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Rating Supervised Latent Topic Model for Aspect Discovery and Sentiment Classification in On-Line Review Mining

机译:在线评估挖掘方面发现和情感分类的评级监督潜在主题模型

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Topic models have been used for unsupervised joint aspect (or attribute) discovery and sentiment classification in on-line review mining. However in existing methods the straightforward relations between ratings, aspect importance weights and sentiments in reviews are not explicitly exploited. In this paper we propose Rating Supervised Latent Topic Model (RS-LTM) that incorporates these relations into the framework of LDA to fulfill the task. We test the proposed model on a review set crawled from Amazon.com. The preliminary experiment results show that the proposed model outperforms state-of-the-art models by a considerable margin.
机译:主题模型已被用于无监督的联合方面(或属性)在线评论挖掘中的广告宣传和情感分类。然而,在现有方法中,评级之间的直接关系,方面重要的评论中的方面重要性和情绪没有明确剥削。在本文中,我们提出评级监督潜在主题模型(RS-LTM),将这些关系融入LDA的框架以实现任务。我们在从Amazon.com爬行的审核中测试所提出的模型。初步实验结果表明,所提出的模型以相当多的边距优于最先进的模型。

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