SEFraud: Graph-based Self-Explainable Fraud Detection via Interpretative Mask Learning
Kaidi Li, Tianmeng Yang, Min Zhou, Jiahao Meng, Shendi Wang, Yihui Wu,, Boshuai Tan, Hu Song, Lujia Pan, Fan Yu, Zhenli Sheng, Yunhai Tong

TL;DR
SEFraud is a graph-based, self-explainable fraud detection framework that improves detection accuracy and interpretability simultaneously, suitable for large-scale industrial applications.
Contribution
It introduces a novel self-explainable fraud detection model with learnable feature and edge masks, enhancing both detection performance and interpretability.
Findings
Effective in detecting fraud with high accuracy.
Provides explanations aligned with expert understanding.
Successfully deployed in a major bank's real-world environment.
Abstract
Graph-based fraud detection has widespread application in modern industry scenarios, such as spam review and malicious account detection. While considerable efforts have been devoted to designing adequate fraud detectors, the interpretability of their results has often been overlooked. Previous works have attempted to generate explanations for specific instances using post-hoc explaining methods such as a GNNExplainer. However, post-hoc explanations can not facilitate the model predictions and the computational cost of these methods cannot meet practical requirements, thus limiting their application in real-world scenarios. To address these issues, we propose SEFraud, a novel graph-based self-explainable fraud detection framework that simultaneously tackles fraud detection and result in interpretability. Concretely, SEFraud first leverages customized heterogeneous graph transformer…
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Taxonomy
TopicsImbalanced Data Classification Techniques · Authorship Attribution and Profiling · Artificial Intelligence in Law
Methodstravel james · Attention Is All You Need · Linear Layer · Multi-Head Attention · Residual Connection · Softmax · Layer Normalization · Laplacian EigenMap · Byte Pair Encoding · Label Smoothing
