Litcius/Paper detail

Ethereum phishing detection based on graph neural networks

Ao Xiong, Yuanzheng Tong, Chengling Jiang, Shaoyong Guo, Sujie Shao, Jing Huang, Wei Wang, Baozhen Qi

2023IET Blockchain14 citationsDOIOpen Access PDF

Abstract

Abstract With the development of blockchain, cryptocurrencies are also showing a boom. However, due to the decentralized and anonymous nature of blockchain, cryptocurrencies have inevitably become a hotbed for fraudulent crimes. For example, phishing scams are frequent, which not only jeopardize the financial security of blockchain, but also hinder the promotion of blockchain technology. To solve this problem, this paper proposes a graph neural network‐based phishing detection method for Ethereum, and validates it using Ethereum datasets. Specifically, this paper proposes a feature learning algorithm named TransWalk, which consists of a random walk strategy for transaction networks and a multi‐scale feature extraction method for Ethereum. Then, an Ethereum phishing fraud detection framework is built based on TransWalk, and conduct extensive experiments on the Ethereum dataset to verify the effectiveness of this scheme in identifying Ethereum phishing detection.

Topics & Concepts

PhishingCryptocurrencyBlockchainComputer scienceDatabase transactionBoomAnonymityArtificial neural networkComputer securityData miningMachine learningArtificial intelligenceWorld Wide WebThe InternetEngineeringDatabaseEnvironmental engineeringBlockchain Technology Applications and SecuritySpam and Phishing DetectionImbalanced Data Classification Techniques