 25(3), 1951–1963 (2020)CrossRef Doleck, T.; Lemay, D.J.; Basnet, R.B.; Bazelais, P.: Predictive analytics in education: a comparison of deep learning frameworks. Educ. Inf. Technol. 25(3), 1951–1963 (2020)CrossRef
40.
go back to reference Thiyagarajan, K.: Higher education and practice of English in India. Lang. India 8, 8 (2008) Thiyagarajan, K.: Higher education and practice of English in India. Lang. India 8, 8 (2008)
41.
go back to reference Bird, S.; Klein, E.: Regular Expressions for Natural Language Processing. University of Pennsylvania, Philadelphia (2006) Bird, S.; Klein, E.: Regular Expressions for Natural Language Processing. University of Pennsylvania, Philadelphia (2006)
42.
go back to reference Friedl, J.E.: Mastering Regular Expressions. O’Reilly Media, Inc., Newton (2002)MATH Friedl, J.E.: Mastering Regular Expressions. O’Reilly Media, Inc., Newton (2002)MATH
43.
go back to reference Acosta, E.S.; Otero, J.J.E.: Automated assessment of free text questions for MOOC using regular expressions. Inf. Resour. Manag. J. IRMJ 27(2), 1–13 (2014)CrossRef Acosta, E.S.; Otero, J.J.E.: Automated assessment of free text questions for MOOC using regular expressions. Inf. Resour. Manag. J. IRMJ 27(2), 1–13 (2014)CrossRef
44.
go back to reference Shukla, H.; Kakkar, M.: Keyword extraction from educational video transcripts using NLP techniques. In: 2016 6th International Conference-Cloud System and Big Data Engineering (Confluence), pp. 105–108. IEEE (2016) Shukla, H.; Kakkar, M.: Keyword extraction from educational video transcripts using NLP techniques. In: 2016 6th International Conference-Cloud System and Big Data Engineering (Confluence), pp. 105–108. IEEE (2016)
45.
go back to reference An, Y.H.; Chandresekaran, M.K.; Kan, M.Y.; Fu, Y.: The MUIR Framework: Cross-linking MOOC resources to enhance discussion forums. In: International Conference on Theory and Practice of Digital Libraries, pp. 208–219. Springer (2018) An, Y.H.; Chandresekaran, M.K.; Kan, M.Y.; Fu, Y.: The MUIR Framework: Cross-linking MOOC resources to enhance discussion forums. In: International Conference on Theory and Practice of Digital Libraries, pp. 208–219. Springer (2018)
46.
go back to reference Rani, S.; Kumar, P.: Deep learning based sentiment analysis using convolution neural network. Arab. J. Sci. Eng. 44(4), 3305–3314 (2019)CrossRef Rani, S.; Kumar, P.: Deep learning based sentiment analysis using convolution neural network. Arab. J. Sci. Eng. 44(4), 3305–3314 (2019)CrossRef
47.
go back to reference Mahmoud, A.; Zrigui, M.: Sentence embedding and convolutional neural network for semantic textual similarity detection in Arabic language. Arab. J. Sci. Eng. 44(11), 9263–9274 (2019)CrossRef Mahmoud, A.; Zrigui, M.: Sentence embedding and convolutional neural network for semantic textual similarity detection in Arabic language. Arab. J. Sci. Eng. 44(11), 9263–9274 (2019)CrossRef
Metadata
Title
Deep Learning for Discussion-Based Cross-Domain Performance Prediction of MOOC Learners Grouped by Language on FutureLearn
Authors
Ismail Duru
Ayse Saliha Sunar
Su White
Banu Diri
Publication date
06-01-2021
Publisher
Springer Berlin Heidelberg
Published in
Arabian Journal for Science and Engineering / Issue 4/2021
Print ISSN: 2193-567X
Electronic ISSN: 2191-4281
DOI
https://doi.org/10.1007/s13369-020-05117-x

Other articles of this Issue 4/2021

Arabian Journal for Science and Engineering 4/2021 Go to the issue

Research Article-Computer Engineering and Computer Science

A Novel Quranic Search Engine Using an Ontology-Based Semantic Indexing

Research Article-Computer Engineering and Computer Science

Optimal Design of Transmission Shafts Using a Vortex Search Algorithm

Research Article-Computer Engineering and Computer Science

Tamper Detection and Self-Recovery of Medical Imagery for Smart Health

Premium Partners