A Trust Prediction Mechanism in Edge Communications using Optimized Support Vector Regression

N. Gowda, B. A
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引用次数: 1

Abstract

The number of edge devices is increasing every day in the fog computing environment. According to Gartner's prediction, around 42 billion edge devices will be involved in digital communications by 2025. Different kinds of edge devices will be involved in various applications such as healthcare, transportation, and education to provide services at anytime and anywhere to the user. At the same time, attackers are trying to intrude into the communication system by taking the advantage of heterogeneity of devices. Consequently, trust management among edge devices is one of the major security concerns in identifying untrustworthy activities in the communication system. This paper proposes a mechanism to predict the trust values of every edge device participating in the communication based on the attributes using support vector regression (SVR). Accuracy, loss rate, recall, precision, and F-measure are used to assess the performance of the suggested model on various data samples of various sizes. Performance comparisons with existing machine learning models demonstrate superior results with various iteration counts. The proposed model attained 99.98% accuracy, 0.0048 loss rate, 99.96% precision, 100% recall, 99.96% F-Measure and took almost 356 seconds for 100 iterations.
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基于优化支持向量回归的边缘通信信任预测机制
在雾计算环境中,边缘设备的数量每天都在增加。根据Gartner的预测,到2025年,将有大约420亿台边缘设备参与数字通信。不同类型的边缘设备将涉及各种应用,如医疗保健、交通和教育,随时随地为用户提供服务。与此同时,攻击者试图利用设备的异构性来侵入通信系统。因此,边缘设备之间的信任管理是识别通信系统中不可信活动的主要安全问题之一。本文提出了一种基于属性的支持向量回归(SVR)预测参与通信的每个边缘设备信任值的机制。准确度、损失率、召回率、精度和F-measure用于评估建议模型在不同大小的不同数据样本上的性能。与现有机器学习模型的性能比较表明,在不同的迭代次数下,结果更优。该模型的准确率为99.98%,损失率为0.0048,精度为99.96%,召回率为100%,F-Measure为99.96%,100次迭代耗时约356秒。
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