FLAME: A Probabilistic Model Combining Aspect Based Opinion Mining and Collaborative Filtering

Yao Wu, M. Ester
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引用次数: 146

Abstract

Aspect-based opinion mining from online reviews has attracted a lot of attention recently. Given a set of reviews, the main task of aspect-based opinion mining is to extract major aspects of the items and to infer the latent aspect ratings from each review. However, users may have different preferences which might lead to different opinions on the same aspect of an item. Even if fine-grained aspect rating analysis is provided for each review, it is still difficult for a user to judge whether a specific aspect of an item meets his own expectation. In this paper, we study the problem of estimating personalized sentiment polarities on different aspects of the items. We propose a unified probabilistic model called Factorized Latent Aspect ModEl (FLAME), which combines the advantages of collaborative filtering and aspect based opinion mining. FLAME learns users' personalized preferences on different aspects from their past reviews, and predicts users' aspect ratings on new items by collective intelligence. Experiments on two online review datasets show that FLAME outperforms state-of-the-art methods on the tasks of aspect identification and aspect rating prediction.
基于方面的意见挖掘和协同过滤相结合的概率模型FLAME
基于方面的在线评论意见挖掘近年来引起了人们的广泛关注。给定一组评论,基于方面的意见挖掘的主要任务是提取项目的主要方面,并从每个评论中推断潜在的方面评级。然而,用户可能有不同的偏好,这可能导致对一个项目的同一方面有不同的看法。即使为每个评论提供了细粒度的方面评级分析,用户仍然很难判断一个项目的特定方面是否满足他自己的期望。在本文中,我们研究了在项目的不同方面估计个性化情绪极性的问题。我们提出了一个统一的概率模型,称为分解潜在方面模型(FLAME),它结合了协同过滤和基于方面的意见挖掘的优点。FLAME从用户过去的评论中学习用户在不同方面的个性化偏好,并通过集体智能预测用户对新产品的方面评分。在两个在线评论数据集上的实验表明,FLAME在方面识别和方面评级预测任务上优于目前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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