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One-shot data clustering mechanism using a distributed associative memory scheme for on-site recognition within network of smart objects

机译:一种使用分布式关联内存方案的单次数据聚类机制,用于在智能对象网络中进行现场识别

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摘要

Reduced-Distributed Hierarchical Graph Neuron (R-DHGN) is a one-shot learning distributed associative memory algorithm for data classification, which reduces the computational complexity of existing recognition algorithms by distributing the recognition process into smaller processing clusters. This paper investigates an effect of unsupervised one-shot learning mechanism for data classification within a computational network. This computational network may represent a network of objects than can be deployed in the existing Internet-of-Things (IoT) environment that offers seamless connectivity between smart devices such as sensors. Our approach extends the pattern recognition capability of Distributed Hierarchical Graph Neuron (DHGN). The interprocess communications of DHGN scheme is significantly reduced, and preliminary results obtained from the series of comparative analyses with other established classifiers have indicated the capability of R-DHGN to produce one-shot classification technique using a lightweight recognition mechanism. Simple dataset of iris plants have been used to demonstrate such capability of R-DHGN.
机译:减少分布式的分层图神经元(R-DHGN)是用于数据分类的单次学习分布式关联存储器算法,其通过将识别处理分配到较小的处理群集来降低现有识别算法的计算复杂度。本文研究了无监督的单次学习机制在计算网络中进行数据分类的影响。该计算网络可以表示对象的网络,其可以在现有的内部内容(物联网)环境中,该环境提供在诸如传感器的智能设备之间的无缝连接。我们的方法扩展了分布式分层图神经元(DHGN)的模式识别能力。 DHGN方案的进程性通信显着降低,并且从其他建立的分类器的一系列比较分析获得的初步结果表明了使用轻质识别机制产生单次分类技术的能力。虹膜植物的简单数据集已用于展示R-DHGN的这种能力。

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