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A Neural Network-Based Trust Management System for Edge Devices in Peer-to-Peer Networks

机译:对等网络中的边缘设备的基于神经网络的信任管理系统

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Edge devices in Internet of Things(IoT)applications can form peers to communicate in peer-to-peer(P2P)networks over P2P protocols.Using P2P networks ensures scalability and removes the need for centralized management.However,due to the open nature of P2P networks,they often suffer from the existence of malicious peers,especially malicious peers that unite in groups to raise each other’s ratings.This compromises users’safety and makes them lose their confidence about the files or services they are receiving.To address these challenges,we propose a neural networkbased algorithm,which uses the advantages of a machine learning algorithm to identify whether or not a peer is malicious.In this paper,a neural network(NN)was chosen as the machine learning algorithm due to its efficiency in classification.The experiments showed that the NNTrust algorithm is more effective and has a higher potential of reducing the number of invalid files and increasing success rates than other well-known trust management systems.
机译:Internet Internet(物联网)应用程序中的边缘设备可以在P2P协议上形成对等体(P2P)网络中的对等体。使用P2P网络确保可扩展性并消除对集中管理的需求。然而,由于开放性质他们经常遭受恶意同行的存在,尤其是恶意同行,统一的同伴们举起互相评级。这妥协了用户安全,让他们对他们收到的文件或服务失去信心。解决这些挑战,我们提出了一种神经网络基础算法,它利用机器学习算法的优势来识别对等是否是恶意的。在本文中,由于其在分类中的效率而被选中为机器学习算法,因此选择了神经网络(NN) 。实验表明,Nntrust算法更有效,并且具有更高的潜力,减少无效文件的数量,并增加比其他众所周知的信任M的成功率一个神经系统。

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