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Twitter sentiment classification using Naive Bayes based on trainer perception

机译:基于培训师的幼稚贝叶斯的推特情绪分类

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This paper presents strategy to classify tweets sentiment using Naive Bayes techniques based on trainers' perception into three categories; positive, negative or neutral. 50 tweets of ???Malaysia??? and ???Maybank??? keywords were selected from Twitter for perception training. In this study, there were 27 trainers participated. Each trainer was asked to classify the sentiment of 25 tweets of each keyword. Results from the classification training was then be used as the input for Naive Bayes training for the remaining 25 tweets. The trainers were then asked to validate the results of sentiment classification by the Naive Bayes technique. The accuracy of this study is 90% ?? 14% measured by total number of correct per total classified tweets.
机译:本文介绍了使用Naive Bayes Technes基于培训师对三个类别的幼稚贝叶斯技术进行分类的策略;积极,消极或中性。 50次推文???马来西亚???和??? maybank ???从Twitter中选择关键字以进行感知培训。在这项研究中,有27个培训师参加。每个培训师都被要求对每个关键字的25个推文进行分类。分类培训的结果被用作剩下的25条推文的天真贝叶斯训练的投入。然后,培训师被要求通过Naive Bayes技术验证情绪分类的结果。本研究的准确性为90%??每次分类推文的总数测量14%。

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