结合网络日志和鼠标行为生物识别技术检测高级网络机器人

Christos Iliou, Theodoros Kostoulas, T. Tsikrika, Vasilis Katos, S. Vrochidis, I. Kompatsiaris
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引用次数: 8

摘要

网络机器人的复杂程度取决于它们的目的,从简单的自动化脚本到具有浏览器指纹、支持主要浏览器功能并表现出类似人类行为的高级网络机器人。高级网络机器人对恶意网络机器人创建者尤其有吸引力,因为它们类似浏览器的指纹和类似人类的行为降低了它们的可探测性。这项工作提出了一个网络机器人检测框架,包括两个检测模块:(i)利用网络日志的检测模块,(ii)利用鼠标运动的检测模块。该框架以一种新颖的方式将每个模块的结果结合起来,以捕捉网络日志和鼠标运动的不同时间特征,以及鼠标运动的空间特征。我们评估了其对两种规避程度的网络机器人的有效性:(a)具有浏览器指纹的中度网络机器人和(b)具有浏览器指纹并表现出类似人类行为的高级网络机器人。我们表明,将网络日志与访问者的鼠标移动相结合,对于检测试图逃避检测的高级网络机器人更有效、更健壮,而不是只使用其中一种方法。
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Detection of Advanced Web Bots by Combining Web Logs with Mouse Behavioural Biometrics
Web bots vary in sophistication based on their purpose, ranging from simple automated scripts to advanced web bots that have a browser fingerprint, support the main browser functionalities, and exhibit a humanlike behaviour. Advanced web bots are especially appealing to malicious web bot creators, due to their browserlike fingerprint and humanlike behaviour that reduce their detectability. This work proposes a web bot detection framework that comprises two detection modules: (i) a detection module that utilises web logs, and (ii) a detection module that leverages mouse movements. The framework combines the results of each module in a novel way to capture the different temporal characteristics of the web logs and the mouse movements, as well as the spatial characteristics of the mouse movements. We assess its effectiveness on web bots of two levels of evasiveness: (a) moderate web bots that have a browser fingerprint and (b) advanced web bots that have a browser fingerprint and also exhibit a humanlike behaviour. We show that combining web logs with visitors’ mouse movements is more effective and robust toward detecting advanced web bots that try to evade detection, as opposed to using only one of those approaches.
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