A scalable generative model for dynamical system reconstruction from neuroimaging data
–Neural Information Processing Systems
Data-driven inference of the generative dynamics underlying a set of observed time series is of growing interest in machine learning and the natural sciences. In neuroscience, such methods promise to alleviate the need to handcraft models based on biophysical principles and allow to automatize the inference of inter-individual differences in brain dynamics. 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. However, as it currently stands, these techniques are not directly applicable to data modalities where current observations depend on an entire history of previous states due to a signal's filtering properties, as common in neuroscience (and physiology more generally).
Neural Information Processing Systems
May-27-2025, 09:07:00 GMT
- Industry:
- Health & Medicine
- Diagnostic Medicine > Imaging (1.00)
- Health Care Technology (1.00)
- Therapeutic Area > Neurology (1.00)
- Health & Medicine
- Technology: