首页> 外文会议>2018 Fifth International Conference on Emerging Applications of Information Technology >Using Character N-gram Features and Multinomial Naïve Bayes for Sentiment Polarity Detection in Bengali Tweets
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Using Character N-gram Features and Multinomial Naïve Bayes for Sentiment Polarity Detection in Bengali Tweets

机译:使用字符N元语法特征和多项朴素贝叶斯进行孟加拉语推文中的情感极性检测

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摘要

Sentiment is meant by feelings-attitudes, emotions and opinions. Sentiment polarity detection is one of most popular sentiment analysis tasks. Now-a-days, celebrities as well as common people write a huge amount of blog posts, tweets and comments on the social media. Such social media texts are also written in Indian languages. The research on sentiment analysis in Indian language domain is also at the early stage. In this paper, we present a sentiment polarity detection approach that detects sentiment polarity of Bengali tweets using character n-gram features and a supervised machine learning algorithm called Multinomial Naïve Bayes. Our proposed approach has been tested on the SAIL 2015 dataset. The experimental results show that character n-gram features are more effective than the traditional word n-gram features. The overall performance of our proposed system is also significantly better than some existing sentiment polarity detection systems.
机译:情感是指感觉态度,情感和见解。情感极性检测是最流行的情感分析任务之一。如今,名人和普通百姓在社交媒体上写了大量博客文章,推文和评论。这样的社交媒体文本也用印度语言编写。印度语言领域的情感分析研究也处于早期阶段。在本文中,我们提出了一种情感极性检测方法,该方法使用字符n元语法特征和一种称为MultinomialNaïveBayes的受监督机器学习算法来检测孟加拉语推文的情感极性。我们提出的方法已在SAIL 2015数据集上进行了测试。实验结果表明,字符n-gram特征比传统的单词n-gram特征更有效。我们提出的系统的整体性能也明显优于某些现有的情感极性检测系统。

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