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首页> 外文期刊>International Journal of Computational Science and Engineering >Demystifying echo state network with deterministic simple topologies
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Demystifying echo state network with deterministic simple topologies

机译:用确定性简单拓扑进行脱模的回声状态网络

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Echo state networks (ESN) are a special type of recurrent neural networks (RNN) with distinct performance in the field of reservoir computing (RC). The state space of the ESN is initially randomised and the reservoir weights are fixed with training done only on the state readout. Beside the advantages of ESN, there remains some opacity in the dynamic properties of the reservoir due to the presence of randomisation. Our aim in this paper is to demystify the model of ESN in a complete deterministic structure with the use of different proposed reservoir structures (topologies) and compare their performance with the random ESN on different benchmark datasets. All applied topologies maintain the simplicity of random ESN computation complexity. Most of the topologies showed comparable or even better performance.
机译:回声状态网络(ESN)是一种特殊类型的复发性神经网络(RNN),具有在储层计算领域(RC)的不同性能。 ESN的状态空间最初是随机化的,并且储存器重量在仅在状态读数上完成训练。 除了ESN的优点外,由于存在随机化,储存器的动态特性仍然存在一些不透明度。 我们的目的在本文中,通过使用不同的建议的储层结构(拓扑),将ESN的模型揭开了完整的确定性结构,并将它们的性能与不同的基准数据集上的随机ESN进行比较。 所有应用拓扑都保持随机ESN计算复杂性的简单性。 大多数拓扑表现出可比或更好的性能。

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