A nonparametrically corrected likelihood for Bayesian spectral analysis of multivariate time series

06/08/2023
by   Yixuan Liu, et al.
0

This paper presents a novel approach to Bayesian nonparametric spectral analysis of stationary multivariate time series. Starting with a parametric vector-autoregressive model, the parametric likelihood is nonparametrically adjusted in the frequency domain to account for potential deviations from parametric assumptions. We show mutual contiguity of the nonparametrically corrected likelihood, the multivariate Whittle likelihood approximation and the exact likelihood for Gaussian time series. A multivariate extension of the nonparametric Bernstein-Dirichlet process prior for univariate spectral densities to the space of Hermitian positive definite spectral density matrices is specified directly on the correction matrices. An infinite series representation of this prior is then used to develop a Markov chain Monte Carlo algorithm to sample from the posterior distribution. The code is made publicly available for ease of use and reproducibility. With this novel approach we provide a generalization of the multivariate Whittle-likelihood-based method of Meier et al. (2020) as well as an extension of the nonparametrically corrected likelihood for univariate stationary time series of Kirch et al. (2019) to the multivariate case. We demonstrate that the nonparametrically corrected likelihood combines the efficiencies of a parametric with the robustness of a nonparametric model. Its numerical accuracy is illustrated in a comprehensive simulation study. We illustrate its practical advantages by a spectral analysis of two environmental time series data sets: a bivariate time series of the Southern Oscillation Index and fish recruitment and time series of windspeed data at six locations in California.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/01/2021

Posterior consistency for the spectral density of non-Gaussian stationary time series

Various nonparametric approaches for Bayesian spectral density estimatio...
research
10/18/2017

A Bayesian Nonparametric Method for Clustering Imputation, and Forecasting in Multivariate Time Series

This article proposes a Bayesian nonparametric method for forecasting, i...
research
02/08/2022

A multivariate pseudo-likelihood approach to estimating directional ocean wave models

Ocean buoy data in the form of high frequency multivariate time series a...
research
11/26/2018

Bayesian Nonparametric Analysis of Multivariate Time Series: A Matrix Gamma Process Approach

While there is an increasing amount of literature about Bayesian time se...
research
04/05/2021

Spectral Subsampling MCMC for Stationary Multivariate Time Series

Spectral subsampling MCMC was recently proposed to speed up Markov chain...
research
02/09/2019

Bayesian Nonparametric Adaptive Spectral Density Estimation for Financial Time Series

Discrimination between non-stationarity and long-range dependency is a d...
research
10/26/2019

Adaptive Bayesian Spectral Analysis of High-dimensional Nonstationary Time Series

This article introduces a nonparametric approach to spectral analysis of...

Please sign up or login with your details

Forgot password? Click here to reset