Title | Good Bot, Bad Bot: Characterizing Automated Browsing Activity |
Publication Type | Conference Paper |
Year of Publication | 2021 |
Authors | Li, Xigao, Azad, Babak Amin, Rahmati, Amir, Nikiforakis, Nick |
Conference Name | 2021 IEEE Symposium on Security and Privacy (SP) |
Date Published | may |
Keywords | Bot (Internet), Browsers, compositionality, Fingerprint recognition, Heuristic algorithms, Human Behavior, Libraries, Malware-and-unwanted-software, Metrics, pubcrawl, resilience, Resiliency, Software, Tools, Web Browser Security, web-security |
Abstract | As the web keeps increasing in size, the number of vulnerable and poorly-managed websites increases commensurately. Attackers rely on armies of malicious bots to discover these vulnerable websites, compromising their servers, and exfiltrating sensitive user data. It is, therefore, crucial for the security of the web to understand the population and behavior of malicious bots.In this paper, we report on the design, implementation, and results of Aristaeus, a system for deploying large numbers of "honeysites", i.e., websites that exist for the sole purpose of attracting and recording bot traffic. Through a seven-month-long experiment with 100 dedicated honeysites, Aristaeus recorded 26.4 million requests sent by more than 287K unique IP addresses, with 76,396 of them belonging to clearly malicious bots. By analyzing the type of requests and payloads that these bots send, we discover that the average honeysite received more than 37K requests each month, with more than 50% of these requests attempting to brute-force credentials, fingerprint the deployed web applications, and exploit large numbers of different vulnerabilities. By comparing the declared identity of these bots with their TLS handshakes and HTTP headers, we uncover that more than 86.2% of bots are claiming to be Mozilla Firefox and Google Chrome, yet are built on simple HTTP libraries and command-line tools. |
DOI | 10.1109/SP40001.2021.00079 |
Citation Key | li_good_2021 |