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A Wheel Graph Structured Associative Memory for Single-Cycle Pattern Recognition within P2P Networks

机译:P2P网络中用于单周期模式识别的轮图结构关联存储器

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A novel and efficient associative-memory-based pattern recognition scheme within P2P networks is proposed and implemented. The proposed scheme, known as the multi-wheel Graph Neuron, is adapted from Graph Neuron-based algorithms which are single-cycle, light-weight, and scalable associative-memory-based pattern recognition algorithms for wireless sensor networks, and has been implemented over a structured P2P Chord overlay network. The proposed approach promotes collaboration among peers during the detection process within the P2P networks. Since the scheme only required single cycle learning, the communication cost amongst peers is minimized. The preliminary results show that the proposed single-cycle recognition scheme guarantees high detection accuracy.
机译:提出并实现了一种新颖有效的基于P2P网络的基于联想记忆的模式识别方案。所提出的方案称为多轮Graph Neuron,它是基于Graph Neuron的算法改编而成的,该算法是用于无线传感器网络的单周期,轻量级和可伸缩的基于关联内存的模式识别算法,并且已经实现通过结构化的P2P Chord覆盖网络。所提出的方法在P2P网络内的检测过程中促进对等方之间的协作。由于该方案仅需要单周期学习,因此将对等方之间的通信成本降至最低。初步结果表明,所提出的单周期识别方案保证了较高的检测精度。

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