Improving reinforcement learning in stochastic RAM-based neural networks
作者:Alistair Ferguson, Hamid Bolouri
摘要
RAM-based neural networks are designed to be efficiently implemented in hardware. The desire to retain this property influences the training algorithms used, and has led to the use of reinforcement (reward-penalty) learning. An analysis of the reinforcement algorithm applied to RAM-based nodes has shown the ease with which unlearning can occur. An amended algorithm is proposed which demonstrates improved learning performance compared to previously published reinforcement regimes.
论文关键词:hardware realisation, RAM-based nodes, reinforcement learning, reward-penalty
论文评审过程:
论文官网地址:https://doi.org/10.1007/BF00417784