区块链中异常检测的机器学习算法比较研究分析

R. Saravanan, S. Santhiya, K. Shalini, V.S Sreeparvathy
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引用次数: 0

摘要

异常检测是现代网络安全行业面临的具有挑战性的问题之一。近年来,区块链技术被广泛应用于多个应用领域,以提高数据隐私性和系统的可信度和安全性。尽管区块链是一种有效的工具,但它并非不受网络攻击的影响。例如,对以太坊经典成功的51%攻击暴露了该技术的安全漏洞。从统计的角度来看,攻击可以被视为一种异常的发现,严重偏离了常态。机器学习是一门科学,其目标是在海量数据集中发现见解、趋势和异常;因此,它可以用来检测区块链攻击。在这项工作中,我们定义了一个基于联邦学习的异常检测系统,该系统使用从观察终端设备本身的区块链活动收集的汇总数据进行训练。在以太坊经典网络的整个历史日志上进行的实验表明,我们的模型能够准确识别已公开的攻击,同时还能自动签署数字交易以进一步保护。因此,有必要创建一个异常检测系统,该系统可以监视网络中的任何危险行为,并为终端设备本身的管理机构提供发现结果。在我们建议的文章中考虑了几种分类技术和机器学习算法来对准确的模型进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study Analysis of MachineLearning Algorithms for Anomaly Detection in Blockchain
Anomaly detection is one of the challenging problems encountered by the modern network security industry. In these last years, Blockchain technologies have been widely used in several application fields to improve data privacy and trustworthiness and security of systems. Despite being an effective tool, the blockchain is not impervious to cyberattacks. For instance, a successful 51% attack on Ethereum Classic exposed security flaws in the technology. Attacks can be viewed from a statistical standpoint as an aberrant finding that strongly deviates from the norm. Machine learning is a science whose objective is to discover insights, trends, and anomalies in massive data sets; as a result, it can be used to detect blockchain attacks. In this work, we define a federated learning-based anomaly detection system that is trained using aggregate data gathered from observing blockchain activity on the end device itself. Experiments on the whole historical logs of the Ethereum Classic network demonstrate our model’s ability to accurately identify assaults that have been made public while also automatically signing digital transactions for further protection. Therefore, it is necessary to create an anomaly detection system that can monitor networks for any dangerous actions and produce findings for the management authority in the end device itself. Several classification techniques and machine learning algorithms have been taken into consideration in our suggested article to categorize the accurate model.
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