On-line Evolutionary Sentiment Topic Analysis Modeling

As the rapid booming of reviews, a valid sentiment analysis model will significantly boost the review recommendation system’s capability, and present more constructive information for consumers. Topic probabilistic models have already shown many advantages for detecting potential structure of topics...

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Main Authors: YongHeng Chen, ChunYan Yin, YaoJin Lin, Wanli Zuo
Format: Article
Language:English
Published: Atlantis Press 2018-01-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25892517/view
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spelling doaj-03e131492c8e4e98ae49613df797f34d2020-11-25T02:21:13ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832018-01-0111110.2991/ijcis.11.1.49On-line Evolutionary Sentiment Topic Analysis ModelingYongHeng ChenChunYan YinYaoJin LinWanli ZuoAs the rapid booming of reviews, a valid sentiment analysis model will significantly boost the review recommendation system’s capability, and present more constructive information for consumers. Topic probabilistic models have already shown many advantages for detecting potential structure of topics and sentiments in reviews corpus. However, most reviews are presented through time-dependent data streams and some respects of the potential structure are unfixed and time-varying, such as topic number and word probability distribution. In this paper, a novel probabilistic topic modelling framework is proposed, called on-line evolutionary sentiment/topic modeling (OESTM), which has the capacity for achieving the optimization of the aforementioned aspects. Firstly, OESTM depends on an improved non-parametric Bayesian model for estimating the best number of topics that can perfectly explain the current time-slice, and analyzes these latent topics and sentiment polarities simultaneously. Secondly, OESTM implements the birth, death and inheritance for detected topics through the transfer of parameters from previous time slices to the updated time slice. The experiments show that significant improvements have been achieved by the proposed model with respect to other state-of-the-art models.https://www.atlantis-press.com/article/25892517/viewtopic mindingsentiment analysisnonparametric Bayesian statisticsMarkov chain Monte Carlo
collection DOAJ
language English
format Article
sources DOAJ
author YongHeng Chen
ChunYan Yin
YaoJin Lin
Wanli Zuo
spellingShingle YongHeng Chen
ChunYan Yin
YaoJin Lin
Wanli Zuo
On-line Evolutionary Sentiment Topic Analysis Modeling
International Journal of Computational Intelligence Systems
topic minding
sentiment analysis
nonparametric Bayesian statistics
Markov chain Monte Carlo
author_facet YongHeng Chen
ChunYan Yin
YaoJin Lin
Wanli Zuo
author_sort YongHeng Chen
title On-line Evolutionary Sentiment Topic Analysis Modeling
title_short On-line Evolutionary Sentiment Topic Analysis Modeling
title_full On-line Evolutionary Sentiment Topic Analysis Modeling
title_fullStr On-line Evolutionary Sentiment Topic Analysis Modeling
title_full_unstemmed On-line Evolutionary Sentiment Topic Analysis Modeling
title_sort on-line evolutionary sentiment topic analysis modeling
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2018-01-01
description As the rapid booming of reviews, a valid sentiment analysis model will significantly boost the review recommendation system’s capability, and present more constructive information for consumers. Topic probabilistic models have already shown many advantages for detecting potential structure of topics and sentiments in reviews corpus. However, most reviews are presented through time-dependent data streams and some respects of the potential structure are unfixed and time-varying, such as topic number and word probability distribution. In this paper, a novel probabilistic topic modelling framework is proposed, called on-line evolutionary sentiment/topic modeling (OESTM), which has the capacity for achieving the optimization of the aforementioned aspects. Firstly, OESTM depends on an improved non-parametric Bayesian model for estimating the best number of topics that can perfectly explain the current time-slice, and analyzes these latent topics and sentiment polarities simultaneously. Secondly, OESTM implements the birth, death and inheritance for detected topics through the transfer of parameters from previous time slices to the updated time slice. The experiments show that significant improvements have been achieved by the proposed model with respect to other state-of-the-art models.
topic topic minding
sentiment analysis
nonparametric Bayesian statistics
Markov chain Monte Carlo
url https://www.atlantis-press.com/article/25892517/view
work_keys_str_mv AT yonghengchen onlineevolutionarysentimenttopicanalysismodeling
AT chunyanyin onlineevolutionarysentimenttopicanalysismodeling
AT yaojinlin onlineevolutionarysentimenttopicanalysismodeling
AT wanlizuo onlineevolutionarysentimenttopicanalysismodeling
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