区分真正的网络爬虫和假货:Googlebot的例子

Nilani Algiryage
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引用次数: 6

摘要

网络爬虫是一种程序或自动脚本,它系统地扫描网页以创建索引。谷歌、必应等搜索引擎使用爬虫程序,以便向网络冲浪者提供相关信息。今天也有许多爬虫模仿知名的网络爬虫。例如,据观察,谷歌的Googlebot爬虫在很大程度上被模仿。这引起了道德和安全方面的担忧,因为它们可能被用于恶意目的。在本文中,我们提出了一种有效的方法,通过分析web访问日志来检测假Googlebot爬虫。我们建议使用马尔可夫链模型来学习真实和虚假谷歌机器人基于他们的web资源访问序列模式的概况。我们已经为一组给定的爬虫会话计算了对数赔率比,我们的结果表明,对数赔率得分越高,给定序列来自真实Googlebot的概率就越高。实验结果表明,在阈值对数赔率下,我们可以区分出真实的Googlebot和假的Googlebot。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distinguishing Real Web Crawlers from Fakes: Googlebot Example
Web crawlers are programs or automated scripts that scan web pages methodically to create indexes. Search engines such as Google, Bing use crawlers in order to provide web surfers with relevant information. Today there are also many crawlers that impersonate well-known web crawlers. For example, it has been observed that Google’s Googlebot crawler is impersonated to a high degree. This raises ethical and security concerns as they can potentially be used for malicious purposes. In this paper, we present an effective methodology to detect fake Googlebot crawlers by analyzing web access logs. We propose using Markov chain models to learn profiles of real and fake Googlebots based on their patterns of web resource access sequences. We have calculated log-odds ratios for a given set of crawler sessions and our results show that the higher the log-odds score, the higher the probability that a given sequence comes from the real Googlebot. Experimental results show, at a threshold log-odds score we can distinguish the real Googlebot from the fake.
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