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Unifying Topic, Sentiment & Preference in an HDP-Based Rating Regression Model for Online Reviews

机译:在基于HDP的在线评论评分回归模型中统一主题,情感和偏好

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This paper proposes a new HDP based online review rating regression model named Topic-Sentiment-Preference Regression Analysis (TSPRA). TSPRA combines topics (i.e. product as-pects), word sentiment and user preference as regression factors, and is able to perform topic clus-tering, review rating prediction, sentiment analysis and what we invent as “critical aspect” analysis altogether in one framework. TSPRA extends sentiment approaches by integrating the key concept “user preference” in collaborative filtering (CF) models into consideration, while it is distinct from current CF models by decoupling “user preference” and “sentiment” as independent factors. Our experiments conducted on 22 Amazon datasets show overwhelming better performance in rating predication against a state-of-art model FLAME (2015) in terms of error, Pearson’s Correlation and number of inverted pairs. For sentiment analysis, we compare the derived word sentiments against a public sentiment resource SenticNet3 and our sentiment estimations clearly make more sense in the context of online reviews. Last, as a result of the de-correlation of “user preference” from “sentiment”, TSPRA is able to evaluate a new concept “critical aspects”, defined as the prod-uct aspects seriously concerned by users but negatively commented in reviews. Improvement to such “critical aspects” could be most effective to enhance user experience.
机译:本文提出了一种新的基于HDP的在线评论评分回归模型,称为主题-情感-偏好-回归分析(TSPRA)。 TSPRA将主题(即产品方面),单词情感和用户偏好作为回归因素进行组合,并且能够在一个框架中执行主题聚类,评论评级预测,情感分析以及我们发明的“关键方面”分析。 TSPRA通过将协作过滤(CF)模型中的关键概念“用户偏好”集成到考虑中来扩展情感方法,而与当前的CF模型不同,TSPRA通过将“用户偏好”和“情感”作为独立因素分离。我们对22个Amazon数据集进行的实验表明,相对于最新模型FLAME(2015),在错误,皮尔逊相关性和反向对数方面,预测预测的性能具有压倒性的优势。对于情感分析,我们将派生的单词情感与公共情感资源SenticNet3进行了比较,在在线评论的背景下,我们的情感估计显然更有意义。最后,由于“用户偏好”与“情感”之间不相关,TSPRA能够评估新概念“关键方面”,定义为用户严重关注但在评论中负面评价的产品方面。对此类“关键方面”的改进可能最有效地增强了用户体验。

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