VecAug: Unveiling Camouflaged Frauds with Cohort Augmentation for Enhanced Detection
Fei Xiao, Shaofeng Cai, Gang Chen, H. V. Jagadish, Beng Chin Ooi,, Meihui Zhang

TL;DR
VecAug introduces a cohort-augmented learning framework that enhances fraud detection by automatically identifying cohorts and aggregating their information, leading to improved detection accuracy and robustness.
Contribution
This paper presents VecAug, a novel framework that automatically identifies cohorts and effectively incorporates their information into fraud detection models, addressing limitations of existing methods.
Findings
VecAug improves AUC by up to 2.48%.
VecAug enhances [email protected] by 22.5%.
Outperforms state-of-the-art methods significantly.
Abstract
Fraud detection presents a challenging task characterized by ever-evolving fraud patterns and scarce labeled data. Existing methods predominantly rely on graph-based or sequence-based approaches. While graph-based approaches connect users through shared entities to capture structural information, they remain vulnerable to fraudsters who can disrupt or manipulate these connections. In contrast, sequence-based approaches analyze users' behavioral patterns, offering robustness against tampering but overlooking the interactions between similar users. Inspired by cohort analysis in retention and healthcare, this paper introduces VecAug, a novel cohort-augmented learning framework that addresses these challenges by enhancing the representation learning of target users with personalized cohort information. To this end, we first propose a vector burn-in technique for automatic cohort…
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Taxonomy
TopicsMisinformation and Its Impacts
MethodsBalanced Selection
