Abstract

Extracting latent nonlinear dynamics from observed time-series data is important for understanding a dynamic system against the background of the observed data. A state space model is a probabilistic graphical model for time-series data, which describes the probabilistic dependence between latent variables at subsequent times and between latent variables and observations. Since, in many situations, the values of the parameters in the state space model are unknown, estimating the parameters from observations is an important task. The particle marginal Metropolis–Hastings (PMMH) method is a method for estimating the marginal posterior distribution of parameters obtained by marginalization over the distribution of latent variables in the state space model. Although, in principle, we can estimate the marginal posterior distribution of parameters by iterating this method infinitely, the estimated result depends on the initial values for a finite number of times in practice. In this paper, we propose a replica exchange particle marginal Metropolis–Hastings (REPMMH) method as a method to improve this problem by combining the PMMH method with the replica exchange method. By using the proposed method, we simultaneously realize a global search at a high temperature and a local fine search at a low temperature. We evaluate the proposed method using simulated data obtained from the Izhikevich neuron model and Lévy-driven stochastic volatility model, and we show that the proposed REPMMH method improves the problem of the initial value dependence in the PMMH method, and realizes efficient sampling of parameters in the state space models compared with existing methods.

Highlights

  • Extracting latent nonlinear dynamics from observed time-series data is important for understanding the dynamic system against the background of the observed data

  • We introduce the exchange between samples of model parameters Θ at different temperatures and realize an efficient sampling method for model parameters governing the nonlinear dynamical systems

  • Using nonlinear dynamical models such as the Izhikevich neuron model and Lévydriven stochastic volatility model, we show that our proposed replica exchange particle marginal Metropolis–Hastings (REPMMH) method can improve the problem of initial value dependence of the particle marginal Metropolis– Hastings (PMMH) method

Read more

Summary

Introduction

Extracting latent nonlinear dynamics from observed time-series data is important for understanding the dynamic system against the background of the observed data. To estimate the parameters in the state space models from observations, a method combining the sequential Monte Carlo (SMC) method [2,4,8,9,10,11,12,14,16,17,18,19,20,23,24,25,27] with the expectation–maximization (EM) algorithm [8,28,29] has been proposed [9,10,11,14,20]. Since the EM algorithm is a point estimation method, it is not possible to identify whether converged values are local or global optima

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call