AI RESEARCH
Centrality-Based Pruning for Efficient Echo State Networks
arXiv CS.AI
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ArXi:2603.20684v1 Announce Type: cross Echo State Networks (ESNs) are a reservoir computing framework widely used for nonlinear time-series prediction. However, despite their effectiveness, the randomly initialized reservoir often contains redundant nodes, leading to unnecessary computational overhead and reduced efficiency. In this work, we propose a graph centrality-based pruning approach that interprets the reservoir as a weighted directed graph and removes structurally less important nodes using centrality measures.