Investigating echo state networks dynamics by means of recurrence analysis
Filippo Maria Bianchi, Lorenzo Livi, Cesare Alippi

TL;DR
This paper uses recurrence analysis techniques to explore the dynamics of echo state networks, providing visual and quantitative tools to assess stability and optimize network design.
Contribution
It introduces recurrence plot and recurrence quantification analysis methods to interpret ESN dynamics, offering new ways to evaluate stability and computational capacity.
Findings
RPs visually represent high-dimensional reservoir dynamics.
L_max correlates with Lyapunov exponent, indicating stability.
RQA measures accurately identify the edge of stability.
Abstract
In this paper, we elaborate over the well-known interpretability issue in echo state networks. The idea is to investigate the dynamics of reservoir neurons with time-series analysis techniques taken from research on complex systems. Notably, we analyze time-series of neuron activations with Recurrence Plots (RPs) and Recurrence Quantification Analysis (RQA), which permit to visualize and characterize high-dimensional dynamical systems. We show that this approach is useful in a number of ways. First, the two-dimensional representation offered by RPs provides a way for visualizing the high-dimensional dynamics of a reservoir. Our results suggest that, if the network is stable, reservoir and input denote similar line patterns in the respective RPs. Conversely, the more unstable the ESN, the more the RP of the reservoir presents instability patterns. As a second result, we show that the…
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Taxonomy
MethodsInterpretability
