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Using Naive Bayes Classifier to Distinguish Reviews from Non-review Documents in Chinese

机译:使用朴素贝叶斯分类器区分未审核中文文档的评论

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摘要

Reviews are subjective documents expressing opinions or evaluations. In contrast,non-review documents often present factual information objectively. Separating reviews from non-reviews, or subjectivity classification, is potentially important for many text processing applications, such as information extraction and information retrieval. Also, it is a key process in sentiment classification for online customer reviews. As a type of genre classification, the classifications of subjective and objective texts are different from traditional topic-based classifications. Not many studies have been conducted in this domain and most of them were on English texts. Little work has been done on Chinese subjectivity classification. However, the detailed techniques used in English texts can not be applied directly to Chinese due to the different characteristics between these two languages. This paper proposes an approach to perform subjectivity classification on Chinese text based on a supervised machine learning algorithm, Na(i)ve Bayes. Experiment studies have been conducted on two kinds of documents:movie reviews and movie plots written in Chinese. The results show that the performances of the proposed approach are comparable to those of the existing English subjectivity classification studies.
机译:评论是表达意见或评价的主观文件。相反,非审阅文件通常客观地提供事实信息。将评论与非评论或主观分类分开,对于许多文本处理应用程序(例如信息提取和信息检索)潜在重要。而且,它是在线客户评论情绪分类中的关键过程。作为一种类型分类,主观和客观文本的分类不同于传统的基于主题的分类。在这个领域进行的研究并不多,而且大多数研究都是用英语进行的。在汉语主观性分类上所做的工作很少。但是,由于这两种语言之间的特性不同,英文文本中使用的详细技术无法直接应用于中文。本文提出了一种基于监督机器学习算法Na(i)ve Bayes的中文文本主观分类方法。已经对两种文件进行了实验研究:电影评论和用中文编写的电影情节。结果表明,该方法的性能与现有的英语主观分类研究相当。

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