This article describes an R package bqror that estimates Bayesian quantile regression for ordinal models introduced in Rahman (2016). The paper classifies ordinal models into two types and offers computationally efficient, yet simple, Markov chain Monte Carlo (MCMC) algorithms for estimating ordinal quantile regression. The generic ordinal model with 3 or more outcomes (labeled ORI model) is estimated by a combination of Gibbs sampling and Metropolis-Hastings algorithm. Whereas an ordinal model with exactly 3 outcomes (labeled ORII model) is estimated using Gibbs sampling only. In line with the Bayesian literature, we suggest using marginal likelihood for comparing alternative quantile regression models and explain how to compute the same. ...
This dissertation proposes multinomial probit Bayesian additive regression trees (MPBART), ordered m...
Title: Regression Quantiles Author: Peter Rusnák Department: Department of Probabilty and Mathematic...
This article reports a Monte Carlo evaluation of ordinal statistic d with modified confidence interv...
This article develops a random effects quantile regression model for panel data that allows for incr...
This dissertation consists of three essays on the application of Transformed Ordinal Quantile Regres...
We review some current approaches to the analysis of the relation between an ordinal response variab...
BSquare in an R package to conduct Bayesian quantile regression for continuous, discrete, and censor...
We introduce a set of new Gibbs sampler for Bayesian analysis of quantile re-gression model. The new...
This article introduces the R package hermiter which facilitates estimation of univariate and bivari...
The CDF-quantile family of two-parameter distributions with support (0, 1) described in Smithson and...
Generalized additive models (GAMs) are flexible non-linear regression models, which can be fitted ef...
Although frequentist estimators can effectively fit ordinal confirmatory factor analysis (CFA) model...
In this article, I introduce the sivqr command, which estimates the coefficients of the instrumental...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
Researchers have a variety of options when choosing statistical software packages that can perform o...
This dissertation proposes multinomial probit Bayesian additive regression trees (MPBART), ordered m...
Title: Regression Quantiles Author: Peter Rusnák Department: Department of Probabilty and Mathematic...
This article reports a Monte Carlo evaluation of ordinal statistic d with modified confidence interv...
This article develops a random effects quantile regression model for panel data that allows for incr...
This dissertation consists of three essays on the application of Transformed Ordinal Quantile Regres...
We review some current approaches to the analysis of the relation between an ordinal response variab...
BSquare in an R package to conduct Bayesian quantile regression for continuous, discrete, and censor...
We introduce a set of new Gibbs sampler for Bayesian analysis of quantile re-gression model. The new...
This article introduces the R package hermiter which facilitates estimation of univariate and bivari...
The CDF-quantile family of two-parameter distributions with support (0, 1) described in Smithson and...
Generalized additive models (GAMs) are flexible non-linear regression models, which can be fitted ef...
Although frequentist estimators can effectively fit ordinal confirmatory factor analysis (CFA) model...
In this article, I introduce the sivqr command, which estimates the coefficients of the instrumental...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
Researchers have a variety of options when choosing statistical software packages that can perform o...
This dissertation proposes multinomial probit Bayesian additive regression trees (MPBART), ordered m...
Title: Regression Quantiles Author: Peter Rusnák Department: Department of Probabilty and Mathematic...
This article reports a Monte Carlo evaluation of ordinal statistic d with modified confidence interv...