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A Hybrid Neural Network Model Based Reinforcement Learning Agent

机译:基于混合神经网络模型的强化学习代理

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摘要

In this work, a hybrid neural network model (HNNM) is proposed, which combines the advantages of genetic algorithm, multi-agents and reinforcement learning. In order to generate networks with few connections and high classification performance, HNNM could dynamically prune or add hidden neurons at different stages of the training process. Experimental results have shown to be better than those obtained by the most commonly used optimization techniques.
机译:在这项工作中,提出了一种混合神经网络模型(HNNM),该模型结合了遗传算法,多智能体和强化学习的优点。为了生成连接少,分类性能高的网络,HNNM可以在训练过程的不同阶段动态修剪或添加隐藏的神经元。实验结果已经表明比通过最常用的优化技术获得的结果更好。

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