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Content-based analysis to detect Arabic web spam

机译:基于内容的分析以检测阿拉伯网络垃圾邮件

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摘要

Search engines are important outlets for information query and retrieval. The/ have to deal with the continual increase of information available on the web, and provide users with convenient access to such huge amounts of information. Furthermore, with this huge amount of information, a more complex challenge that continuously gets more and more difficult to illuminate is the spam in web pages. For several reasons, web spammers try to intrude in the search results and inject artificially biased results in favour of their websites or pages. Spam pages are added to the internet on a daily basis, thus making it difficult for search engines to keep up with the fast-growing and dynamic nature of the web, especially since spammers tend to add more keywords to their websites to deceive the search engines and increase the rank of their pages. In this research, we have investigated four different classification algorithms (naive Bayes, decision tree, SVM and K-NN) to detect Arabic web spam pages, based on content The three groups of datasets used, with I %, 15% and 50% spam contents, were collected using a crawler that was customized for this study. Spam pages were classified manually. Different tests and comparisons have revealed that the Decision Tree was the best classifier for this purpose.
机译:搜索引擎是信息查询和检索的重要渠道。 /必须处理网络上可用信息的不断增加,并为用户提供对如此大量信息的便捷访问。此外,由于拥有如此大量的信息,网页中的垃圾邮件是一个越来越复杂的挑战,不断变得越来越难以阐明。由于多种原因,网络垃圾邮件散布者试图侵入搜索结果,并人为地注入偏向他们的网站或页面的结果。垃圾邮件页面每天都会添加到互联网上,从而使搜索引擎难以跟上网络快速增长和动态变化的趋势,尤其是因为垃圾邮件发送者倾向于在其网站上添加更多关键字来欺骗搜索引擎并提高他们网页的排名。在这项研究中,我们研究了四种基于内容的分类算法(朴素贝叶斯,决策树,SVM和K-NN)以检测阿拉伯网络垃圾邮件页面使用的三组数据集,分别为I%,15%和50%垃圾邮件内容是使用针对该研究定制的爬虫收集的。垃圾邮件页面是手动分类的。不同的测试和比较表明,决策树是用于此目的的最佳分类器。

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