HitFraud: A Broad Learning Approach for Collective Fraud Detection in Heterogeneous Information Networks
Bokai Cao, Mia Mao, Siim Viidu, Philip S. Yu

TL;DR
HitFraud introduces a graph-based collective fraud detection method using heterogeneous information networks, significantly improving detection accuracy by capturing inter-transaction relationships and behaviors.
Contribution
The paper presents a novel broad learning approach leveraging heterogeneous information networks and meta-paths for collective fraud detection in transaction data.
Findings
Recall improved by up to 7.93%
F-score increased by 4.62%
Fast convergence with optimized meta-path features
Abstract
On electronic game platforms, different payment transactions have different levels of risk. Risk is generally higher for digital goods in e-commerce. However, it differs based on product and its popularity, the offer type (packaged game, virtual currency to a game or subscription service), storefront and geography. Existing fraud policies and models make decisions independently for each transaction based on transaction attributes, payment velocities, user characteristics, and other relevant information. However, suspicious transactions may still evade detection and hence we propose a broad learning approach leveraging a graph based perspective to uncover relationships among suspicious transactions, i.e., inter-transaction dependency. Our focus is to detect suspicious transactions by capturing common fraudulent behaviors that would not be considered suspicious when being considered in…
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Taxonomy
TopicsSpam and Phishing Detection · Cybercrime and Law Enforcement Studies · Sentiment Analysis and Opinion Mining
