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An adaptive NeuroMolecular Computing Net model

机译:一种自适应神经分子计算网模型

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Neurons in our brain play a decisive role to perform highly information computing. Most of the artificial neural models merely emphasized the inter-neuronal relationship. Ignoring intra-neuronal dynamics is a simplification that might reduces the computational capability of the neurons. In this paper, a bio-inspired NeuroMolecular Computing Net (NMCN) model, which integrates inter-and intra-neuronal information processing so as to capture the biology-like malleability and gradual transformability, was proposed. The model was further applied to medical diagnosis with clinical database of ventilator-dependent patients. Experimental results show that the NMCN model is capable of learning to differentiate data in an autonomous manner. It also achieves a satisfactory result in data differentiation.
机译:我们大脑中的神经元在执行高度信息计算的情况下发挥着决定性作用。大多数人工神经模型仅强调了神经元间关系。忽略内部神经元动力学是一种可以降低神经元的计算能力的简化。本文提出了一种生物激发的神经分子计算网(NMCN)模型,其集成了间间信息处理,以捕获类似的生物学的磁带性和逐渐变化性。该模型进一步应用于医学诊断,涉及呼吸术患者的临床数据库。实验结果表明,NMCN模型能够学习以自主方式区分数据。它还达到了数据分化的令人满意的结果。

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