Bayesian Learning in a Nonlinear Multiscale State-Space Model
Signal Processing
2024-09-04 v6 Machine Learning
Machine Learning
Abstract
The ubiquity of multiscale interactions in complex systems is well-recognized, with development and heredity serving as a prime example of how processes at different temporal scales influence one another. This work introduces a novel multiscale state-space model to explore the dynamic interplay between systems interacting across different time scales, with feedback between each scale. We propose a Bayesian learning framework to estimate unknown states by learning the unknown process noise covariances within this multiscale model. We develop a Particle Gibbs with Ancestor Sampling (PGAS) algorithm for inference and demonstrate through simulations the efficacy of our approach.
Cite
@article{arxiv.2408.06425,
title = {Bayesian Learning in a Nonlinear Multiscale State-Space Model},
author = {Nayely Vélez-Cruz and Manfred D. Laubichler},
journal= {arXiv preprint arXiv:2408.06425},
year = {2024}
}
Comments
Corrected a typo