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Bibliographic Details
Main Authors: Bai, Songran, Zheng, Xiaolong, Zeng, Daniel Dajun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.02248
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author Bai, Songran
Zheng, Xiaolong
Zeng, Daniel Dajun
author_facet Bai, Songran
Zheng, Xiaolong
Zeng, Daniel Dajun
contents Graph Anomaly Detection (GAD) is critical in security-sensitive domains, yet faces reliability challenges: miscalibrated confidence estimation (underconfidence in normal nodes, overconfidence in anomalies), adversarial vulnerability of derived confidence score under structural perturbations, and limited efficacy of conventional calibration methods for sparse anomaly patterns. Thus we propose CRC-SGAD, a framework integrating statistical risk control into GAD via two innovations: (1) A Dual-Threshold Conformal Risk Control mechanism that provides theoretically guaranteed bounds for both False Negative Rate (FNR) and False Positive Rate (FPR) through providing prediction sets; (2) A Subgraph-aware Spectral Graph Neural Calibrator (SSGNC) that optimizes node representations through adaptive spectral filtering while reducing the size of prediction sets via hybrid loss optimization. Experiments on four datasets and five GAD models demonstrate statistically significant improvements in FNR and FPR control and prediction set size. CRC-SGAD establishes a paradigm for statistically rigorous anomaly detection in graph-structured security applications.
format Preprint
id arxiv_https___arxiv_org_abs_2504_02248
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CRC-SGAD: Conformal Risk Control for Supervised Graph Anomaly Detection
Bai, Songran
Zheng, Xiaolong
Zeng, Daniel Dajun
Machine Learning
Graph Anomaly Detection (GAD) is critical in security-sensitive domains, yet faces reliability challenges: miscalibrated confidence estimation (underconfidence in normal nodes, overconfidence in anomalies), adversarial vulnerability of derived confidence score under structural perturbations, and limited efficacy of conventional calibration methods for sparse anomaly patterns. Thus we propose CRC-SGAD, a framework integrating statistical risk control into GAD via two innovations: (1) A Dual-Threshold Conformal Risk Control mechanism that provides theoretically guaranteed bounds for both False Negative Rate (FNR) and False Positive Rate (FPR) through providing prediction sets; (2) A Subgraph-aware Spectral Graph Neural Calibrator (SSGNC) that optimizes node representations through adaptive spectral filtering while reducing the size of prediction sets via hybrid loss optimization. Experiments on four datasets and five GAD models demonstrate statistically significant improvements in FNR and FPR control and prediction set size. CRC-SGAD establishes a paradigm for statistically rigorous anomaly detection in graph-structured security applications.
title CRC-SGAD: Conformal Risk Control for Supervised Graph Anomaly Detection
topic Machine Learning
url https://arxiv.org/abs/2504.02248