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Sentiment Analysis of Social Media Twitter with Case of Anti-LGBT Campaign in Indonesia using Na?ve Bayes, Decision Tree, and Random Forest Algorithm

机译:使用朴素贝叶斯,决策树和随机森林算法的印度尼西亚反LGBT运动案例社交媒体Twitter情感分析

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People use social media as a means to express their thoughts, interests, and opinions on various things. Thousands of submissions occur every day on every social media. Everyone can express their opinions through social media freely. These opinions contain positive, negative and neutral sentiments on a topic. The case study taken by researchers is the Anti-LGBT campaign in Indonesia. The case was taken because the Anti-LGBT campaign was widely discussed by the Indonesian people on Twitter’s social media. If you want to know the tendency of public comments on the Anti-LGBT campaign in Indonesia, is it positive, negative, or neutral, then a sentiment analysis is conducted. The algorithm used in conducting sentiment analysis is Na?ve Bayes because it has a high degree of accuracy in classifying sentiment analysis. The stages in conducting sentiment analysis in this study are preprocessing data, processing data, classification, and evaluation. The sentiment analysis obtained in this study shows that Twitter users in Indonesia give more neutral comments. In this study, an accuracy of 86.43% was obtained from testing data using Na?ve Bayes Algorithm in RapidMiner tools, where the accuracy is higher than the other algorithms, Decision Tree and Random Forest which is 82.91%.
机译:人们使用社交媒体来表达他们对各种事物的想法,兴趣和观点。每个社交媒体上每天都有成千上万的提交。每个人都可以通过社交媒体自由发表意见。这些意见包含对某个主题的积极,消极和中立的情绪。研究人员进行的案例研究是印度尼西亚的反LGBT运动。之所以提起诉讼,是因为印度尼西亚人民在Twitter的社交媒体上广泛讨论了反LGBT运动。如果您想知道在印度尼西亚反LGBT运动中公众评论的趋势是正面,负面还是中立,那么就进行情绪分析。进行情感分析的算法是朴素贝叶斯算法,因为它在情感分析的分类中具有很高的准确性。在这项研究中进行情感分析的阶段是预处理数据,处理数据,分类和评估。这项研究获得的情绪分析表明,印度尼西亚的Twitter用户给出了更为中立的评论。在这项研究中,使用RapidMiner工具中的朴素贝叶斯算法从测试数据中获得的准确性为86.43%,该准确性高于其他算法(决策树和随机森林)的82.91%。

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