A scalable generative model for dynamical system reconstruction from neuroimaging data Eric V olkmann
–Neural Information Processing Systems
Recent breakthroughs in training techniques for state space models (SSMs) specifically geared toward dynamical systems (DS) reconstruction (DSR) enable to recover the underlying system including its geometrical (attractor) and long-term statistical invariants from even short time series. These techniques are based on control-theoretic ideas, like modern variants of teacher forcing (TF), to ensure stable loss gradient propagation while training.
Neural Information Processing Systems
Nov-20-2025, 21:32:41 GMT
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