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2023 Warped Dynamic Linear Models for Time Series of Counts
Brian King, Daniel R. Kowal
Author Affiliations +
Bayesian Anal. Advance Publication 1-26 (2023). DOI: 10.1214/23-BA1394

Abstract

Dynamic Linear Models (DLMs) are commonly employed for time series analysis due to their versatile structure, simple recursive updating, ability to handle missing data, and probabilistic forecasting. However, the options for count time series are limited: Gaussian DLMs require continuous data, while Poisson-based alternatives often lack sufficient modeling flexibility. We introduce a novel semiparametric methodology for count time series by warping a Gaussian DLM. The warping function has two components: a (nonparametric) transformation operator that provides distributional flexibility and a rounding operator that ensures the correct support for the discrete data-generating process. We develop conjugate inference for the warped DLM, which enables analytic and recursive updates for the state space filtering and smoothing distributions. We leverage these results to produce customized and efficient algorithms for inference and forecasting, including Monte Carlo simulation for offline analysis and an optimal particle filter for online inference. This framework unifies and extends a variety of discrete time series models and is valid for natural counts, rounded values, and multivariate observations. Simulation studies illustrate the excellent forecasting capabilities of the warped DLM. The proposed approach is applied to a multivariate time series of daily overdose counts and demonstrates both modeling and computational successes.

Funding Statement

This material is based upon work supported by the National Science Foundation: a Graduate Research Fellowship under Grant No. 1842494 (King) and SES-2214726 (Kowal).

Citation

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Brian King. Daniel R. Kowal. "Warped Dynamic Linear Models for Time Series of Counts." Bayesian Anal. Advance Publication 1 - 26, 2023. https://doi.org/10.1214/23-BA1394

Information

Published: 2023
First available in Project Euclid: 26 June 2023

Digital Object Identifier: 10.1214/23-BA1394

Keywords: discrete data , particle filter , selection normal , state-space model

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