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Analysis on Trustworthiness of Secondary Users using Machine Learning Approaches in Cognitive Radio Network Environment.

机译:认知无线电网络环境中计算机学习方法的二级用户可信度分析。

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The trustworthiness of Secondary Users (SUs) can be measured through its past and present trust values with sensing reputations given by the neighboring nodes in Cognitive Radio Network (CRN). Basing on these values, it is cleared that whether the SUs can be utilized the free channels of Primary Users (PUs) or not. In this paper, it has been proposed a model to analyze the trustworthiness of Secondary Users (SUs) in Cognitive Radio Network (CRN) with the help of Machine Learning (ML) approaches. It is desired to achieve more accuracy on the predicted data in the process of calculating trustworthiness and spectrum sensing reputation of SUs in Cognitive Radio Network (CRN). It has been also helped to sense the correct number of malicious users, suspicious users and honest users among the total number of SUs. For the simulation work WEKA software has been used, which is a collection of machine learning algorithms for data mining task. Three different types of classifiers of machine learning approaches have been analyzed in this simulation work such as Naive Bayes, Decision Tree and Bayes Network. From this analysis, it is observed that Decision Tree and Bayes Network are performing better than Navies Bayes in terms of providing high accuracy.
机译:辅助用户(SUS)的可信度可以通过其过去来衡量,并且存在具有认知无线电网络(CRN)中的相邻节点给出的传感声誉的信任值。基于这些值,清楚地清除了SUS是否可以使用主要用户(PU)的自由通道。在本文中,提出了一种模型,以便在机器学习(ML)方法的帮助下分析认知无线电网络(CRN)中的二级用户(SUS)的可信度。期望在计算认知无线电网络(CRN)中计算SUS的可信度和频谱传感声誉的过程中实现更多的准确性。它还有助于感知恶意用户的正确数量,可疑用户和诚实的用户之间的总数。对于仿真工作,已使用Weka软件,这是用于数据挖掘任务的机器学习算法的集合。在这个模拟工作中已经分析了三种不同类型的机器学习方法分类器,例如天真贝叶斯,决策树和贝叶斯网络。从这个分析中,据观察,在提供高精度方面,决策树和贝叶斯网络的表现优于海军贝叶斯。

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