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Surabaya Government Performance Evaluation Using Tweet Analysis

机译:泗水政府绩效评估使用推文分析

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The purpose of this research is to determine the various positive attributes appreciated by the public, and the negative things that need to be improved by the Surabaya government. The sentiment analysis methods, including the Na?ve Bayes Classifier, Support Vector Machine, and Logistic Regression, are employed to classify the pros and cons of the Surabaya government. The comparison of the three methods demonstrated that SVM gives the best classification accuracy compared to others. Police performance is the highlighted word in the positive category, while traffic congestion is in the negative .
机译:本研究的目的是确定公众赞赏的各种积极属性,以及泗水政府需要改善的消极事物。包括Na'Ve Bayes分类器,支持向量机和逻辑回归的情感分析方法,用于分类Surabaya政府的利弊。三种方法的比较表明,与他人相比,SVM提供了最佳分类精度。警察表现是正类别中的突出显示的词,而交通拥堵则处于负面。

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