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A Multiagent-Based constructive Approach for Feedforward Neural Networks

机译:用于馈电神经网络的多元工构造方法

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In this paper, a new constructive approach for the automatic definition of feedforward neural networks (FNNs) is introduced. Such approach (named MASCoNN) is multiagent-oriented and, thus, can be regarded as a kind of hybrid (synergetic) system, MASCoNN centers upon the employment of a two-level hierarchy of agent-based elements for the progressive allocation of neuronal building blocks. By this means, an FNN can be considered as an architectural organization of reactive neural agents, orchestrated by deliberative coordination entities via synaptic interactions. MASCoNN was successfully applied to implement nonlinear dynamic system identification devices and some comparative results, involving alternative proposals, are analyzed here.
机译:本文介绍了一种新的建设性方法,用于自动定义前馈神经网络(FNNS)。这种方法(命名为Masconn)是多元的导向,因此,可以被视为一种混合(协同)系统,Masconn中心,以在采用基于代理的代理的元素的两级层次中的逐步分配的过程中块。通过这种方式,FNN可以被认为是通过突触相互作用的审议协调实体策划的反应性神经试剂的建筑组织。 Masconn在此成功应用于实施非线性动态系统识别装置和一些比较结果,涉及替代提案,在此进行分析。

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