Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications
Sentiment Analysis (SA) is a category of data mining techniques that extract latent representations of affective states within textual corpuses. This has wide ranging applications from online reviews to capturing mental states. In this paper, we present a novel SA feature set; Emotional Variance Ana...
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sg-ntu-dr.10356-1688082023-06-19T15:32:08Z Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications Tan, Leonard Tan, Ooi Kiang Sze, Chun Chau Goh, Wilson Wen Bin School of Biological Sciences School of Electrical and Electronic Engineering Lee Kong Chian School of Medicine (LKCMedicine) Centre for Biomedical Informatics Science::Medicine Clustering Algorithm Sentiment Analysis Sentiment Analysis (SA) is a category of data mining techniques that extract latent representations of affective states within textual corpuses. This has wide ranging applications from online reviews to capturing mental states. In this paper, we present a novel SA feature set; Emotional Variance Analysis (EVA), which captures patterns of emotional instability. Applying EVA on student journals garnered from an Experiential Learning (EL) course, we find that EVA is useful for profiling variations in sentiment polarity and intensity, which in turn can predict academic performance. As a feature set, EVA is compatible with a wide variety of Artificial Intelligence (AI) and Machine Learning (ML) applications. Although evaluated on education data, we foresee EVA to be useful in mental health profiling and consumer behaviour applications. EVA is available at https://qr.page/g/5jQ8DQmWQT4. Our results show that EVA was able to achieve an overall accuracy of 88.7% and outperform NLP (76.0%) and SentimentR (58.0%) features by 15.8% and 51.7% respectively when predicting student experiential learning grade scores through a Multi-Layer Perceptron (MLP) ML model. Ministry of Education (MOE) Nanyang Technological University Published version WWBG, CCS and TOK acknowledge funding from an ACE grant from Nanyang Technological University. WWBG acknowledges funding from an EdeX Teaching and Learning grant from Nanyang Technological University. WWBG acknowledge support from an MOE AcRF Tier 1 award (RG35/20). 2023-06-19T07:49:32Z 2023-06-19T07:49:32Z 2023 Journal Article Tan, L., Tan, O. K., Sze, C. C. & Goh, W. W. B. (2023). Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications. PloS One, 18(1), e0274299-. https://dx.doi.org/10.1371/journal.pone.0274299 1932-6203 https://hdl.handle.net/10356/168808 10.1371/journal.pone.0274299 36634041 2-s2.0-85146192130 1 18 e0274299 en RG35/20 PloS One © 2023 Tan et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. application/pdf |
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Science::Medicine Clustering Algorithm Sentiment Analysis Tan, Leonard Tan, Ooi Kiang Sze, Chun Chau Goh, Wilson Wen Bin Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications |
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Sentiment Analysis (SA) is a category of data mining techniques that extract latent representations of affective states within textual corpuses. This has wide ranging applications from online reviews to capturing mental states. In this paper, we present a novel SA feature set; Emotional Variance Analysis (EVA), which captures patterns of emotional instability. Applying EVA on student journals garnered from an Experiential Learning (EL) course, we find that EVA is useful for profiling variations in sentiment polarity and intensity, which in turn can predict academic performance. As a feature set, EVA is compatible with a wide variety of Artificial Intelligence (AI) and Machine Learning (ML) applications. Although evaluated on education data, we foresee EVA to be useful in mental health profiling and consumer behaviour applications. EVA is available at https://qr.page/g/5jQ8DQmWQT4. Our results show that EVA was able to achieve an overall accuracy of 88.7% and outperform NLP (76.0%) and SentimentR (58.0%) features by 15.8% and 51.7% respectively when predicting student experiential learning grade scores through a Multi-Layer Perceptron (MLP) ML model. |
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School of Biological Sciences |
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School of Biological Sciences Tan, Leonard Tan, Ooi Kiang Sze, Chun Chau Goh, Wilson Wen Bin |
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Article |
author |
Tan, Leonard Tan, Ooi Kiang Sze, Chun Chau Goh, Wilson Wen Bin |
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Tan, Leonard |
title |
Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications |
title_short |
Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications |
title_full |
Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications |
title_fullStr |
Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications |
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Emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications |
title_sort |
emotional variance analysis: a new sentiment analysis feature set for artificial intelligence and machine learning applications |
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2023 |
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https://hdl.handle.net/10356/168808 |
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1772827964159819776 |