基于机器学习方法的推文情感分析

Megha Rathi, Aditya Malik, D. Varshney, Rachita Sharma, Sarthak Mendiratta
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引用次数: 91

摘要

在这个新时代,像Twitter和Facebook这样的微博网站充斥着观点和数据。Twitter是使用最广泛的微博网站之一,人们在这里以tweet的形式分享他们的想法,因此它成为情感分析的最佳来源之一。意见可以被广泛地分为三类,积极的是好的,消极的是坏的,中性的,分析意见差异的过程,并将它们归类到所有这些类别中,这就是情感分析。数据挖掘主要用于从网页尤其是社交网站中发现相关信息。将数据挖掘与文本挖掘、自然语言处理和计算智能等其他领域相结合,我们能够将推文分为好、坏或中性。本研究的重点是对从Twitter收集的推文数据进行情绪分类。过去,研究人员使用现有的机器学习技术进行情感分析,但结果表明,现有的机器学习技术并没有提供更好的情感分类结果。为了改善情感分析领域的分类结果,我们使用集成机器学习技术来提高所提出方法的效率和可靠性。同样,我们将支持向量机与决策树相结合,实验结果证明,与单个分类器相比,我们提出的方法在f-measure和准确率方面提供了更好的分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis of Tweets Using Machine Learning Approach
Microblogging websites like Twitter and Facebook, in this new era, is loaded with opinions and data. One of the most widely used micro-blogging site, Twitter, is where people share their ideas in the form of tweets and therefore it becomes one of the best sources for sentimental analysis. Opinions can be widely grouped into three categories good for positive, bad for negative and neutral and the process of analyzing differences of opinions and grouping them in all these categories is known as Sentiment Analysis. Data mining is basically used to uncover relevant information from web pages especially from the social networking sites. Merging data mining with other fields like text mining, NLP and computational intelligence we are able to classify tweets as good, bad or neutral. The main emphasis of this research is on the classification of emotions of tweets' data gathered from Twitter. In the past, researchers were using existing machine learning techniques for sentiment analysis but the results showed that existing machine learning techniques were not providing better results of sentiment classification. In order to improve classification results in the domain of sentiment analysis, we are using ensemble machine learning techniques for increasing the efficiency and reliability of proposed approach. For the same, we are merging Support Vector Machine with Decision Tree and experimental results prove that our proposed approach is providing better classification results in terms of f-measure and accuracy in contrast to individual classifiers.
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