首页> 外文会议>Computational Science - ICCS 2007 pt.3; Lecture Notes in Computer Science; 4489 >Harmful Contents Classification Using the Harmful Word Filtering and SVM
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Harmful Contents Classification Using the Harmful Word Filtering and SVM

机译:使用有害词过滤和SVM进行有害内容分类

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As World Wide Web is more popularized nowadays, it is also creating many problems due to uncontrolled flood of information. The pornographic, violent and other harmful information freely available to the youth, who must be protected by the society, or other users who lack the power of judgment or self-control is creating serious social problems. To resolve those harmful words, various methods proposed and studied. This paper proposes and implements the protecting system that protects internet youth user from harmful contents. To effectively classify harmful/harmless contents, this system uses two steps of classification: harmful word filtering and SVM learning based filtering. We achieved result that the average precision of 92.1%.
机译:随着当今万维网的日益普及,由于不受控制的信息泛滥,它也造成了许多问题。必须由社会保护的青年免费获得的色情,暴力和其他有害信息,或者缺乏判断力或自我控制能力的其他用户,正在造成严重的社会问题。为了解决这些有害词,提出并研究了各种方法。本文提出并实现了保护网络青少年用户免受有害内容侵害的保护系统。为了有效地对有害/无害内容进行分类,该系统使用两个分类步骤:有害词过滤和基于SVM学习的过滤。我们取得的结果是平均精度为92.1%。

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