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A BAYESIAN FRAMEWORK FOR SPARSE ESTIMATION IN HIGH-DIMENSIONAL MIXED FREQUENCY VECTOR AUTOREGRESSIVE MODELS.

Authors :
Chakraborty, Nilanjana
Khare, Kshitij
Michailidis, George
Source :
Statistica Sinica; 2023 Suppl, Vol. 33, p1629-1652, 133p, 2 Diagrams, 29 Charts, 3 Graphs
Publication Year :
2023

Abstract

The study considers a vector autoregressive model for high-dimensional mixed frequency data, where selective time series are collected at different frequencies. The high-frequency series are expanded and modeled as multiple time series to match the low-frequency sampling of the corresponding low-frequency series. This leads to an expansion of the parameter space, and poses challenges for estimation and inference in settings with a limited number of observations. We address these challenges by considering specific structural relationships in the representation of the high-frequency series, together with the sparsity of the model parameters by introducing spike-and-Gaussian slab prior distributions. In contrast to existing observation-driven methods, the proposed Bayesian approach accommodates general sparsity patterns, and makes a data-driven choice of them. Under certain regularity conditions, we establish the consistency for the posterior distribution under high-dimensional scaling. Applications to synthetic and real data illustrate the efficacy of the resulting estimates and corresponding credible intervals. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10170405
Volume :
33
Database :
Complementary Index
Journal :
Statistica Sinica
Publication Type :
Academic Journal
Accession number :
176237479
Full Text :
https://doi.org/10.5705/ss.202021.0206