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Aspect based sentiment analysis in social media with classifier ensembles

机译:具有分类器集成的社交媒体中基于方面的情感分析

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摘要

The analysis of user generated content on social media and the accurate specification of user opinions towards products and events is quite valuable to many applications. With the proliferation of Web 2.0 and the rapid growth of usergenerated content on the web, approaches on aspect level sentiment analysis that yield fine grained information are of great interest. In this work, a classifier ensemble approach for aspect based sentiment analysis is presented. The approach is generic and utilizes latent dirichlet allocation to model a topic and to specify the main aspects that users address. Then, each comment is further analyzed and word dependencies that indicate the interactions between words and aspects are extracted. An ensemble classifier formulated by naive bayes, maximum entropy and support vector machines is designed to recognize the polarity of the user's comment towards each aspect. The evaluation results show sound improvement compared to individual classifiers and indicate that the ensemble system is scalable and accurate in analyzing user generated content and in specifying users' opinions and attitudes.
机译:对用户在社交媒体上生成的内容的分析以及对产品和事件的用户意见的准确说明,对于许多应用程序来说非常有价值。随着Web 2.0的普及以及用户在Web上生成的内容的迅速增长,产生细粒度信息的方面方面的情感分析方法引起了人们的极大兴趣。在这项工作中,提出了一种基于方面的情感分析的分类器集成方法。该方法是通用的,并利用潜在的狄利克雷分配来对主题建模并指定用户要解决的主要方面。然后,进一步分析每个注释,并提取表示单词和方面之间相互作用的单词依存关系。由朴素贝叶斯,最大熵和支持向量机构成的整体分类器旨在识别用户对各个方面的评论的极性。与单个分类器相比,评估结果显示出了良好的改进,并且表明该集成系统在分析用户生成的内容以及指定用户的意见和态度方面具有可扩展性和准确性。

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