Facilitating Feature and Topology Lightweighting: An Ethereum Transaction Graph Compression Method for Malicious Account Detection
Jiajun Zhou, Xuanze Chen, Shengbo Gong, Chenkai Hu, Chengxiang Jin,, Shanqing Yu, Qi Xuan

TL;DR
This paper introduces TGC4Eth, a graph compression method that enhances the efficiency and robustness of malicious Ethereum account detection by lightweighting features and topology, addressing scalability and attack resilience issues.
Contribution
The paper presents a novel graph compression technique that improves detection efficiency and robustness against evasion attacks in Ethereum transaction analysis.
Findings
Significantly improves computational efficiency of detection models
Preserves transaction graph connectivity after compression
Maintains high robustness against feature evasion attacks
Abstract
Ethereum has become one of the primary global platforms for cryptocurrency, playing an important role in promoting the diversification of the financial ecosystem. However, the relative lag in regulation has led to a proliferation of malicious activities in Ethereum, posing a serious threat to fund security. Existing regulatory methods usually detect malicious accounts through feature engineering or large-scale transaction graph mining. However, due to the immense scale of transaction data and malicious attacks, these methods suffer from inefficiency and low robustness during data processing and anomaly detection. In this regard, we propose an Ethereum Transaction Graph Compression method named TGC4Eth, which assists malicious account detection by lightweighting both features and topology of the transaction graph. At the feature level, we select transaction features based on their low…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications
