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An empirical study of unsupervised sentiment classification of Chinese reviews

机译:中文评论无监督情感分类的实证研究

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摘要

This paper is an empirical study of unsupervised sentiment classification of Chinese reviews. The focus is on exploring the ways to improve the performance of the unsupervised sentiment classification based on limited existing sentiment resources in Chinese. On the one hand, all available Chinese sentiment lexicons — individual and combined — are evaluated under our proposed framework. On the other hand, the domain dependent sentiment noise words are identified and removed using unlabeled data, to improve the classification performance. To the best of our knowledge, this is the first such attempt. Experiments have been conducted on three open datasets in two domains, and the results show that the proposed algorithm for sentiment noise words removal can improve the classification performance significantly.
机译:本文是对中文评论的无监督情感分类的实证研究。重点是探索基于中文的现有有限情感资源来提高无监督情感分类性能的方法。一方面,在我们建议的框架下对所有可用的中国情感词典(无论是单独的还是组合的)进行了评估。另一方面,使用未标记的数据来识别和去除依赖于域的情感噪声词,以提高分类性能。就我们所知,这是第一次尝试。在两个领域的三个开放数据集上进行了实验,结果表明,提出的情感噪声词去除算法可以显着提高分类性能。

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