| Literature DB >> 33746242 |
Abstract
Model reduction of Markov processes is a basic problem in modeling state-transition systems. Motivated by the state aggregation approach rooted in control theory, we study the statistical state compression of a discrete-state Markov chain from empirical trajectories. Through the lens of spectral decomposition, we study the rank and features of Markov processes, as well as properties like representability, aggregability, and lumpability. We develop spectral methods for estimating the transition matrix of a low-rank Markov model, estimating the leading subspace spanned by Markov features, and recovering latent structures like state aggregation and lumpable partition of the state space. We prove statistical upper bounds for the estimation errors and nearly matching minimax lower bounds. Numerical studies are performed on synthetic data and a dataset of New York City taxi trips.Entities:
Keywords: Computational complexity; maximum likelihood estimation; minimax techniques; signal denoising; tensor SVD
Year: 2019 PMID: 33746242 PMCID: PMC7971158 DOI: 10.1109/tit.2019.2956737
Source DB: PubMed Journal: IEEE Trans Inf Theory ISSN: 0018-9448 Impact factor: 2.501