Umar Islam, Abeer Abdullah Alsadhan, Hathal Salamah Alwageed, Abdullah A. Al-Atawi, Gulzar Mehmood, Manel Ayadi, Shrooq Alsenan
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引用次数: 0
摘要
在快速发展的现代技术领域,区块链创新与机器学习进步的融合为加强计算机取证带来了无与伦比的机遇。本研究介绍了 SentinelFusion,这是一种基于集合的机器学习框架,旨在加强区块链系统的保密性、隐私性和数据完整性。通过将最先进的区块链安全特性与机器学习的预测能力相结合,SentinelFusion 旨在改进对安全漏洞和数据篡改的检测和预防。利用基于区块链的各种犯罪活动的综合数据集,该框架利用了多种机器学习模型,包括支持向量机、K-近邻、奈夫贝叶斯、逻辑回归和决策树,以及新颖的SentinelFusion集合模型。准确率、精确度、召回率和 F1 分数等广泛的评估指标被用来评估模型的性能。结果表明,SentinelFusion 的准确度、精确度、召回率和 F1 分数均达到 0.99,优于单个模型。这项研究的结果凸显了区块链技术与机器学习相结合推动计算机取证的潜力,为该领域的从业人员和研究人员提供了宝贵的见解。
SentinelFusion based machine learning comprehensive approach for enhanced computer forensics
In the rapidly evolving landscape of modern technology, the convergence of blockchain innovation and machine learning advancements presents unparalleled opportunities to enhance computer forensics. This study introduces SentinelFusion, an ensemble-based machine learning framework designed to bolster secrecy, privacy, and data integrity within blockchain systems. By integrating cutting-edge blockchain security properties with the predictive capabilities of machine learning, SentinelFusion aims to improve the detection and prevention of security breaches and data tampering. Utilizing a comprehensive blockchain-based dataset of various criminal activities, the framework leverages multiple machine learning models, including support vector machines, K-nearest neighbors, naive Bayes, logistic regression, and decision trees, alongside the novel SentinelFusion ensemble model. Extensive evaluation metrics such as accuracy, precision, recall, and F1 score are used to assess model performance. The results demonstrate that SentinelFusion outperforms individual models, achieving an accuracy, precision, recall, and F1 score of 0.99. This study’s findings underscore the potential of combining blockchain technology and machine learning to advance computer forensics, providing valuable insights for practitioners and researchers in the field.