Factor modeling is a popular strategy to induce sparsity in multivariate models as they scale to higher dimensions. We develop Bayesian inference for a recently proposed latent factor copula model, which utilizes a pair copula construction to couple the variables with the latent factor. We use adaptive rejection Metropolis sampling (ARMS) within Gibbs sampling for posterior simulation: Gibbs sampling enables application to Bayesian problems, while ARMS is an adaptive strategy that replaces traditional Metropolis-Hastings updates, which typically require careful tuning. Our simulation study shows favorable performance of our proposed approach both in terms of sampling efficiency and accuracy. We provide an extensive application example using...
This paper discusses the practical aspects of modeling the structure of dependence of national stock...
We solve the asset allocation problem where investors choose to invest among risk-free assets, a pas...
The aim of this paper is to introduce a new methodology for operational risk management, based on Ba...
Copula densities are widely used to model the dependence structure of financial time series. However...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
<p>We develop efficient Bayesian inference for the one-factor copula model with two significant cont...
Factor copula models have been recently proposed for describing the joint distribution of a large nu...
cas Gaussian factor models have proven widely useful for parsimoniously char-acterizing dependence i...
Regular vine copulas are a flexible class of dependence models, but Bayesian methodology for model s...
In financial risk management, modelling dependency within a random vector X is crucial, a standard a...
Copula models provide an effective tool for modeling joint distributions. Model selection allowing t...
Presents an introduction to Bayesian Statistics, presents an emphasis on Bayesian methods (prior and...
One of the most popular copulas for modeling dependence structures is t-copula. Recently the grouped...
Copula models have become one of the most widely used tools in the applied modelling of multivariate...
Copulas provide a potential useful modeling tool to represent the dependence structure among variab...
This paper discusses the practical aspects of modeling the structure of dependence of national stock...
We solve the asset allocation problem where investors choose to invest among risk-free assets, a pas...
The aim of this paper is to introduce a new methodology for operational risk management, based on Ba...
Copula densities are widely used to model the dependence structure of financial time series. However...
Copulas have been applied to many research areas as multivariate probability distributions for non-l...
<p>We develop efficient Bayesian inference for the one-factor copula model with two significant cont...
Factor copula models have been recently proposed for describing the joint distribution of a large nu...
cas Gaussian factor models have proven widely useful for parsimoniously char-acterizing dependence i...
Regular vine copulas are a flexible class of dependence models, but Bayesian methodology for model s...
In financial risk management, modelling dependency within a random vector X is crucial, a standard a...
Copula models provide an effective tool for modeling joint distributions. Model selection allowing t...
Presents an introduction to Bayesian Statistics, presents an emphasis on Bayesian methods (prior and...
One of the most popular copulas for modeling dependence structures is t-copula. Recently the grouped...
Copula models have become one of the most widely used tools in the applied modelling of multivariate...
Copulas provide a potential useful modeling tool to represent the dependence structure among variab...
This paper discusses the practical aspects of modeling the structure of dependence of national stock...
We solve the asset allocation problem where investors choose to invest among risk-free assets, a pas...
The aim of this paper is to introduce a new methodology for operational risk management, based on Ba...