Prediksi Ujaran Kebencian Berbasis Text Pada Sosial Media Menggunakan Metode Neural Network

Kristiawan Nugroho, Endang Tjahjaningsih, Lie Liana, Raden Mohamad Herdian Bhakti
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引用次数: 0

Abstract

Currently information technology has helped in various forms of human life. They can communicate with each other through various electronic media, including using social media. The number of social media users is increasing from year to year in Indonesia. However, the development of the use of social media has also resulted in various problems, including hate speech, which will eventually lead to legal consequences. Various methods have been taken to limit the development of hate speech, including by blocking users who write hate speech on social media applications. Limiting the use of social media for hate speech can be more optimally carried out by detecting text-based words that have the potential to become hate speech. This study uses the Neural Network (NN) method to predict words that contain hatespeech on social media with an accuracy rate of 73% better than other methods such as Decission Tree and K-Nearest Neighbor (KNN) which only achieve an accuracy rate of 68.5 %.
基于文本的社交媒体仇恨言论的预测使用了神经网络
目前,信息技术已经为人类生活的各种形式提供了帮助。他们可以通过各种电子媒体相互交流,包括使用社交媒体。印尼的社交媒体用户数量每年都在增长。然而,社交媒体使用的发展也导致了各种各样的问题,包括仇恨言论,最终会导致法律后果。已经采取了各种方法来限制仇恨言论的发展,包括阻止在社交媒体应用程序上撰写仇恨言论的用户。通过检测有可能成为仇恨言论的基于文本的单词,可以更有效地限制社交媒体对仇恨言论的使用。本研究使用神经网络(NN)方法预测社交媒体上包含仇恨言论的单词,准确率为73%,优于决策树(decision Tree)和k -最近邻(KNN)等其他方法,准确率仅为68.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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