| Literature DB >> 24791133 |
Abstract
In this article, we propose generalized Bayesian dynamic factor models for jointly modeling mixed-measurement time series. The framework allows mixed-scale measurements associated with each time series, with different measurements having different distributions in the exponential family conditionally on time-varying latent factor(s). Efficient Bayesian computational algorithms are developed for posterior inference on both the latent factors and model parameters, based on a Metropolis Hastings algorithm with adaptive proposals. The algorithm relies on a Greedy Density Kernel Approximation (GDKA) and parameter expansion with latent factor normalization. We tested the framework and algorithms in simulated studies and applied them to the analysis of intertwined credit and recovery risk for Moody's rated firms from 1982-2008, illustrating the importance of jointly modeling mixed-measurement time series. The article has supplemental materials available online.Entities:
Keywords: Adaptive Metropolis Hastings; Bayesian; Dynamic Factor Model; Exponential Family; Mixed-Measurement Time Series
Year: 2014 PMID: 24791133 PMCID: PMC4004613 DOI: 10.1080/10618600.2012.729986
Source DB: PubMed Journal: J Comput Graph Stat ISSN: 1061-8600 Impact factor: 2.302