使用naïve基于词袋和基于词汇的特征的贝叶斯分类器检测Instagram上的网络骚扰(网络欺凌)

P. P. Adikara, Sigit Adinugroho, Salsabila Insani
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引用次数: 7

摘要

Instagram是世界上非常受欢迎的社交媒体,用户从青少年到成年人都有。通过使用Instagram,人们可以通过社交网络分享照片或视频。Instagram也提供了很多功能,其中一个功能就是评论区。然而,有太多的Instagram用户将社交媒体作为骚扰他人的平台。欺凌或骚扰会影响心理状况,在极端情况下会导致人们自杀。本研究的重点是将Instagram评论上的网络欺凌分为两类,一类是网络欺凌,另一类是非网络欺凌。如果我们能够成功地发现网络欺凌评论,它应该有助于防止网络欺凌行为发生之前。检测过程包括几个步骤,首先是预处理,然后是特征提取,最后是分类,在本例中是网络欺凌检测。本研究采用Naïve贝叶斯分类器结合Bag of Words和基于Lexicon的特征来检测网络欺凌。词袋特征是从评论中出现的术语中提取的,基于词典的特征是通过使用词典或通常称为情感词典提取的。由于印尼语是一种低资源语言,因此使用印尼语数据集来研究这个主题是有趣的,也是具有挑战性的。在本实验中,将Bag of Word特征与基于lexicon的特征结合使用比单独使用这些特征获得了最高的评价结果。我们使用5倍交叉验证,系统的准确度为0.872,精密度为0.948,召回率为0.824,f-measure为0.874。
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Detection of cyber harassment (cyberbullying) on Instagram using naïve bayes classifier with bag of words and lexicon based features
Instagram is a very popular social media across the world, with varied users from teenagers to adults. By using Instagram people are able to share photos or videos through social networks. Instagram also provides a lot of features, one of the features is the comment section. However, there are so many Instagram users who make social media as a platform to harass others. Bullying or harassing can affect the psychological condition and in the extreme condition can drive people to suicide. The focus of this research is to detect cyberbullying on Instagram comment into two classes, one is classified as cyberbullying and the other is non-cyberbullying. If we can successfully detect cyberbullying comment, it should help to prevent the cyberbullying act before it happens. The detection process consists of several steps, starts with preprocessing, followed by feature extraction, and the last is classification or in this case, cyberbullying detection. In this research, Naïve Bayes classifier with Bag of Words and Lexicon based features is employed to detect the cyberbullying. The Bag of Words features are extracted from the terms occurred in the comment and Lexicon-based features are extracted by using a dictionary or commonly known as sentiment lexicon. Since Indonesian is a low resource language, it is interesting and challenging to investigate this topic by using Indonesian dataset. In this experiment, the highest evaluation results are obtained by combining Bag of Word features and Lexicon-based features than using the features independently. We use 5-fold cross-validation and the system yields accuracy 0.872, precision 0.948, recall 0.824, and f-measure 0.874.
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