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Combining Memory and Non-linearity in Echo State Networks

机译:回声状态网络中的记忆与非线性相结合

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Echo State Networks (ESNs) represent a successful methodology for efficient modeling of Recurrent Neural Networks. Untrained recurrent dynamics in ESNs apparently need to comply a trade-off between the two desirable features of implementing a long memory over past inputs and the ability of modeling non-linear dynamics. In this paper, we analyze such memoryon-linearity trade-off from the perspective of recurrent model design. In particular, we propose two variants to the standard ESN model, aiming at combining linear and non-linear dynamics both in the architectural setup of the recurrent system, and at the level of recurrent units activation functions. The proposed models are experimentally assessed on ad-hoc defined tasks as well as on standard benchmarks in the area of Reservoir Computing. Results show that the introduced ESN variants can grasp the proper trade-off between memory and non-linearity requirements, at the same time allowing to improve the performance of standard ESNs. Moreover, the analysis of the employed degree of non-linearity in the reservoir system can provide useful insights on the characterization of the learning task at hand.
机译:回声状态网络(ESN)代表了一种有效的递归神经网络建模方法。 ESN中未经训练的循环动力学显然需要遵循在过去的输入上实现长存储的两个理想特征与对非线性动力学建模的能力之间的权衡。在本文中,我们从循环模型设计的角度分析了这种记忆/非线性权衡。特别是,我们提出了标准ESN模型的两个变体,旨在在循环系统的体系结构设置中以及在循环单元激活功能级别上组合线性和非线性动力学。在临时定义的任务以及水库计算领域的标准基准上,对所提出的模型进行了实验评估。结果表明,引入的ESN变体可以在内存和非线性要求之间取得适当的折衷,同时可以提高标准ESN的性能。此外,对油藏系统中非线性程度的分析可以为手头学习任务的表征提供有用的见解。

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