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Erschienen in: Information Systems Frontiers 5/2021

14.02.2021

A Hybrid Approach of Machine Learning and Lexicons to Sentiment Analysis: Enhanced Insights from Twitter Data of Natural Disasters

verfasst von: Shalak Mendon, Pankaj Dutta, Abhishek Behl, Stefan Lessmann

Erschienen in: Information Systems Frontiers | Ausgabe 5/2021

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Abstract

The success factor of sentimental analysis lies in identifying the most occurring and relevant opinions among users relating to the particular topic. In this paper, we develop a framework to analyze users’ sentiments on Twitter on natural disasters using the data pre-processing techniques and a hybrid of machine learning, statistical modeling, and lexicon-based approach. We choose TF-IDF and K-means for sentiment classification among affinitive and hierarchical clustering. Latent Dirichlet Allocation, a pipeline of Doc2Vec and K-means used to capture themes, then perform multi-level polarity indices classification and its time series analysis. In our study, we draw insights from 243,746 tweets for Kerala’s 2018 natural disasters in India. The key findings of the study are the classification of sentiments based on similarity and polarity indices and identifying themes among the topics discussed on Twitter. We observe different sets of emotions and influencers, among others. Through this case example of Kerala floods, it shows how the government and other organizations could track the positive/negative sentiments concerning time and location; gain a better understanding of the topic of discussion trending among the public, and collaborate with crucial Twitter users/influencers to spread and figure out the gaps in the implementation of schemes in terms of design and execution. This research’s uniqueness is the streamlined and efficient combination of algorithms and techniques embedded in the framework used in achieving the above output, which can be integrated into a platform with GUI for further automation.

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Literatur
Zurück zum Zitat Abedin, B., & Babar, A. (2018). Institutional vs. non-institutional use of social media during emergency response: A case of Twitter in 2014 Australian bush fire. Information Systems Frontiers, 20(4), 729–740. Abedin, B., & Babar, A. (2018). Institutional vs. non-institutional use of social media during emergency response: A case of Twitter in 2014 Australian bush fire. Information Systems Frontiers, 20(4), 729–740.
Zurück zum Zitat Alotaibi, F. S., & Gupta, V. (2018). A cognitive inspired unsupervised language-independent text stemmer for information retrieval. Cognitive Systems Research, 52, 291–300.CrossRef Alotaibi, F. S., & Gupta, V. (2018). A cognitive inspired unsupervised language-independent text stemmer for information retrieval. Cognitive Systems Research, 52, 291–300.CrossRef
Zurück zum Zitat Araque, O., Corcuera-Platas, I., Sanchez-Rada, J. F., & Iglesias, C. A. (2017). Enhancing in-depth learning sentiment analysis with ensemble techniques in social applications. Expert Systems with Applications, 77, 236–246.CrossRef Araque, O., Corcuera-Platas, I., Sanchez-Rada, J. F., & Iglesias, C. A. (2017). Enhancing in-depth learning sentiment analysis with ensemble techniques in social applications. Expert Systems with Applications, 77, 236–246.CrossRef
Zurück zum Zitat Arroyo-Fernández, I., Méndez-Cruz, C. F., Sierra, G., Torres-Moreno, J. M., & Sidorov, G. (2019). Unsupervised sentence representations as word information series: Revisiting TF–IDF. Computer Speech & Language, 56, 107–129.CrossRef Arroyo-Fernández, I., Méndez-Cruz, C. F., Sierra, G., Torres-Moreno, J. M., & Sidorov, G. (2019). Unsupervised sentence representations as word information series: Revisiting TF–IDF. Computer Speech & Language, 56, 107–129.CrossRef
Zurück zum Zitat Ben-Lhachemi, N., & Nfaoui, E. H. (2018). Using tweets embeddings for hashtag recommendation on twitter. Procedia Computer Science, 127, 7–15.CrossRef Ben-Lhachemi, N., & Nfaoui, E. H. (2018). Using tweets embeddings for hashtag recommendation on twitter. Procedia Computer Science, 127, 7–15.CrossRef
Zurück zum Zitat Bhuvana, N., & Aram, I. A. (2019). Facebook and Whatsapp as disaster management tools during the Chennai (India) floods of 2015. International Journal of Disaster Risk Reduction, 101135. Bhuvana, N., & Aram, I. A. (2019). Facebook and Whatsapp as disaster management tools during the Chennai (India) floods of 2015. International Journal of Disaster Risk Reduction, 101135.
Zurück zum Zitat Blei, D. M., Ng, A. Y., & Jordan, M. I. (2003). Latent Dirichlet allocation. Journal of Machine Learning Research, 3(Jan), 993–1022. Blei, D. M., Ng, A. Y., & Jordan, M. I. (2003). Latent Dirichlet allocation. Journal of Machine Learning Research, 3(Jan), 993–1022.
Zurück zum Zitat Bandyopadhyay, A., Ganguly, D., Mitra, M., Saha, S. K., & Jones, G. J. (2018). An embedding based IR model for disaster situations. Information Systems Frontiers, 20(5), 925–932.CrossRef Bandyopadhyay, A., Ganguly, D., Mitra, M., Saha, S. K., & Jones, G. J. (2018). An embedding based IR model for disaster situations. Information Systems Frontiers, 20(5), 925–932.CrossRef
Zurück zum Zitat Bouguettaya, A., Yu, Q., Liu, X., Zhou, X., & Song, A. (2015). Efficient agglomerative hierarchical clustering. Expert Systems with Applications, 42(5), 2785–2797.CrossRef Bouguettaya, A., Yu, Q., Liu, X., Zhou, X., & Song, A. (2015). Efficient agglomerative hierarchical clustering. Expert Systems with Applications, 42(5), 2785–2797.CrossRef
Zurück zum Zitat Calabrese, B. (2018). Data Cleaning. Encyclopedia of Bioinformatics and Computational Biology: ABC of Bioinformatics, 472. Calabrese, B. (2018). Data Cleaning. Encyclopedia of Bioinformatics and Computational Biology: ABC of Bioinformatics, 472.
Zurück zum Zitat Dehkharghani, R., Mercan, H., Javeed, A., & Saygin, Y. (2014). Sentimental causal rule discovery from twitter. Expert Systems with Applications, 41(10), 4950–4958.CrossRef Dehkharghani, R., Mercan, H., Javeed, A., & Saygin, Y. (2014). Sentimental causal rule discovery from twitter. Expert Systems with Applications, 41(10), 4950–4958.CrossRef
Zurück zum Zitat Deveaud, R., SanJuan, E., & Bellot, P. (2014). Accurate and effective latent concept modeling for ad hoc information retrieval. Document numérique, 17(1), 61–84.CrossRef Deveaud, R., SanJuan, E., & Bellot, P. (2014). Accurate and effective latent concept modeling for ad hoc information retrieval. Document numérique, 17(1), 61–84.CrossRef
Zurück zum Zitat Fang, J., Hu, J., Shi, X., & Zhao, L. (2019). Assessing disaster impacts and response using social media data in China: A case study of 2016 Wuhan rainstorm. International Journal of Disaster Risk Reduction, 34, 275–282.CrossRef Fang, J., Hu, J., Shi, X., & Zhao, L. (2019). Assessing disaster impacts and response using social media data in China: A case study of 2016 Wuhan rainstorm. International Journal of Disaster Risk Reduction, 34, 275–282.CrossRef
Zurück zum Zitat Fersini, E., Messina, E., & Pozzi, F. A. (2016). Expressive signals in social media languages to improve polarity detection. Information Processing & Management, 52(1), 20–35.CrossRef Fersini, E., Messina, E., & Pozzi, F. A. (2016). Expressive signals in social media languages to improve polarity detection. Information Processing & Management, 52(1), 20–35.CrossRef
Zurück zum Zitat Frey, B. J., & Dueck, D. (2007). Clustering by passing messages between data points. Science, 315(5814), 972–976.CrossRef Frey, B. J., & Dueck, D. (2007). Clustering by passing messages between data points. Science, 315(5814), 972–976.CrossRef
Zurück zum Zitat Gerber, M. S. (2014). Predicting crime using twitter and kernel density estimation. Decision Support Systems, 61, 115–125.CrossRef Gerber, M. S. (2014). Predicting crime using twitter and kernel density estimation. Decision Support Systems, 61, 115–125.CrossRef
Zurück zum Zitat Hong, L., Fu, C., Wu, J., & Frias-Martinez, V. (2018). Information needs and communication gaps between citizens and local governments online during natural disasters. Information Systems Frontiers, 20(5), 1027–1039.CrossRef Hong, L., Fu, C., Wu, J., & Frias-Martinez, V. (2018). Information needs and communication gaps between citizens and local governments online during natural disasters. Information Systems Frontiers, 20(5), 1027–1039.CrossRef
Zurück zum Zitat Indian Express, 483-dead-in-Kerala-floods-and-landslides-losses-more-than-annual-plan-outlay-pinarayi-vijayan, 30 August 2018. Indian Express, 483-dead-in-Kerala-floods-and-landslides-losses-more-than-annual-plan-outlay-pinarayi-vijayan, 30 August 2018.
Zurück zum Zitat Kankanamge, N., Yigitcanlar, T., Goonetilleke, A., & Kamruzzaman, M. (2019). Determining disaster severity through social media analysis: Testing the methodology with south East Queensland flood tweets. International Journal of Disaster Risk Reduction, 101360. Kankanamge, N., Yigitcanlar, T., Goonetilleke, A., & Kamruzzaman, M. (2019). Determining disaster severity through social media analysis: Testing the methodology with south East Queensland flood tweets. International Journal of Disaster Risk Reduction, 101360.
Zurück zum Zitat Kapoor, K. K., Tamilmani, K., Rana, N. P., Patil, P., Dwivedi, Y. K., & Nerur, S. (2018). Advances in social media research: Past, present and future. Information Systems Frontiers, 20(3), 531–558.CrossRef Kapoor, K. K., Tamilmani, K., Rana, N. P., Patil, P., Dwivedi, Y. K., & Nerur, S. (2018). Advances in social media research: Past, present and future. Information Systems Frontiers, 20(3), 531–558.CrossRef
Zurück zum Zitat Kastrati, Z., & Imran, A. S. (2019). Performance analysis of machine learning classifiers on improved concept vector space models. Future Generation Computer Systems, 96, 552–562.CrossRef Kastrati, Z., & Imran, A. S. (2019). Performance analysis of machine learning classifiers on improved concept vector space models. Future Generation Computer Systems, 96, 552–562.CrossRef
Zurück zum Zitat Kauer, A. U., & Moreira, V. P. (2016). Using information retrieval for sentiment polarity prediction. Expert Systems with Applications, 61, 282–289.CrossRef Kauer, A. U., & Moreira, V. P. (2016). Using information retrieval for sentiment polarity prediction. Expert Systems with Applications, 61, 282–289.CrossRef
Zurück zum Zitat Khan, F. H., Bashir, S., & Qamar, U. (2014). TOM: Twitter opinion mining framework using hybrid classification scheme. Decision Support Systems, 57, 245–257.CrossRef Khan, F. H., Bashir, S., & Qamar, U. (2014). TOM: Twitter opinion mining framework using hybrid classification scheme. Decision Support Systems, 57, 245–257.CrossRef
Zurück zum Zitat Kim, D., Seo, D., Cho, S., & Kang, P. (2019). Multi-co-training for document classification using various document representations: TF–IDF, LDA, and Doc2Vec. Information Sciences, 477, 15–29.CrossRef Kim, D., Seo, D., Cho, S., & Kang, P. (2019). Multi-co-training for document classification using various document representations: TF–IDF, LDA, and Doc2Vec. Information Sciences, 477, 15–29.CrossRef
Zurück zum Zitat Kogan, J., Teboulle, M., & Nicholas, C. (2005). Data driven similarity measures for k-means like clustering algorithms. Information Retrieval, 8(2), 331–349.CrossRef Kogan, J., Teboulle, M., & Nicholas, C. (2005). Data driven similarity measures for k-means like clustering algorithms. Information Retrieval, 8(2), 331–349.CrossRef
Zurück zum Zitat Kontopoulos, E., Berberidis, C., Dergiades, T., & Bassiliades, N. (2013). Ontology-based sentiment analysis of twitter posts. Expert Systems with Applications, 40(10), 4065–4074.CrossRef Kontopoulos, E., Berberidis, C., Dergiades, T., & Bassiliades, N. (2013). Ontology-based sentiment analysis of twitter posts. Expert Systems with Applications, 40(10), 4065–4074.CrossRef
Zurück zum Zitat Liu, F., & Xu, D. (2018). Social roles and consequences in using social media in disasters: A structurational perspective. Information Systems Frontiers, 20(4), 693–711.CrossRef Liu, F., & Xu, D. (2018). Social roles and consequences in using social media in disasters: A structurational perspective. Information Systems Frontiers, 20(4), 693–711.CrossRef
Zurück zum Zitat Liu, X., Wang, G. A., Johri, A., Zhou, M., & Fan, W. (2014). Harnessing global expertise: A comparative study of expertise profiling methods for online communities. Information Systems Frontiers, 16(4), 715–727.CrossRef Liu, X., Wang, G. A., Johri, A., Zhou, M., & Fan, W. (2014). Harnessing global expertise: A comparative study of expertise profiling methods for online communities. Information Systems Frontiers, 16(4), 715–727.CrossRef
Zurück zum Zitat Lozano, M. G., Schreiber, J., & Brynielsson, J. (2017). Tracking geographical locations using a geo-aware topic model for analyzing social media data. Decision Support Systems, 99, 18–29.CrossRef Lozano, M. G., Schreiber, J., & Brynielsson, J. (2017). Tracking geographical locations using a geo-aware topic model for analyzing social media data. Decision Support Systems, 99, 18–29.CrossRef
Zurück zum Zitat Mondal, T., Pramanik, P., Bhattacharya, I., Boral, N., & Ghosh, S. (2018). Analysis and early detection of rumors in a post disaster scenario. Information Systems Frontiers, 20(5), 961–979.CrossRef Mondal, T., Pramanik, P., Bhattacharya, I., Boral, N., & Ghosh, S. (2018). Analysis and early detection of rumors in a post disaster scenario. Information Systems Frontiers, 20(5), 961–979.CrossRef
Zurück zum Zitat Mora, K., Chang, J., Beatson, A., & Morahan, C. (2015). Public perceptions of building seismic safety following the Canterbury earthquakes: A qualitative analysis using twitter and focus groups. International Journal of Disaster Risk Reduction, 13, 1–9.CrossRef Mora, K., Chang, J., Beatson, A., & Morahan, C. (2015). Public perceptions of building seismic safety following the Canterbury earthquakes: A qualitative analysis using twitter and focus groups. International Journal of Disaster Risk Reduction, 13, 1–9.CrossRef
Zurück zum Zitat Nair, M. R., Ramya, G. R., & Sivakumar, P. B. (2017). Usage and analysis of twitter during 2015 Chennai flood towards disaster management. Procedia computer science, 115, 350–358.CrossRef Nair, M. R., Ramya, G. R., & Sivakumar, P. B. (2017). Usage and analysis of twitter during 2015 Chennai flood towards disaster management. Procedia computer science, 115, 350–358.CrossRef
Zurück zum Zitat Nugent, R., Dean, N., & Ayers, E. (2010). Skill set profile clustering: The empty K-means algorithm with automatic specification of starting cluster centers. Nugent, R., Dean, N., & Ayers, E. (2010). Skill set profile clustering: The empty K-means algorithm with automatic specification of starting cluster centers.
Zurück zum Zitat Öztürk, N., & Ayvaz, S. (2018). Sentiment analysis on twitter: A text mining approach to the Syrian refugee crisis. Telematics and Informatics, 35(1), 136–147.CrossRef Öztürk, N., & Ayvaz, S. (2018). Sentiment analysis on twitter: A text mining approach to the Syrian refugee crisis. Telematics and Informatics, 35(1), 136–147.CrossRef
Zurück zum Zitat Pandey, A. C., Rajpoot, D. S., & Saraswat, M. (2017). Twitter sentiment analysis using hybrid cuckoo search method. Information Processing & Management, 53(4), 764–779.CrossRef Pandey, A. C., Rajpoot, D. S., & Saraswat, M. (2017). Twitter sentiment analysis using hybrid cuckoo search method. Information Processing & Management, 53(4), 764–779.CrossRef
Zurück zum Zitat Rudra, K., Sharma, A., Ganguly, N., & Imran, M. (2018). Classifying and summarizing information from microblogs during epidemics. Information Systems Frontiers, 20(5), 933–948.CrossRef Rudra, K., Sharma, A., Ganguly, N., & Imran, M. (2018). Classifying and summarizing information from microblogs during epidemics. Information Systems Frontiers, 20(5), 933–948.CrossRef
Zurück zum Zitat Saif, H., He, Y., Fernandez, M., & Alani, H. (2016). Contextual semantics for sentiment analysis of twitter. Information Processing & Management, 52(1), 5–19.CrossRef Saif, H., He, Y., Fernandez, M., & Alani, H. (2016). Contextual semantics for sentiment analysis of twitter. Information Processing & Management, 52(1), 5–19.CrossRef
Zurück zum Zitat Saleena, N. (2018). An ensemble classification system for twitter sentiment analysis. Procedia computer science, 132, 937–946.CrossRef Saleena, N. (2018). An ensemble classification system for twitter sentiment analysis. Procedia computer science, 132, 937–946.CrossRef
Zurück zum Zitat Špeh, J., Muhic, A., & Rupnik, J. (2013). Parameter estimation for the latent dirichlet allocation, Proceedings of the Conference on Data Mining and Data Warehouses, Ljubljana, Slovenia, pp. 1–4. Špeh, J., Muhic, A., & Rupnik, J. (2013). Parameter estimation for the latent dirichlet allocation, Proceedings of the Conference on Data Mining and Data Warehouses, Ljubljana, Slovenia, pp. 1–4.
Zurück zum Zitat Syed, S., & Spruit, M. (2017). Full-text or abstract? Examining topic coherence scores using latent dirichlet allocation. In 2017 IEEE international conference on data science and advanced analytics (DSAA) (pp. 165-174). IEEE. Syed, S., & Spruit, M. (2017). Full-text or abstract? Examining topic coherence scores using latent dirichlet allocation. In 2017 IEEE international conference on data science and advanced analytics (DSAA) (pp. 165-174). IEEE.
Zurück zum Zitat Tang, H., Tan, S., & Cheng, X. (2009). A survey on sentiment detection of reviews. Expert Systems with Applications, 36(7), 10760–10773.CrossRef Tang, H., Tan, S., & Cheng, X. (2009). A survey on sentiment detection of reviews. Expert Systems with Applications, 36(7), 10760–10773.CrossRef
Zurück zum Zitat Tang, J., Liu, J., Zhang, M., & Mei, Q. (2016). Visualizing large-scale and high-dimensional data. In Proceedings of the 25th international conference on world wide web (pp. 287-297). International world wide web conferences steering committee. Tang, J., Liu, J., Zhang, M., & Mei, Q. (2016). Visualizing large-scale and high-dimensional data. In Proceedings of the 25th international conference on world wide web (pp. 287-297). International world wide web conferences steering committee.
Zurück zum Zitat Tripathy, A., Agrawal, A., & Rath, S. K. (2015). Classification of sentimental reviews using machine learning techniques. Procedia Computer Science, 57, 821–829.CrossRef Tripathy, A., Agrawal, A., & Rath, S. K. (2015). Classification of sentimental reviews using machine learning techniques. Procedia Computer Science, 57, 821–829.CrossRef
Zurück zum Zitat Vomfell, L., Härdle, W. K., & Lessmann, S. (2018). Improving crime count forecasts using twitter and taxi data. Decision Support Systems, 113, 73–85.CrossRef Vomfell, L., Härdle, W. K., & Lessmann, S. (2018). Improving crime count forecasts using twitter and taxi data. Decision Support Systems, 113, 73–85.CrossRef
Zurück zum Zitat Wu, D., & Cui, Y. (2018). Disaster early warning and damage assessment analysis using social media data and geo-location information. Decision Support Systems, 111, 48–59.CrossRef Wu, D., & Cui, Y. (2018). Disaster early warning and damage assessment analysis using social media data and geo-location information. Decision Support Systems, 111, 48–59.CrossRef
Zurück zum Zitat Xing, F. Z., Pallucchini, F., & Cambria, E. (2019). Cognitive-inspired domain adaptation of sentiment lexicons. Information Processing & Management, 56(3), 554–564.CrossRef Xing, F. Z., Pallucchini, F., & Cambria, E. (2019). Cognitive-inspired domain adaptation of sentiment lexicons. Information Processing & Management, 56(3), 554–564.CrossRef
Zurück zum Zitat Yang, S., & Stewart, B. (2019). @ Houstonpolice: An exploratory case of twitter during hurricane Harvey. Online Information Review, 43(7), 1334–1351.CrossRef Yang, S., & Stewart, B. (2019). @ Houstonpolice: An exploratory case of twitter during hurricane Harvey. Online Information Review, 43(7), 1334–1351.CrossRef
Zurück zum Zitat Yoo, S., Song, J., & Jeong, O. (2018). Social media contents based sentiment analysis and prediction system. Expert Systems with Applications, 105, 102–111.CrossRef Yoo, S., Song, J., & Jeong, O. (2018). Social media contents based sentiment analysis and prediction system. Expert Systems with Applications, 105, 102–111.CrossRef
Zurück zum Zitat Zahra, K., Imran, M., & Ostermann, F. O. (2020). Automatic identification of eyewitness messages on twitter during disasters. Information Processing & Management, 57(1), 102107.CrossRef Zahra, K., Imran, M., & Ostermann, F. O. (2020). Automatic identification of eyewitness messages on twitter during disasters. Information Processing & Management, 57(1), 102107.CrossRef
Zurück zum Zitat Zhao, W. L., Deng, C. H., & Ngo, C. W. (2018). K-means: A revisit. Neurocomputing, 291, 195–206.CrossRef Zhao, W. L., Deng, C. H., & Ngo, C. W. (2018). K-means: A revisit. Neurocomputing, 291, 195–206.CrossRef
Zurück zum Zitat Zhang, J., & Piramuthu, S. (2018). Product recommendation with latent review topics. Information Systems Frontiers, 20(3), 617–625.CrossRef Zhang, J., & Piramuthu, S. (2018). Product recommendation with latent review topics. Information Systems Frontiers, 20(3), 617–625.CrossRef
Zurück zum Zitat Zhang, L., Wu, Z., Bu, Z., Jiang, Y., & Cao, J. (2018). A pattern-based topic detection and analysis system on Chinese tweets. Journal of computational science, 28, 369–381.CrossRef Zhang, L., Wu, Z., Bu, Z., Jiang, Y., & Cao, J. (2018). A pattern-based topic detection and analysis system on Chinese tweets. Journal of computational science, 28, 369–381.CrossRef
Metadaten
Titel
A Hybrid Approach of Machine Learning and Lexicons to Sentiment Analysis: Enhanced Insights from Twitter Data of Natural Disasters
verfasst von
Shalak Mendon
Pankaj Dutta
Abhishek Behl
Stefan Lessmann
Publikationsdatum
14.02.2021
Verlag
Springer US
Erschienen in
Information Systems Frontiers / Ausgabe 5/2021
Print ISSN: 1387-3326
Elektronische ISSN: 1572-9419
DOI
https://doi.org/10.1007/s10796-021-10107-x

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