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An Adaptive Global-Local Memetic Algorithm to Discover Resources in P2P Networks

机译:一种自适应全局本地遗料算法,用于发现P2P网络中的资源

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摘要

This paper proposes a neural network based approach for solving the resource discovery problem in Peer to Peer (P2P) networks and an Adaptive Global Local Memetic Algorithm (AGLMA) for performing the training of the neural network. This training is very challenging due to the large number of weights and noise caused by the dynamic neural network testing. The AGLMA is a memetic algorithm consisting of an evolutionary framework which adaptively employs two local searchers having different exploration logic and pivot rules. Furthermore, the AGLMA makes an adaptive noise compensation by means of explicit averaging on the fitness values and a dynamic population sizing which aims to follow the necessity of the optimization process. The numerical results demonstrate that the proposed computational intelligence approach leads to an efficient resource discovery strategy and that the AGLMA outperforms two classical resource discovery strategies as well as a popular neural network training algorithm.
机译:本文提出了一种基于神经网络的基于神经网络,用于解决对等体(P2P)网络的资源发现问题以及用于执行神经网络训练的自适应全局本地麦克算法(AGLMA)。由于动态神经网络测试引起的大量重量和噪声,这种培训非常具有挑战性。 AGLMA是一种遗漏,该遗料包括一种进化框架,其自适应地采用具有不同探索逻辑和枢轴规则的两个本地搜索者。此外,AGLMA通过对健身值和动态填充尺寸的明确平均来进行自适应噪声补偿,其旨在遵循优化过程的必要性。数值结果表明,所提出的计算智能方法导致有效的资源发现策略,并且AGLMA优于两个经典资源发现策略以及流行的神经网络训练算法。

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