SILGApr 5, 2017

The Many Faces of Link Fraud

arXiv:1704.01420v336 citations
Originality Incremental advance
AI Analysis

This work addresses the issue of fraud detection for social network platforms by revealing multimodality in fraudulent behaviors, which is an incremental advance over past methods that assumed a single fraud type.

The study tackled the problem of detecting multiple types of link fraud in social networks by setting up honeypots and buying fake followers, discovering and characterizing several fraud behaviors and achieving high classification accuracy with precision/recall over 0.95.

Most past work on social network link fraud detection tries to separate genuine users from fraudsters, implicitly assuming that there is only one type of fraudulent behavior. But is this assumption true? And, in either case, what are the characteristics of such fraudulent behaviors? In this work, we set up honeypots ("dummy" social network accounts), and buy fake followers (after careful IRB approval). We report the signs of such behaviors including oddities in local network connectivity, account attributes, and similarities and differences across fraud providers. Most valuably, we discover and characterize several types of fraud behaviors. We discuss how to leverage our insights in practice by engineering strongly performing entropy-based features and demonstrating high classification accuracy. Our contributions are (a) instrumentation: we detail our experimental setup and carefully engineered data collection process to scrape Twitter data while respecting API rate-limits, (b) observations on fraud multimodality: we analyze our honeypot fraudster ecosystem and give surprising insights into the multifaceted behaviors of these fraudster types, and (c) features: we propose novel features that give strong (>0.95 precision/recall) discriminative power on ground-truth Twitter data.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes