International Association for Cryptologic Research

International Association
for Cryptologic Research

IACR News item: 28 April 2023

Yu Gai, Liyi Zhou, Kaihua Qin, Dawn Song, Arthur Gervais
ePrint Report ePrint Report
This paper presents a dynamic, real-time approach to detecting anomalous blockchain transactions. The proposed tool, TXRANK, generates tracing representations of blockchain activity and trains from scratch a large language model to act as a real-time Intrusion Detection System. Unlike traditional methods, TXRANK is designed to offer an unrestricted search space and does not rely on predefined rules or patterns, enabling it to detect a broader range of anomalies. We demonstrate the effectiveness of TXRANK through its use as an anomaly detection tool for Ethereum transactions. In our experiments, it effectively identifies abnormal transactions among a dataset of 68M transactions and has a batched throughput of 2284 trans- actions per second on average. Our results show that, TXRANK identifies abnormal transactions by ranking 49 out of 124 attacks among the top-3 most abnormal transactions interacting with their victim contracts. This work makes contributions to the field of blockchain transaction analysis by introducing a custom data encoding compatible with the transformer architecture, a domain-specific tokenization technique, and a tree encoding method specifically crafted for the Ethereum Virtual Machine (EVM) trace representation.
Expand

Additional news items may be found on the IACR news page.