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A Stochastic Evolutionary Neuron Migration Process with Emerged Hebbian Dynamics

机译:具有出现Hebbian Dynamics的随机进化神经元迁移过程

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In this paper, we propose a phenomenological developmental model based on a stochastic evolutionary neuron migration process (SENMP). Employing a spatial encoding scheme with lateral interaction of neurons for artificial neural networks representing candidate solutions within a neural network ensemble, neurons of the ensemble form problem-specific geometrical structures as they migrate under selective pressure. The SENMP is applied to evolve purposeful behaviors for autonomous robots and to gain new insights into the development, adaptation and plasticity in artificial neural networks. We demonstrate the feasibility and advantages of the approach by evolving a robust navigation behavior for a mobile robot. We also present some preliminary results regarding the behavior of the adapting neural network ensemble and, particularly, a phenomenon exhibiting Hebbian dynamics.
机译:本文提出了一种基于随机进化神经元迁移过程(SENMP)的现象学发展模型。采用具有神经网络的神经元的横向相互作用的空间编码方案,用于代表神经网络集合中的候选解决方案,在选择性压力下迁移时,集合的神经元形成特定于特定的几何结构。 SENMP用于发展自治机器人的有目的的行为,并获得人工神经网络中的开发,适应和可塑性的新见解。我们通过演变为移动机器人的强大导航行为来展示方法的可行性和优点。我们还提出了一些关于适应神经网络集合的行为的初步结果,特别是表现出休闲动态的现象。

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