Clicktok: Click Fraud Detection using Traffic Analysis
Shishir Nagaraja, Ryan Shah

TL;DR
Clicktok introduces novel traffic analysis techniques, including mimicry and bait-click defenses, to detect and prevent sophisticated click fraud attacks with high accuracy and low false positives, surpassing existing methods.
Contribution
The paper presents two innovative inference-based methods for click fraud detection, leveraging click reuse patterns and bait-click injection from ad-network vantage points.
Findings
Mimicry defence detects 81% of stealthy fake clicks with low false positives.
Bait-click defence achieves 95% detection rate with significantly reduced false positives.
Methods outperform current click fraud detection approaches.
Abstract
Advertising is a primary means for revenue generation for millions of websites and smartphone apps (publishers). Naturally, a fraction of publishers abuse the ad-network to systematically defraud advertisers of their money. Defenses have matured to overcome some forms of click fraud but are inadequate against the threat of organic click fraud attacks. Malware detection systems including honeypots fail to stop click fraud apps; ad-network filters are better but measurement studies have reported that a third of the clicks supplied by ad-networks are fake; collaborations between ad-networks and app stores that bad-lists malicious apps works better still, but fails to prevent criminals from writing fraudulent apps which they monetise until they get banned and start over again. This work develops novel inference techniques that can isolate click fraud attacks using their fundamental…
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Taxonomy
TopicsInternet Traffic Analysis and Secure E-voting · Spam and Phishing Detection · Advanced Malware Detection Techniques
