2024
DOI: 10.3389/fncom.2024.1348138
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The connectivity degree controls the difficulty in reservoir design of random boolean networks

Emmanuel Calvet,
Bertrand Reulet,
Jean Rouat

Abstract: Reservoir Computing (RC) is a paradigm in artificial intelligence where a recurrent neural network (RNN) is used to process temporal data, leveraging the inherent dynamical properties of the reservoir to perform complex computations. In the realm of RC, the excitatory-inhibitory balance b has been shown to be pivotal for driving the dynamics and performance of Echo State Networks (ESN) and, more recently, Random Boolean Network (RBN). However, the relationship between b and other parameters of the network is s… Show more

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