Litcius/Paper detail

Vulnerability Detection in Solidity Smart Contracts via Machine Learning: A Qualitative Analysis

Dalila Ressi, Alvise Spanò, Lorenzo Benetollo, Michele Bugliesi, Carla Piazza, Sabina Rossi

2025ARCA (Università Ca' Foscari Venezia)12 citationsDOI

Abstract

Smart contracts are central to most blockchain applications, from financial transactions to supply chain management. However, their adoption is hindered by security vulnerabilities that can result in significant financial losses. Most vulnerability detection tools and methods available nowadays leverage either static analysis methods or machine learning. Unfortunately, as valuable as they are, both approaches suffer from limitations that make them only partially effective. In this survey, we analyze the state of the art in machine-learning vulnerability detection for Ethereum smart contracts, by categorizing existing tools and methodologies, evaluating them, and highlighting their limitations. Our critical assessment unveils issues such as restricted vulnerability coverage and dataset construction flaws, providing us with new metrics to overcome the difficulties that restrain a sound comparison of existing solutions. Driven by our findings, we discuss best practices to enhance the accuracy, scope, and efficiency of vulnerability detection in smart contracts. Our guidelines address the known flaws while at the same time opening new avenues for research and development. By shedding light on current challenges and offering novel directions for improvement, we contribute to the advancement of secure smart contract development and blockchain technology as a whole.

Topics & Concepts

Vulnerability (computing)Risk analysis (engineering)Leverage (statistics)Computer securityVulnerability assessmentComputer scienceSoliditySupply chainAsset (computer security)Security analysisQualitative analysisState (computer science)Vulnerability managementBest practiceEngineeringProcess managementData scienceBlockchain Technology Applications and SecurityBig Data and Digital EconomyAdversarial Robustness in Machine Learning