情感分析的模糊方法

Chris Jefferson, Han Liu, Ella Haig
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引用次数: 53

摘要

情感分析旨在通过自然语言处理、文本分析和计算语言学来识别文档的极性。在过去的十年里,随着在线可用数据呈指数级增长,包括许多基于情感的文档(评论、反馈、文章),人们对情感分析的关注越来越多。许多方法考虑到机器学习技术或统计分析,但在这一领域很少使用模糊分类器,特别是考虑到语言的模糊性和模糊方法处理这种模糊性的适用性。本文提出了一种基于模糊规则的情感分析系统,通过模糊隶属度的使用可以提供更精细的输出。我们将我们提出的方法的性能与常用的情感分类器(例如决策树,Naïve贝叶斯)进行比较,这些分类器在该任务中表现良好。实验结果表明,基于模糊的方法的性能略好于其他算法。此外,模糊方法允许定义不同程度的情绪,而不需要使用大量的类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy approach for sentiment analysis
Sentiment analysis aims to identify the polarity of a document through natural language processing, text analysis and computational linguistics. Over the last decade, there has been much focus on sentiment analysis as the data available on-line has grown exponentially to include many sentiment based documents (reviews, feedback, articles). Many approaches consider machine learning techniques or statistical analysis, but there has been little use of the fuzzy classifiers in this field especially considering the ambiguity of language and the suitability of fuzzy approaches to deal with this ambiguity. This paper proposes a fuzzy rule based system for sentiment analysis, which can offer more refined outputs through the use of fuzzy membership degrees. We compare the performance of our proposed approach with commonly used sentiment classifiers (e.g. Decision Trees, Naïve Bayes) which are known to perform well in this task. The experimental results indicate that our fuzzy-based approach performs marginally better than the other algorithms. In addition, the fuzzy approach allows the definition of different degrees of sentiment without the need to use a larger number of classes.
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