2021
DOI: 10.48550/arxiv.2111.05792
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HARPO: Learning to Subvert Online Behavioral Advertising

Jiang Zhang,
Konstantinos Psounis,
Muhammad Haroon
et al.

Abstract: Online behavioral advertising, and the associated tracking paraphernalia, poses a real privacy threat. Unfortunately, existing privacy-enhancing tools are not always effective against online advertising and tracking. We propose HARPO, a principled learning-based approach to subvert online behavioral advertising through obfuscation. HARPO uses reinforcement learning to adaptively interleave real page visits with fake pages to distort a tracker's view of a user's browsing profile. We evaluate HARPO against real-… Show more

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