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Deep Learning Approach for Bullying Classification on Twitter Social Media with Indonesian Language

机译:推特社交媒体上使用印尼语的欺凌分类的深度学习方法

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摘要

Cyberbullying is usually through social media intermediaries. The victim of cyberbullying will feel very depressed because of the wide spread of social media that can be seen and accessed by many people and also the privacy of the victim has no meaning, even all the shame and ugliness of the victim can be accessed by many people. The purpose of this study was to analyze the text documents on social media and then classify them into two classes, namely indications of bullying or cleanliness. Word2Vec and LSTM (Long Short Term Memory) will be combined in this classification model. Based on the testing phase, it can be concluded that there is still a lot of bullying on social media, especially on Twitter. This is evident from a large amount of Twitter data that 81.6% contains bullying words or sentences. The results of this study can be used as a basis for social media managers to take decisive action against bullies.
机译:网络欺凌通常是通过社交媒体中介进行的。网络欺凌的受害者会感到沮丧,因为社交媒体的广泛传播可以被许多人看到和访问,而且受害者的隐私也没有任何意义,即使受害者的所有耻辱和丑陋也可以被许多人访问。人们。这项研究的目的是分析社交媒体上的文本文档,然后将它们分为两类,即欺负或清洁的迹象。 Word2Vec和LSTM(长期短期记忆)将合并到此分类模型中。根据测试阶段,可以得出结论,社交媒体上仍然存在很多欺凌行为,特别是在Twitter上。从大量Twitter数据可以明显看出,81.6%包含欺凌的单词或句子。这项研究的结果可以用作社交媒体管理者对欺凌者采取果断行动的基础。

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