Support Vector Machine VS Information Gain: Analisis Sentimen Cyberbullying di Twitter Indonesia

Christevan Destitus, Wella Wella, Suryasari Suryasari
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引用次数: 3

Abstract

This study aims to clarify tweets on twitter using the Support Vector Machine and Information Gain methods. The clarification itself aims to find a hyperplane that separates the negative and positive classes. In the research stage, there is a system process, namely text mining, text processing which has stages of tokenizing, filtering, stemming, and term weighting. After that, a feature selection is made by information gain which calculates the entropy value of each word. After that, clarify based on the features that have been selected and the output is in the form of identifying whether the tweet is bully or not. The results of this study found that the Support Vector Machine and Information Gain methods have sufficiently maximum results.
支持向量机VS信息增益:情感分析
本研究旨在利用支持向量机和信息增益方法澄清twitter上的推文。澄清本身的目的是找到一个超平面,将消极和积极的类别分开。在研究阶段,有一个系统的过程,即文本挖掘,文本处理包括标记化、过滤、词干提取和术语加权等阶段。然后,通过计算每个词的熵值的信息增益进行特征选择。之后,根据已经选择的特征进行澄清,输出的形式是识别该推文是否为霸凌。研究结果表明,支持向量机方法和信息增益方法具有足够大的效果。
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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