黾搜索游侠:走向自主反垃圾邮件搜索引擎

Yi-Min Wang, Ming Ma
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引用次数: 9

摘要

搜索垃圾邮件发送者使用可疑的搜索引擎优化技术来提升他们的垃圾邮件链接到搜索结果的顶部。大规模的垃圾邮件发送者瞄准他们可以赚钱的商业查询,并试图发送尽可能多的这些查询的顶级搜索结果。我们将大规模搜索垃圾邮件问题建模为防御跨多个关键词搜索排名相关攻击的问题,并提出了一种基于自我监控和自我保护的自主反垃圾邮件方法。在这种新方法中,搜索引擎监控并关联它们自己的垃圾邮件发送者目标关键字的搜索结果,以检测成功绕过其当前反垃圾邮件解决方案的大规模垃圾邮件攻击。然后,他们通过有针对性地巡逻垃圾邮件大量的域,有针对性地寻找成功的垃圾邮件的来源,并加强排名算法中的特定弱点来启动自我保护。我们描述了实现这种新方法的strider search ranger系统,并重点介绍了它用于防御一类重要的搜索垃圾邮件——重定向垃圾邮件——作为一般概念的演示。我们通过对实际搜索结果进行测试来评估该系统,并表明它可以检测到有用的垃圾邮件模式,并为所有三个主要搜索引擎消除大量的垃圾邮件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strider Search Ranger: Towards an Autonomic Anti-Spam Search Engine
Search spammers use questionable search engine optimization techniques to promote their spam links into top search results. Large-scale spammers target commerce queries that they can monetize and attempt to spam as many top search results of those queries as possible. We model the large-scale search spam problem as that of defending against correlated attacks on search rankings across multiple keywords, and propose an autonomic anti-spam approach based on self-monitoring and self- protection. In this new approach, search engines monitor and correlate their own search results of spammer-targeted keywords to detect large-scale spam attacks that have successfully bypassed their current anti-spam solutions. They then initiate self-protection through targeted patrol of spam-heavy domains, targeted hunting at the sources of successful spam, and strengthening of specific weakness in the ranking algorithms. We describe the strider search ranger system which implements this new approach, and focus on its use to defend against an important class of search spam - the redirection spam - as a demonstration of the general concept. We evaluate the system by testing it against actual search results and show that it can detect useful spam patterns and eliminate a significant amount of spam for all three major search engines.
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