English

A Modularized Efficient Framework for Non-Markov Time Series Estimation

Optimization and Control 2018-10-15 v3 Numerical Analysis

Abstract

We present a compartmentalized approach to finding the maximum a-posteriori (MAP) estimate of a latent time series that obeys a dynamic stochastic model and is observed through noisy measurements. We specifically consider modern signal processing problems with non-Markov signal dynamics (e.g. group sparsity) and/or non-Gaussian measurement models (e.g. point process observation models used in neuroscience). Through the use of auxiliary variables in the MAP estimation problem, we show that a consensus formulation of the alternating direction method of multipliers (ADMM) enables iteratively computing separate estimates based on the likelihood and prior and subsequently "averaging" them in an appropriate sense using a Kalman smoother. As such, this can be applied to a broad class of problem settings and only requires modular adjustments when interchanging various aspects of the statistical model. Under broad log-concavity assumptions, we show that the separate estimation problems are convex optimization problems and that the iterative algorithm converges to the MAP estimate. As such, this framework can capture non-Markov latent time series models and non-Gaussian measurement models. We provide example applications involving (i) group-sparsity priors, within the context of electrophysiologic specrotemporal estimation, and (ii) non-Gaussian measurement models, within the context of dynamic analyses of learning with neural spiking and behavioral observations.

Keywords

Cite

@article{arxiv.1706.04685,
  title  = {A Modularized Efficient Framework for Non-Markov Time Series Estimation},
  author = {Gabriel Schamberg and Demba Ba and Todd P. Coleman},
  journal= {arXiv preprint arXiv:1706.04685},
  year   = {2018}
}

Comments

Made correction to residuals in Section III.D., fixed typos, and added information on the official published version

R2 v1 2026-06-22T20:19:15.260Z