Multivariate probit models (MPM) have the appealing feature of capturing some of the dependence structure between the components of multidimensional binary responses. The key for the dependence modelling is the covariance matrix of an underlying latent multivariate Gaussian. Most approaches to MLE in multivariate probit regression rely on MCEM algorithms to avoid computationally intensive evaluations of multivariate normal orthant probabilities. As an alternative to the much used Gibbs sampler a new SMC sampler for truncated multivariate normals is proposed. The algorithm proceeds in two stages where samples are first drawn from truncated multivariate Student t distributions and then further evolved towards a Gaussian. The sampler is then e...
A Monte Carlo algorithm is said to be adaptive if it can adjust automaticallyits current proposal di...
This paper is concerned with statistical inference in multinomial probit, multinomial-$t$ and multin...
Statistical inference in multinomial multiperiod probit models has been hindered in the past by the ...
Keywords: MCEM algorithm; Gibbs sampler; Multivariate probit model; Multi-group; BIC.The main purpos...
Correlated binary data arise in many applications. Any analysis of this type of data should take in...
We discuss computational issues in the sequential probit model that have limited its use in applied ...
Multivariate ordinal data arise in many areas of applications. This paper proposes new efficient met...
Generalised linear mixed model analysis via sequential Monte Carlo sampling We present a sequential ...
This article is motivated by the difficulty of applying standard simulation techniques when identifi...
This article is motivated by the difficulty of applying standard simulation techniques when iden-tif...
[[abstract]]Estimation of the probit model with autocorrelated errors often involves the calculation...
Consider a random pair of binary responses, i.e. with taking values 1 or 2. Assume that probabili...
We propose a Bayesian approach for inference in the multivariate probit model, taking into account t...
We propose a new framework for how to use sequential Monte Carlo (SMC) algorithms for inference in p...
We discuss the application of the GHK simulation method for maximum likelihood estimation of the mul...
A Monte Carlo algorithm is said to be adaptive if it can adjust automaticallyits current proposal di...
This paper is concerned with statistical inference in multinomial probit, multinomial-$t$ and multin...
Statistical inference in multinomial multiperiod probit models has been hindered in the past by the ...
Keywords: MCEM algorithm; Gibbs sampler; Multivariate probit model; Multi-group; BIC.The main purpos...
Correlated binary data arise in many applications. Any analysis of this type of data should take in...
We discuss computational issues in the sequential probit model that have limited its use in applied ...
Multivariate ordinal data arise in many areas of applications. This paper proposes new efficient met...
Generalised linear mixed model analysis via sequential Monte Carlo sampling We present a sequential ...
This article is motivated by the difficulty of applying standard simulation techniques when identifi...
This article is motivated by the difficulty of applying standard simulation techniques when iden-tif...
[[abstract]]Estimation of the probit model with autocorrelated errors often involves the calculation...
Consider a random pair of binary responses, i.e. with taking values 1 or 2. Assume that probabili...
We propose a Bayesian approach for inference in the multivariate probit model, taking into account t...
We propose a new framework for how to use sequential Monte Carlo (SMC) algorithms for inference in p...
We discuss the application of the GHK simulation method for maximum likelihood estimation of the mul...
A Monte Carlo algorithm is said to be adaptive if it can adjust automaticallyits current proposal di...
This paper is concerned with statistical inference in multinomial probit, multinomial-$t$ and multin...
Statistical inference in multinomial multiperiod probit models has been hindered in the past by the ...