Influential Nodes Detection in Ethereum Blockchain Network Using Machine Learning
DOI:
https://doi.org/10.62019/dm0hkj34Abstract
Ethereum blockchain is the market leading platform for decentralized applications and smart contracts that have powered the new age of financial ecosystem. In order to improve security and performance, identify influential nodes, and understand network dynamics on Ethereum it is critical to identify influential nodes in Ethereum. This study explore machine learning techniques for discovery of these nodes using graph based algorithms, centrality measures and clustering methods. It studies the impact of a node in terms of frequency of usage, connectivity and computational power for a node. Finally, this study compare performance of proposed methodology combining supervised learning and graph neural networks to their traditional counterparts and demonstrate approach outperforms existing methods. The study demonstrate that highly influential nodes engage in unique patterns of behavior, which are detectable and categorizable. This study contribute to understanding of the network structure of Ethereum, along with a scalable approach to monitoring and optimising blockchain ecosystems. Moreover the study discuss the implications for network robustness, fraud detection and protocol enhancements, and demonstrate the promise of machine learning for blockchain analytics.
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Copyright (c) 2025 Nazia Azim, Khair Ul Burria, Muhammad Zain Asghar, Zeeshan Raza, Mehran Ali, Sheraz Ali Jan

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
