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Machine Learning Using Cellular Automata Based Feature Expansion and Reservoir Computing

机译:基于元胞自动机的特征扩展和储层计算的机器学习

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摘要

In this paper, we introduce a novel framework of cellular automata based computing that is capable of long short-term memory. Cellular automaton is used as the reservoir of dynamical systems. Input is randomly projected onto the initial conditions of automaton cells and non-linear computation is performed on the input via application of a rule in the automaton for a period of time. The evolution of the automaton creates a space-time volume of the automaton state space, and it is used as the feature vector. The proposed framework requires orders of magnitude less computation compared to Echo State Networks. We prove that cellular automaton reservoir holds a distributed representation of attribute statistics, which provides a more effective computation than local representation. It is possible to estimate the kernel for linear cellular automata via metric learning, that enables a much more efficient distance computation in support vector machines framework.
机译:在本文中,我们介绍了一种新的基于细胞自动机的计算框架,该框架能够长时间存储内存。元胞自动机被用作动力系统的储存库。将输入随机投影到自动机单元的初始条件上,并通过在自动机中应用规则一段时间来对输入执行非线性计算。自动机的演化会创建自动机状态空间的时空体积,并将其用作特征向量。与Echo State Networks相比,该框架所需的计算量要少几个数量级。我们证明了元胞自动机存储库拥有属性统计信息的分布式表示形式,它提供了比局部表示形式更有效的计算。可以通过度量学习来估计线性细胞自动机的内核,从而在支持向量机框架中实现更有效的距离计算。

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