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Sentiment polarity detection in bengali tweets using multinomial Na?ve Bayes and support vector machines

机译:使用多项式na ve贝叶斯和支持向量机的Bengali推文的情感极性检测

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Sentiment analysis is an area of study that deals with extraction, identification or otherwise characterization of the sentiment content of written text units. Sentiment is meant by feelings-attitudes, emotions and opinions. Sentiment polarity detection is one of most popular sentiment analysis tasks. Now-a-days, blog posts, tweets and comments in Indian languages are available on the web in a large number. Sentiment analysis in Indian languages is relatively new area and research on sentiment analysis in Indian language domain is at the early stage. In this paper, we present a sentiment polarity detection approach that detects sentiment polarity of Bengali tweets using machine learning algorithms. Our proposed approach has been tested on the Bengali tweet dataset released for SAIL contest 2015. The experimental results show that performance of our proposed system is better than the best system participated in SAIL 2015 sentiment analysis contest.
机译:情绪分析是一种研究领域,可以涉及提取,识别或以其他方式表征书面文本单位的情绪内容。情绪是由感受 - 态度,情感和意见的意思。情感极性检测是最受欢迎的情感分析任务之一。现在,在Web上,在大量方面,现在可以在网上使用现在,博客帖子,推文和印度语言的评论。印度语言的情感分析是相对较新的领域和印度语言领域的情感分析研究在早期阶段。在本文中,我们介绍了一种情绪极性检测方法,可以使用机器学习算法检测孟加拉发推文的情感极性。我们的拟议方法已经在2015年帆船竞赛中发布的孟加拉推文数据集进行了测试。实验结果表明,我们所提出的系统的表现优于参加2015年帆2015年情绪分析竞赛的最佳系统。

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