A Graph Learning Based Approach or Identity Inference in DApp Platform Blockchain
【Author】 Liu, Xiao; Tang, Zaiyang; Li, Peng; Guo, Song; Fan, Xuepeng; Zhang, Jinbo
【Source】IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTING
【影响因子】6.595
【Abstract】Current cryptocurrencies, such as Bitcoin and Ethereum, enable anonymity by using public keys to represent user accounts. On the other hand, inferring blockchain account types (i.e., miners, smart contracts or exchanges), which are also referred to as blockchain identities, is significant in many scenarios, such as risk assessment and trade regulation. Existing work on blockchain deanonymization mainly focuses on Bitcoin that supports simple transactions of cryptocurrencies. As the popularity of decentralized application (DApp) platform blockchains with Turing-complete smart contracts, represented by Ethereum, identity inference in blockchain faces new challenges because of user diversity and complexity of activities enabled by smart contracts. In this paper, we propose I(2)GL, an identify inference approach based on big graph analytics and learning to address these challenges. Specifically, I(2)GL constructs a transaction graph and aims to infer the identity of nodes using the graph learning technique based on Graph Convolutional Networks. Furthermore, a series of enhancement has been proposed by exploiting unique features of blockchain transaction graph. The experimental results on Ethereum transaction records show that I(2)GL significantly outperforms other state-of-the-art methods.
【Keywords】Blockchain; anonymity; identity inference; graph learning
【发表时间】2022 JAN 1
【收录时间】2022-03-21
【文献类型】期刊
【主题类别】
区块链技术-区块链数据分析-
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