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Topic Model Based Opinion Mining and Sentiment Analysis

机译:基于主题模型的观点挖掘与情感分析

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This paper discusses a new topic model based approach for opinion mining and sentiment analysis of text reviews posted in web forums or social media site which are mostly in unstructured in nature. In recent years, opinions are exchanged in clouds about any product, person, event or any interested topic. These opinions help in decision making for choosing a product or getting feedback about any topic. Opinion mining and sentiment analysis are related in a sense that opining mining deals with analyzing and summarizing expressed opinions whereas sentiment analysis classifies opinionated text into positive and negative. Aspect extraction is a crucial problem in sentiment analysis. Model proposed in the paper utilizes topic model for aspect extraction and support vector machine learning technique for sentiment classification of textual reviews. The goal is to automate the process of mining attitudes, opinions and hidden emotions from text.
机译:本文讨论了基于新的意见挖掘和情感分析的新功能模型,文本评论中发布的网络论坛或社交媒体网站,大多是非结构化的。近年来,在云中交换了关于任何产品,人,活动或任何感兴趣主题的意见。这些意见有助于选择产品或获取有关任何主题的反馈。意见采矿和情绪分析在挑战和总结表达意见的挑战中有关的感觉有关,而情绪分析将本文的文本分类为积极和负面。方面提取是情绪分析中的关键问题。本文提出的模型利用主题模型进行方面提取和支持传染媒介机器学习技术,为文本评语进行情感分类。目标是自动化挖掘态度,意见和隐藏情绪的过程。

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