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Sampling-Free Probabilistic Deep State-Space Models

Machine Learning 2023-09-18 v1 Machine Learning

Abstract

Many real-world dynamical systems can be described as State-Space Models (SSMs). In this formulation, each observation is emitted by a latent state, which follows first-order Markovian dynamics. A Probabilistic Deep SSM (ProDSSM) generalizes this framework to dynamical systems of unknown parametric form, where the transition and emission models are described by neural networks with uncertain weights. In this work, we propose the first deterministic inference algorithm for models of this type. Our framework allows efficient approximations for training and testing. We demonstrate in our experiments that our new method can be employed for a variety of tasks and enjoys a superior balance between predictive performance and computational budget.

Keywords

Cite

@article{arxiv.2309.08256,
  title  = {Sampling-Free Probabilistic Deep State-Space Models},
  author = {Andreas Look and Melih Kandemir and Barbara Rakitsch and Jan Peters},
  journal= {arXiv preprint arXiv:2309.08256},
  year   = {2023}
}