The CDF-quantile family of two-parameter distributions with support (0, 1) described in Smithson and Merkle (2014) and recently elaborated by Smithson and Shou (2017), considerably expands the variety of distributions available for modeling random variables on the unit interval. This family is especially useful for modeling quantiles, and also sometimes out-performs the other distributions. The distributions are very tractable, with a location and dispersion parameter, explicit probability distribution functions, cumulative distribution functions, and quantiles. They enable a wide variety of quantile regression models with predictors for the location and dispersion parameters, and simple interpretations of those parameters. The R package cd...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
The package fitdistrplus provides functions for fitting univariate distributions to different types ...
In this paper, we introduce the R package gendist that computes the probability density function, th...
The CDF-quantile family of two-parameter distributions with support (0, 1) described in Smithson and...
BSquare in an R package to conduct Bayesian quantile regression for continuous, discrete, and censor...
In quantile regression, various quantiles of a response variable Y are modelled as functions of cova...
Quantile regression allows to assess the impact of some covariate X on a response Y .An important ap...
International audienceIn quantile regression, various quantiles of a response variable Y are modelle...
The contributed R package Newdistns written by the authors is introduced. This package computes the ...
This article describes an R package bqror that estimates Bayesian quantile regression for ordinal mo...
We introduce a set of new Gibbs sampler for Bayesian analysis of quantile re-gression model. The new...
Galton used quantiles more than a hundred years ago in describing data. Tukey and Parzen used them i...
The R package quantreg.nonpar implements nonparametric quantile regression methods to estimate and m...
Abstract. Quantile regression is an evolving body of statistical methods for estimating and drawing ...
Learning about the shape of a probability distribution, not just about its location or dispersion, i...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
The package fitdistrplus provides functions for fitting univariate distributions to different types ...
In this paper, we introduce the R package gendist that computes the probability density function, th...
The CDF-quantile family of two-parameter distributions with support (0, 1) described in Smithson and...
BSquare in an R package to conduct Bayesian quantile regression for continuous, discrete, and censor...
In quantile regression, various quantiles of a response variable Y are modelled as functions of cova...
Quantile regression allows to assess the impact of some covariate X on a response Y .An important ap...
International audienceIn quantile regression, various quantiles of a response variable Y are modelle...
The contributed R package Newdistns written by the authors is introduced. This package computes the ...
This article describes an R package bqror that estimates Bayesian quantile regression for ordinal mo...
We introduce a set of new Gibbs sampler for Bayesian analysis of quantile re-gression model. The new...
Galton used quantiles more than a hundred years ago in describing data. Tukey and Parzen used them i...
The R package quantreg.nonpar implements nonparametric quantile regression methods to estimate and m...
Abstract. Quantile regression is an evolving body of statistical methods for estimating and drawing ...
Learning about the shape of a probability distribution, not just about its location or dispersion, i...
Modeling quantile regression coefficients functions permits describing the coefficients of a quanti...
The package fitdistrplus provides functions for fitting univariate distributions to different types ...
In this paper, we introduce the R package gendist that computes the probability density function, th...