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Supervised and Evolutionary Learning of EchoState Networks

机译:EchoState网络的监督和进化学习

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A possible alternative to topology fine-tuning for Neural Network (NN) optimization is to use Echo State Networks (ESNs), recurrent NNs built upon a large reservoir of sparsely randomly connected neurons. The promises of ESNs have been fulfilled for supervised learning tasks, but unsupervised ones, e.g. control problems, require more flexible optimization methods - such as Evolutionary Algorithms. This paper proposes to apply CMA-ES, the state-of-the-art method in evolutionary continuous parameter optimization, to the evolutionary learning of ESN parameters. First, a standard supervised learning problem is used to validate the approach and compare it to the standard one. But the flexibility of Evolutionary optimization allows us to optimize not only the outgoing weights but also, or alternatively, other ESN parameters, sometimes leading to improved results. The classical double pole balancing control problem is then used to demonstrate the feasibility of evolutionary (i.e. reinforcement) learning of ESNs. We show that the evolutionary ESN obtain results that are comparable with those of the best topology-learning methods.
机译:对于神经网络(NN)优化而言,拓扑微调的一种可能替代方法是使用回声状态网络(ESN),即基于大量稀疏随机连接的神经元的递归神经网络。对于有监督的学习任务,已经实现了ESN的承诺,但是对于无监督的任务,则是无监督的。控制问题需要更灵活的优化方法-例如进化算法。本文提出将进化连续参数优化中的最新方法CMA-ES应用于ESN参数的进化学习。首先,使用标准的监督学习问题来验证该方法并将其与标准方法进行比较。但是,进化优化的灵活性使我们不仅可以优化输出权重,还可以优化其他ESN参数,或者有时还可以优化结果。然后使用经典的双极平衡控制问题来证明ESN进化(即加强)学习的可行性。我们表明,进化的ESN获得的结果可与最佳拓扑学习方法相媲美。

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