Detecting Smart Contract Vulnerabilities with Combined Binary and Multiclass Classification

IF 1.8 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Cryptography Pub Date : 2023-07-07 DOI:10.3390/cryptography7030034
Anzhelika Mezina, A. Ometov
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Abstract

The development of Distributed Ledger Technology (DLT) is pushing toward automating decentralized data exchange processes. One of the key components of this evolutionary step is facilitating smart contracts that, in turn, come with several additional vulnerabilities. Despite the existing tools for analyzing smart contracts, keeping these systems running and preserving performance while maintaining a decent level of security in a constantly increasing number of contracts becomes challenging. Machine Learning (ML) methods could be utilized for analyzing and detecting vulnerabilities in DLTs. This work proposes a new ML-based two-phase approach for the detection and classification of vulnerabilities in smart contracts. Firstly, the system’s operation is set up to filter the valid contracts. Secondly, it focuses on detecting a vulnerability type, if any. In contrast to existing approaches in this field of research, our algorithm is more focused on vulnerable contracts, which allows to save time and computing resources in the production environment. According to the results, it is possible to detect vulnerability types with an accuracy of 0.9921, F1 score of 0.9902, precision of 0.9883, and recall of 0.9921 within reasonable execution time, which could be suitable for integrating existing DLTs.
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结合二元和多类分类检测智能合约漏洞
分布式账本技术(DLT)的发展正在推动去中心化数据交换过程的自动化。这一进化步骤的关键组成部分之一是促进智能合约,而智能合约反过来又带来了一些额外的漏洞。尽管已有分析智能合约的工具,但在不断增加的合约数量中保持这些系统运行并保持性能,同时保持良好的安全水平,这变得具有挑战性。机器学习(ML)方法可用于分析和检测dlt中的漏洞。这项工作提出了一种新的基于ml的两阶段方法来检测和分类智能合约中的漏洞。首先,设置系统的操作来过滤有效的合约。其次,它侧重于检测漏洞类型(如果有的话)。与该研究领域的现有方法相比,我们的算法更关注易受攻击的合同,这可以节省生产环境中的时间和计算资源。结果表明,在合理的执行时间内,可以检测出漏洞类型,准确率为0.9921,F1得分为0.9902,精密度为0.9883,召回率为0.9921,适合整合现有的dlt。
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来源期刊
Cryptography
Cryptography Mathematics-Applied Mathematics
CiteScore
3.80
自引率
6.20%
发文量
53
审稿时长
11 weeks
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