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Sentiment analysis of economic news in Bahasa Indonesia using majority vote classifier

机译:使用多数投票分类的印度尼西亚语中经济新闻的情绪分析

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摘要

Internet acts as a media to publicite news, which divided into various categories, such as politics, economics, sports, and health. Each has tendency to publish the news with positive or negative sentiment. News sentiment has ability to affect people's opinion about a topic or government policy. Economy is one interesting topic which has direct impact to Indonesian citizen. Hence, this research focused on economic news from Indonesian online media. This research tested the performance of some classifiers to classify the news in Bahasa Indonesia from various online news media. Popular classifiers such as decision tree, random forests, and support vector machine will be compared each other. After that, they will be combined using majority vote classifier. Majority vote classifier votes the result between them, the voted result then compared again with the other three classifiers. Experiments has been made by this research by combining parameters and classifiers, concluded that combining multiple classifier using Majority Vote scoring better precision and accuracy than decision tree, random forests, and support vector machine alone.
机译:互联网充当发布新闻的媒介,新闻分为政治,经济,体育和健康等多个类别。每个人都有以积极或消极情绪发布新闻的趋势。新闻情绪具有影响人们对某个主题或政府政策的看法的能力。经济是一个有趣的话题,它直接影响印尼公民。因此,这项研究集中于印尼在线媒体的经济新闻。这项研究测试了一些分类器的性能,以对来自各种在线新闻媒体的印尼语中的新闻进行分类。流行的分类器(例如决策树,随机森林和支持向量机)将相互比较。之后,将使用多数投票分类器将它们合并。多数投票分类器对它们之间的结果进行投票,然后将投票结果与其他三个分类器再次进行比较。这项研究通过组合参数和分类器进行了实验,得出的结论是,与多数决策树,随机森林和支持向量机相比,使用多数投票组合多个分类器的准确性和准确性更高。

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