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Adaptation of neural agent in dynamic environment: hybrid system of genetic algorithm and neural network

机译:神经主体在动态环境中的适应:遗传算法与神经网络的混合系统

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This study proposes an adaptive agent as a hybrid of genetic algorithm and neural network, and to clarify the effectiveness of the combination of two mechanisms in the dynamic environment. Evolution and learning can be explained as the mechanism of searching a solution in the enormous possibilities at the population level and individual level, respectively. There are two ways of combination of genetic algorithm and neural network: Darwinian and Lamarckian frameworks. In the Lamarckian framework the acquired traits during the lifetime can be passed on to the offspring directly, while in the Darwinian framework, these cannot be passed on. We propose a "neural agent" whose initial weights of their neural networks are determined by their genome data, as a simple model of the hybrid system of genetic algorithm and neural network. We examine which framework is better in the dynamic system. The result of our simulation shows that the Darwinian framework is better than Lamarckian.
机译:这项研究提出了一种自适应代理作为遗传算法和神经网络的混合体,并阐明了两种机制在动态环境中结合的有效性。进化和学习可以解释为分别在人口层次和个人层次上以巨大可能性寻找解决方案的机制。遗传算法和神经网络相结合的方式有两种:达尔文框架和拉马克框架。在Lamarckian框架中,可以将一生中获得的特质直接传递给后代,而在Darwinian框架中,这些特征则无法传递。我们提出了一种“神经主体”,其遗传网络和神经网络混合系统的简单模型由其基因组数据决定其神经网络的初始权重。我们研究动态系统中哪个框架更好。仿真结果表明,达尔文框架优于拉马克框架。

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