AdInject: Real-World Black-Box Attacks on Web Agents via Advertising Delivery
Haowei Wang, Junjie Wang, Xiaojun Jia, Rupeng Zhang, Mingyang Li, Zhe Liu, Yang Liu, Qing Wang

TL;DR
AdInject introduces a realistic black-box attack method exploiting internet advertising delivery to inject malicious content into Web Agents, revealing a critical security vulnerability in their deployment.
Contribution
It presents the first practical attack leveraging advertising channels to compromise Web Agents without prior knowledge or unrealistic assumptions.
Findings
Attack success rates exceed 60% in most scenarios.
AdInject demonstrates near 100% success in certain cases.
Reveals advertising as a potent attack vector for Web Agents.
Abstract
Vision-Language Model (VLM) based Web Agents represent a significant step towards automating complex tasks by simulating human-like interaction with websites. However, their deployment in uncontrolled web environments introduces significant security vulnerabilities. Existing research on adversarial environmental injection attacks often relies on unrealistic assumptions, such as direct HTML manipulation, knowledge of user intent, or access to agent model parameters, limiting their practical applicability. In this paper, we propose AdInject, a novel and real-world black-box attack method that leverages the internet advertising delivery to inject malicious content into the Web Agent's environment. AdInject operates under a significantly more realistic threat model than prior work, assuming a black-box agent, static malicious content constraints, and no specific knowledge of user intent.…
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Taxonomy
TopicsSpam and Phishing Detection · Network Security and Intrusion Detection · Advanced Malware Detection Techniques
