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An adaptive NeuroMolecular Computing Net model

机译: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中起着决定性的作用。大多数人工神经模型仅强调神经元间的关系。忽略神经内动力学是一种简化,可能会降低神经元的计算能力。本文提出了一种受生物启发的神经分子计算网(NMCN)模型,该模型集成了神经内和神经内信息处理,从而捕获了类似生物学的延展性和渐进性。该模型通过呼吸机依赖患者的临床数据库进一步应用于医学诊断。实验结果表明,NMCN模型能够学习自主地区分数据。在数据区分方面也取得了令人满意的结果。

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