Anomalous Edge Detection in Edge Exchangeable Social Network Models
Rui Luo,
Buddhika Nettasinghe,
Vikram Krishnamurthy
Abstract:This paper studies detecting anomalous edges in directed graphs that model social networks. We exploit edge exchangeability as a criterion for distinguishing anomalous edges from normal edges. Then we present an anomaly detector based on conformal prediction theory; this detector has a guaranteed upper bound for false positive rate. In numerical experiments, we show that the proposed algorithm achieves superior performance to baseline methods.
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