Comparison of SVM and Naïve Bayes Algorithms with InNER enriched to Predict Hate Speech
Isnen HADİ AL GHOZALİ,
Arif PİRMAN,
Indra INDRA
Abstract:Hate speech is one of the negative sides of social media abuse. Hate speech can be classified into insults, defamation, unpleasant acts, provoking, inciting, and spreading fake news (hoax). The purpose of this study is to compare the SVM and Naïve Bayes methods with feature extraction in the form of Indonesian NER (InNER) for detecting hate speech. To obtain the best model, this study applies five steps: a) data collection; b) data preprocessing; c) feature engineering; d) model development; and e) evaluating … Show more
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