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Reservoir computing on the hypersphere

机译:储层计算在极度上

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Reservoir Computing (RC) refers to a Recurrent Neural Network (RNNs) framework, frequently used for sequence learning and time series prediction. The RC system consists of a random fixed-weight RNN (the input-hidden reservoir layer) and a classifier (the hidden-output readout layer). Here, we focus on the sequence learning problem, and we explore a different approach to RC. More specifically, we remove the nonlinear neural activation function, and we consider an orthogonal reservoir acting on normalized states on the unit hypersphere. Surprisingly, our numerical results show that the system's memory capacity exceeds the dimensionality of the reservoir, which is the upper bound for the typical RC approach based on Echo State Networks (ESNs). We also show how the proposed system can be applied to symmetric cryptography problems, and we include a numerical implementation.
机译:储层计算(RC)是指经常性的神经网络(RNNS)框架,通常用于序列学习和时间序列预测。 RC系统由随机固定权重RNN(输入隐藏储存层)和分类器(隐藏输出读数层)组成。 在这里,我们专注于序列学习问题,我们探讨了RC的不同方法。 更具体地,我们去除非线性神经激活功能,我们认为正交储层在单位低度上作用于标准化状态。 令人惊讶的是,我们的数值结果表明,系统的存储容量超过了储存器的维度,这是基于回声状态网络(ESNS)的典型RC方法的上限。 我们还展示了所提出的系统如何应用于对称加密问题,并且我们包括数值实现。

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