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Comparison of Naive Bayes smoothing methods for Twitter sentiment analysis

机译:比较朴素贝叶斯平滑方法进行Twitter情绪分析

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In sentiment analysis, the absence of sample features in the training data will lead to misclassification. Smoothing is used to overcome this problem. Previous studies show that there are differences in performance obtained by the various smoothing techniques against various types of data. In this paper, we compare the performance of Naive Bayes smoothing methods in improving the performance of sentiment analysis of tweets. The results indicated that Laplace smoothing is superior to Dirichlet smoothing and Absolute Discounting with the micro-average value of F1-Score 0.7234 and macro-average F1-Score 0.7182.
机译:在情绪分析中,训练数据中缺少样本特征将导致分类错误。平滑用于克服此问题。先前的研究表明,针对各种类型的数据,通过各种平滑技术获得的性能存在差异。在本文中,我们比较了朴素贝叶斯平滑方法在改善推文情感分析性能方面的性能。结果表明,拉普拉斯平滑法优于Dirichlet平滑法和绝对贴现法,其微观平均值为F1-Score 0.7234,宏观平均值为F1-Score 0.7182。

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