2022
DOI: 10.48550/arxiv.2205.09348
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Analyzing Echo-state Networks Using Fractal Dimension

Abstract: This work joins aspects of reservoir optimization, information-theoretic optimal encoding, and at its center fractal analysis. We build on the observation that, due to the recursive nature of recurrent neural networks, input sequences appear as fractal patterns in their hidden state representation. These patterns have a fractal dimension that is lower than the number of units in the reservoir. We show potential usage of this fractal dimension with regard to optimization of recurrent neural network initializati… Show more

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