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Precursory Analysis of Attack-Log Time Series by Machine Learning for Detecting Bots in CAPTCHA

机译:机器学习检测验证码机器机器人的攻击时间序列的前兆分析

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CAPTCHA (Completely Automated Public Turing test to tell Computers and Humans Apart) is commonly utilized as a technology for avoiding attacks to Web sites by bots. State-of-the-art CAPTCHAs vary in difficulty based on the client’s behavior, allowing for efficient bot detection without sacrificing simplicity. In this research, we focus on detecting bots by supervised machine learning from access-log time series in the past. We have analysed access logs to several Web services which are using a commercial cloud-based CAPTCHA service, Capy Puzzle CAPTCHA. Experiments show that bot detection in attacks over a month can be performed with high accuracy by precursory analysis of the access log in only the first day as training data. In addition, we have manually analyzed the data that are found to be False Positive in the discrimination results, and it is found that the proposed model actually detects access by bots, which had been overlooked in the first-stage manual discrimination of flags in preparation of training data.
机译:CAPTCHA(完全自动化的公共图灵测试,告诉计算机和人类分开)通常用作避免BOTS对网站攻击的技术。最先进的CAPTCHAS在客户的行为中难以困难,允许有效的机器人检测而不牺牲简单性。在这项研究中,我们专注于过去从访问日志时间序列的监督机器学习侦察机器人。我们已经分析了访问日志到几个使用基于云的CAPTCHA服务的Web服务,Capy Puzze Captcha。实验表明,在仅作为训练数据的第一天的访问日志的前兆分析,可以高精度地执行攻击的机器人检测。此外,我们手动分析了在歧视结果中发现的虚假阳性的数据,并且发现该模型实际上检测到机器人的访问,这些机器人被忽视了在准备中的旗帜的第一阶段手动判断中被忽视训练数据。

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