This paper explores the vulnerability of machine learning models to simple
single-feature adversarial attacks in the context of Ethereum fraudulent
transaction detection. Through comprehensive experimentation, we investigate
the impact of various adversarial attack strategies on model performance
metrics. Our findings, highlighting how prone those techniques are to simple
attacks, are alarming, and the inconsistency in the attacks' effect on
different algorithms promises ways for attack mitigation. We examine the
effectiveness of different mitigation strategies, including adversarial
training and enhanced feature selection, in enhancing model robustness and show
their effectiveness.
外部データセット
Benchmark Labeled Transactions Ethereum dataset
Labeled Transactions-Based Dataset on the Ethereum Network