Sentiment Analysis of Bjorka Hacker Using the Naive Bayes and C.45 Algorithms

Wowon Priatna, Eka Nur A’ini, Joni Warta, Agus Hidayat, Tyastuti Sri Lestari, Rasim
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Abstract

In 2023, Indonesia was again devastated by a hacker known as Bjorka. Bjorka did not act just once or twice; every time, Bjorka made the entire Indonesian population proud. The 19 million BPJS Employment data belonging to the Indonesian people that Bjorka hacked is the BPJS Employment data belonging to the Indonesian people that Bjorka hacked. Since the release of the Bjorka story, there has been a surge in the number of people criticizing it on social media, particularly Facebook, so the criticism or opinions can be used to conduct sentiment analysis. Based on this, developing a method that can automatically classify beliefs into positive and negative categories through sentiment analysis is necessary. The sentiment analysis process begins with data preprocessing, followed by keyword analysis using the TF-IDF method, algorithm development, and analysis of classification results. The data classification methods used in this study are Naive Bayes and C4.5. The data will be analyzed using text mining and classified using the Naive Bayes and C4.5 algorithms. Based on the results of the tests, the best classification was achieved by Nave Bayes, with a score of 70 percent for the C4.5 algorithm and 68 percent for the C4.5 algorithm. The Nave Bayes algorithm can predict up to 70% data transmission rates for both positive and negative signals.
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使用 Naive Bayes 和 C.45 算法对 Bjorka 黑客进行情感分析
2023 年,印度尼西亚再次遭到名为比约卡的黑客的破坏。Bjorka 的所作所为并非一次两次,每一次,Bjorka 都让全体印尼人民引以为豪。被 Bjorka 黑掉的属于印尼人民的 1900 万 BPJS 就业数据,就是被 Bjorka 黑掉的属于印尼人民的 BPJS 就业数据。自Bjorka事件发布以来,在社交媒体尤其是Facebook上对其进行批评的人数激增,因此可以利用这些批评或意见进行情感分析。在此基础上,有必要开发一种方法,通过情感分析自动将信念分为积极和消极两类。情感分析过程首先是数据预处理,然后是使用 TF-IDF 方法进行关键词分析、算法开发和分类结果分析。本研究使用的数据分类方法是 Naive Bayes 和 C4.5。数据将使用文本挖掘法进行分析,并使用 Naive Bayes 和 C4.5 算法进行分类。根据测试结果,Nave Bayes 的分类效果最好,C4.5 算法的得分率为 70%,C4.5 算法的得分率为 68%。Nave Bayes 算法对正负信号的数据传输率预测高达 70%。
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