Tensor Bayesian Copula Factor Models for High-Dimensional Mixed Time Series Data

Abstract Number:

2128 

Submission Type:

Contributed Abstract 

Contributed Abstract Type:

Speed 

Participants:

Hadi Safari Katesari (1), Samira Zaroudi (2), S. Yaser Samadi (3)

Institutions:

(1) Hostos Community College-CUNY, United States, (2) John Jay College of Criminal Justice-CUNY, United States, (3) Southern Illinois University-Carbondale, United States

Co-Author(s):

Samira Zaroudi  
John Jay College of Criminal Justice-CUNY
S. Yaser Samadi  
Southern Illinois University-Carbondale

Speaker:

Hadi Safari Katesari  
Hostos Community College-CUNY

Abstract Text:

We propose a tensor Bayesian copula factor autoregressive model with multivariate responses for analyzing mixed-type time series data with both main effects and interactions. The model is motivated by the need to study dynamic relationships between macroeconomic variables and stock market indices, leading naturally to tensor-valued posterior distributions. Dependence is captured through latent factors in both the multivariate response time series and high-dimensional mixed-type covariates within a quadratic time series regression framework coupled with copula functions. To enhance computational efficiency, we employ a semiparametric extended rank likelihood for the marginal distributions of the covariates, substantially reducing parameter dimensionality. Posterior inference is performed using Metropolis–Hastings and Forward Filtering Backward Sampling algorithms embedded in a Gibbs sampling scheme. The effectiveness of the proposed methodology is demonstrated through extensive simulation studies and an application to a real macroeconomic dataset.

Keywords:

Multivariate tensor time series|Bayesian inference|Factor analysis|Copula models| |

Sponsors:

Section on Bayesian Statistical Science

Tracks:

Bayesian Computation

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