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TEGDetector: A Phishing Detector that Knows Evolving Transaction Behaviors

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arxiv 2111.15446 v1 pith:TB47QD6G submitted 2021-11-26 cs.CR cs.AI

TEGDetector: A Phishing Detector that Knows Evolving Transaction Behaviors

classification cs.CR cs.AI
keywords transactionphishingbehaviorsevolvingtegdetectoraddressesfeaturesaddress
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently, phishing scams have posed a significant threat to blockchains. Phishing detectors direct their efforts in hunting phishing addresses. Most of the detectors extract target addresses' transaction behavior features by random walking or constructing static subgraphs. The random walking methods,unfortunately, usually miss structural information due to limited sampling sequence length, while the static subgraph methods tend to ignore temporal features lying in the evolving transaction behaviors. More importantly, their performance undergoes severe degradation when the malicious users intentionally hide phishing behaviors. To address these challenges, we propose TEGDetector, a dynamic graph classifier that learns the evolving behavior features from transaction evolution graphs (TEGs). First, we cast the transaction series into multiple time slices, capturing the target address's transaction behaviors in different periods. Then, we provide a fast non-parametric phishing detector to narrow down the search space of suspicious addresses. Finally, TEGDetector considers both the spatial and temporal evolutions towards a complete characterization of the evolving transaction behaviors. Moreover, TEGDetector utilizes adaptively learnt time coefficient to pay distinct attention to different periods, which provides several novel insights. Extensive experiments on the large-scale Ethereum transaction dataset demonstrate that the proposed method achieves state-of-the-art detection performance.

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