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Utilizing emotion scores for improving classifier performance for predicting customer’s intended ratings from social media posts

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dc.contributor.author Ray, Arghya.
dc.contributor.author Bala, Pradip Kumar.
dc.contributor.author Jain, Rashmi.
dc.date.accessioned 2021-02-24T05:23:13Z
dc.date.available 2021-02-24T05:23:13Z
dc.date.issued 2021-02
dc.identifier.citation Ray, A., Bala, P. K., & Jain, R. (2021). Utilizing emotion scores for improving classifier performance for predicting customer's intended ratings from social media posts. Benchmarking: An International Journal. 28(2), 438-464. en_US
dc.identifier.issn 438-464
dc.identifier.uri . https://doi.org/10.1108/BIJ-01-2020-0004
dc.identifier.uri http://idr.iimranchi.ac.in:8080/xmlui/handle/123456789/915
dc.description.abstract Purpose – Social media channels provide an avenue for expressing views about different services/products. However, unlike merchandise/company websites (where users can post both reviews and ratings), it is not possible to understand user’s ratings for a particular service-related comment on social media unless explicitly mentioned. Predicting ratings can be beneficial for service providers and prospective customers. Additionally, predicting ratings from a user-generated content can help in developing vast data sets for recommender systems utilizing recent data. The aim of this study is to predict ratings more accurately and enhance the performance of sentiment-based predictors by combining it with the emotional content of textual data. Design/methodology/approach – This study had utilized a combination of sentiment and emotion scores to predict the ratings of Twitter posts (3,509 tweets) in three different contexts, namely, online food delivery (OFD) services, online travel agencies (OTAs) and online learning (e-learning). A total of 29,551 reviews were utilized for training and testing purposes. Findings – Results of this study indicate accuracies of 58.34%, 57.84% and 100% in cases of e-learning, OTA and OFD services, respectively. The combination of sentiment and emotion scores showed an increase in accuracies of 19.41%, 27.83% and 40.20% in cases of e-learning, OFD and OTA services, respectively. Practical implications – Understanding the ratings of social media comments can help both service providers as well as prospective customers who do not spend much time reading posts but want to understand the perspectives of others about a particular service/product. Additionally, predicting ratings of social media comments will help to build databases for recommender systems in different contexts. Originality/value – The uniqueness of this study is in utilizing a combination of sentiment and emotion scores to predict the ratings of tweets related to different online services, namely, e-learning OFD and OTAs. en_US
dc.language.iso en en_US
dc.publisher Benchmarking: An International Journal en_US
dc.subject Emotion analysis en_US
dc.subject Online ratings en_US
dc.subject Prediction en_US
dc.subject Sentiment analysis en_US
dc.subject Social media posts en_US
dc.subject IIM Ranchi en_US
dc.title Utilizing emotion scores for improving classifier performance for predicting customer’s intended ratings from social media posts en_US
dc.type Article en_US
dc.volume 28 en_US
dc.issue 2 en_US


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