August 13, 2023
Conference Paper

On the Stochastic Stability of Deep Markov Models

Abstract

Deep Markov models (DMM) are generative models which are scalable and expressive generalization of Markov models for representation, learning, and inference problems. However, the fundamental stochastic stability guarantees of such models have not been thoroughly investigated. In this paper, we present a novel stability analysis method and provide sufficient conditions of DMM's stochastic stability. The proposed stability analysis is based on the contraction of probabilistic maps modeled by deep neural networks. We make connections between the spectral properties of neural network's weights and different types of used activation function on the stability and overall dynamic behavior of DMMs with Gaussian distributions. Based on the theory, we propose a few practical methods for designing constrained DMMs with guaranteed stability. We empirically substantiate our theoretical results via intuitive numerical experiments using the proposed stability constraints.

Published: August 13, 2023

Citation

Drgona J., S. Mukherjee, J. Zhang, F. Liu, and M. Halappanavar. 2021. On the Stochastic Stability of Deep Markov Models. In Thirty-fifth Conference on Neural Information Processing Systems (NeurIPS 2021), December 6-14, 2021, Virtual, Online. Advances in Neural Information Processing Systems, edited by M. Ranzato, et al, 34. San Jose, California:Curran Associates Inc. PNNL-SA-162811.