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Study on Identification of Subjective Sentences in Product Reviews Based on Weekly Supervised Topic Model

机译:基于每周监督主题模型的产品评论主观句识别研究

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Sentiment analysis or opinion mining in online product reviews is a method that can automatically detect subjective information regarding the entity such as opinions, attitudes, and feelings expressed by consumers. Online product reviews always include objective and subjective sentences; identification of subjective sentences in the given content is a very important and foundational task in the research of opinion mining. In this paper, we focus on the problem of identification of sentence-level subjective sentences, propose a weakly supervised model mixed topics based on LDA for identification of the subjective sentences, considering the impact of multiple topic factors on the identification of subjective sentences. The approach exploits semi-supervised learning method, and extended the existing basic LDA topic model for the identification of subjectivity in text. This work iterates the model prior probability by using a small domain-independent lexicon. Finally, the proposed model is applied to a online review corpus and the experimental shows that the proposed model can effectively improve the recognition effect.
机译:在线产品评论中的情感分析或观点挖掘是一种可以自动检测有关实体的主观信息的方法,例如消费者表达的观点,态度和感受。在线产品评论总是包含主观和主观的句子;在意见挖掘的研究中,识别给定内容中的主观句子是一项非常重要且基础的任务。本文针对句子层次主观句子的识别问题,考虑了多个话题因素对主观句子识别的影响,提出了一种基于LDA的弱监督模型混合主题对主观句子的识别。该方法利用半监督学习方法,并扩展了现有的基本LDA主题模型来识别文本的主观性。这项工作通过使用一个与域无关的小词典来迭代模型的先验概率。最后,将该模型应用于在线评论语料库,实验表明该模型可以有效提高识别效果。

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