使用支持向量机和朴素贝叶斯分类Twitter上的色情内容

N. Izzah, I. Budi, Samuel Louvan
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引用次数: 4

摘要

互联网有很多好处,其中一些是获得知识和获得最新的信息。任何人都可以使用互联网,可以包含任何信息,包括负面内容,如色情内容、激进主义、种族不容忍、暴力、欺诈、赌博、安全和毒品。这些内容导致社交媒体上色情内容的儿童受害者人数每年都在增加。在此基础上,它需要一个检测社交媒体上色情内容的系统。本研究旨在确定检测色情内容的最佳模型。模型选择是基于单图和双图特征、分类算法、k-fold交叉验证来确定的。使用的分类算法是支持向量机和朴素贝叶斯。支持向量机、最常用词、单字和双字组合的模型f1得分最高,返回F1-score值为91.14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of pornographic content on Twitter using support vector machine and Naive Bayes
The Internet has many benefits, some of them are to gain knowledge and gain the latest information. The internet can be used by anyone and can contain any information, including negative content such as pornographic content, radicalism, racial intolerance, violence, fraud, gambling, security and drugs. Those contents cause the number of children victims of pornography on social media increasing every year. Based on that, it needs a system that detects pornographic content on social media. This study aims to determine the best model to detect the pornographic content. Model selection is determined based on unigram and bigram features, classification algorithm, k-fold cross validation. The classification algorithm used is Support Vector Machine and Naive Bayes. The highest F1-score is yielded by the model with combination of Support Vector Machine, most common words, and combination of unigram and bigram, which returns F1-Score value of 91.14%.
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