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Feed-forward versus recurrent architecture and local versus cellular automata distributed representation in reservoir computing for sequence memory learning

机译:前馈与经常性架构和局部与蜂窝自动机的序列内存学习中的储层计算中的分布式表示

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Reservoir computing based on cellular automata (ReCA) constructs a novel bridge between automata computational theory and recurrent neural networks. ReCA has been trained to solve 5-bit memory tasks. Several methods are proposed to implement the reservoir where the distributed representation of cellular automata (CA) in recurrent architecture could solve the 5-bit tasks with minimum complexity and minimum number of training examples. CA distributed representation in recurrent architecture outperforms the local representation in recurrent architecture (stack reservoir), then echo state networks and feed-forward architecture using local or distributed representation. Extracted features from the reservoir, using the natural diffusion of CA states in the reservoir offers the state-of-the-art results in terms of feature vector length and the required training examples. Another extension is obtained by combining the reservoir CA states using XOR, Binary or Gray operator to produce a single feature vector to reduce the feature space. This method gives promising results, however using the natural diffusion of CA states still outperform. ReCA can be considered to operate around the lower bound of complexity; due to using the elementary CA in the reservoir.
机译:基于蜂窝自动机(RECA)的储层计算构建了自动数据计算理论和经常性神经网络之间的新颖桥梁。 RECA已培训以解决5位内存任务。提出了几种方法来实现储层,其中经常性架构中的蜂窝自动机(CA)的分布式表示可以解决具有最小复杂性和最小训练示例的5位任务。复发体系结构中的CA分布式表示优于经常性架构(堆栈库)中的本地表示,然后使用本地或分布式表示转换状态网络和前馈架构。从储存器中提取的特征,利用储存器中的CA状态的自然扩散提供了最先进的结果,以特征向量长度和所需的训练示例提供了最先进的结果。通过使用XOR,二进制或灰色操作员组合储存器CA状态来获得另一个扩展来产生单个特征向量以减少特征空间。该方法具有有前途的结果,但是使用CA状态的自然扩散仍然优于优势。可以认为RECA围绕复杂性的下限运行;由于在水库中使用基本CA。

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