AI RESEARCH
Stochastic dynamics learning with state-space systems
arXiv CS.LG
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ArXi:2508.07876v2 Announce Type: replace-cross This work advances the theoretical foundations of reservoir computing (RC) by providing a unified treatment of fading memory and the echo state property (ESP) in both deterministic and stochastic settings. We investigate state-space systems, a central model class in time series learning, and establish that fading memory and solution stability hold generically -- even in the absence of the ESP -- offering a robust explanation for the empirical success of RC models without strict contractivity conditions.