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Latent Aspect Rating Analysis on Review Text Data: A Rating Regression Approach

机译:审阅文本数据的潜在方面评分分析:一种评分回归方法

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In this paper, we define and study a new opinionated text data analysis problem called Latent Aspect Rating Analysis (LARA), which aims at analyzing opinions expressed about an entity in an online review at the level of topical aspects to discover each individual reviewer's latent opinion on each aspect as well as the relative emphasis on different aspects when forming the overall judgment of the entity. We propose a novel probabilistic rating regression model to solve this new text mining problem in a general way. Empirical experiments on a hotel review data set show that the proposed latent rating regression model can effectively solve the problem of LARA, and that the detailed analysis of opinions at the level of topical aspects enabled by the proposed model can support a wide range of application tasks, such as aspect opinion summarization, entity ranking based on aspect ratings, and analysis of reviewers rating behavior.
机译:在本文中,我们定义并研究了一个新的有观点的文本数据分析问题,称为潜在方面评分分析(LARA),该问题旨在在主题方面对在线评论中对实体表达的观点进行分析,以发现每个评论者的潜在观点在形成实体的整体判断时,在每个方面以及相对于不同方面的相对强调。我们提出了一种新颖的概率等级回归模型,以一般方式解决此新文本挖掘问题。对酒店评价数据集的经验实验表明,所提出的潜在评分回归模型可以有效地解决LARA问题,并且该模型在主题方面的观点的详细分析可以支持广泛的应用任务,例如方面意见摘要,基于方面评分的实体排名以及对评论者评分行为的分析。

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