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Sentiment Analysis of Tweets Using Naieve Bayes, KNN, and Decision Tree

机译:使用Naive Bayes,Knn和决策树的推文的情感分析

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Making use of social media for analyzing the perceptions of the masses over a product, event, or a person has gained momentum in recent times. Out of a wide array of social networks, the authors chose Twitter for their analysis as the opinions expressed there are concise and bear a distinctive polarity. Sentiment analysis is an approach to analyze data and retrieve sentiment that it embodies. The paper elaborately discusses three supervised machine learning algorithms—naïve bayes, k-nearest neighbor (KNN), and decision tree—and compares their overall accuracy, precision, as well as recall values, f-measure, number of tweets correctly classified, number of tweets incorrectly classified, and execution time.
机译:利用社交媒体来分析产品,活动,事件的群众的看法,或者在近期获得动力。除了广泛的社交网络中,作者选择了Twitter的分析,因为表达的意见有简明并具有独特的极性。情绪分析是一种分析数据和检索它所体现的情绪的方法。本文精心讨论三种监督机器学习算法 - 天真贝叶斯,k最近邻居(knn)和决策树 - 并比较其整体准确性,精度,以及召回值,F-Measure,Tweets的数量正确分类,数字推文的典型分类和执行时间。

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