Leveraging Ensemble-Based Semi-Supervised Learning for Illicit Account Detection in Ethereum DeFi Transactions
- URL: http://arxiv.org/abs/2412.02408v1
- Date: Tue, 03 Dec 2024 12:03:13 GMT
- Title: Leveraging Ensemble-Based Semi-Supervised Learning for Illicit Account Detection in Ethereum DeFi Transactions
- Authors: Shabnam Fazliani, Mohammad Mowlavi Sorond, Arsalan Masoudifard,
- Abstract summary: Decentralized Finance (DeFi) has introduced significant security risks, including the proliferation of illicit accounts.
Traditional detection methods are limited by the scarcity of labeled data and the evolving tactics of malicious actors.
We propose a novel Self-Learning Ensemble-based Illicit account Detection framework to address these challenges.
- Score: 0.0
- License:
- Abstract: The advent of smart contracts has enabled the rapid rise of Decentralized Finance (DeFi) on the Ethereum blockchain, offering substantial rewards in financial innovation and inclusivity. However, this growth has also introduced significant security risks, including the proliferation of illicit accounts involved in fraudulent activities. Traditional detection methods are limited by the scarcity of labeled data and the evolving tactics of malicious actors. In this paper, we propose a novel Self-Learning Ensemble-based Illicit account Detection (SLEID) framework to address these challenges. SLEID employs an Isolation Forest for initial outlier detection and a self-training mechanism to iteratively generate pseudo-labels for unlabeled accounts, thereby enhancing detection accuracy. Extensive experiments demonstrate that SLEID significantly outperforms traditional supervised approaches and recent semi-supervised models, achieving superior precision, recall, and F1-scores, particularly in detecting illicit accounts. Compared to state-of-the-art methods, our approach achieves better detection performance while reducing reliance on labeled data. The results affirm SLEID's efficacy as a robust solution for safeguarding the DeFi ecosystem and mitigating risks posed by malicious accounts.
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