推特情绪分析使用各种分类算法

Ajay Deshwal, S. Sharma
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引用次数: 40

摘要

Twitter是一个网络应用程序,通过它的微博功能,可以发现世界上任何地方的任何情况下正在发生的事情。Twitter上的帖子通常很短,由公众不断生成,非常适合进行意见挖掘。根据基于词的查询的某些方面,可以将这些消息分类为包含积极或消极情绪。对于情感分类中哪些特征和监督分类算法有利于设计准确高效的情感分类系统,以往的研究并没有很好的定论。我们提出结合表情符号、感叹号和问号符号、地名词典、字母图等多种特征提取技术来设计更精确的情感分类系统。本文对六种监督分类算法进行了实证比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Twitter sentiment analysis using various classification algorithms
Twitter is a web application built to find out what is happening at any instance through its micro blogging feature, anywhere in the world. Twitter posts are generally short and generated constantly by public and very well-suited for opinion mining. These messages can be classified as containing either positive or a negative sentiment on the basis of certain aspects with respect to a term based query. The past studies of sentiment classification are not very conclusive about which features and supervised classification algorithms are good for designing accurate and efficient sentiment classification system. We propose to combine many feature extraction techniques like emoticons, exclamation and question mark symbol, word gazetteer, unigrams to design more accurate sentiment classification system. This paper presents empirical comparison of six supervised classification algorithms.
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