ArXiv TLDR

Unified Mixture Sampler for State-Space Models: Application to Stochastic Conditional Duration Models

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2604.04517

Daichi Hiraki, Yasuhiro Omori

stat.MEecon.EMstat.CO

TLDR

A unified mixture sampler (UMS) offers a universal, efficient framework for nonlinear state-space models, outperforming conventional methods.

Key contributions

  • Proposes a Unified Mixture Sampler (UMS) for nonlinear state-space models with "exp-exp" likelihoods.
  • Dynamically adapts a standard mixture, eliminating the need for new approximations for each distribution.
  • Efficiently handles unknown shape parameters in SCD models via dynamic MCMC component updates.
  • Substantially reduces MCMC autocorrelation and improves efficiency over conventional slice sampling.

Why it matters

This paper introduces a significant advancement in statistical modeling by providing a universal and efficient framework for nonlinear state-space models. It simplifies complex estimation tasks and offers superior performance, making it highly valuable for researchers and practitioners across various fields.

Original Abstract

We propose a unified mixture sampler (UMS) that provides a universal estimation framework for nonlinear state-space models with "exp-exp" likelihood kernels. Unlike existing methods that require deriving new mixture approximations for each specific distribution, our approach dynamically adapts the standard ten-component mixture from Omori et al. (2007) through a deterministic re-centering and rescaling algorithm. Applying this to the stochastic conditional duration (SCD) model, we demonstrate that the proposed sampler can efficiently handle unknown shape parameters - such as those in Weibull or Gamma distributions - by updating mixture components near-instantaneously during MCMC iterations. The UMS not only simplifies implementation but also ensures exact inference via a lightweight Metropolis-Hastings step. Numerical examples show that our method substantially outperforms the conventional slice sampling approach, significantly reducing autocorrelation in MCMC samples while maintaining high computational efficiency. This unified framework encompasses a wide range of applications, including logit, Poisson, and various SCD model specifications, providing a highly efficient alternative to model-specific samplers.

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