Quantile regression refers to the process of estimating the quantiles of a conditional distribution and has many important applications within econometrics and data mining, among other domains. In this paper, we show how to estimate these conditional quantile functions within a Bayes risk minimization framework using a Gaussian process prior. The resulting non-parametric probabilistic model is easy to implement and allows non-crossing quantile functions to be enforced. Moreover, it can directly be used in combination with tools and extensions of standard Gaussian Processes such as principled hyperparameter estimation, sparsification, and quantile regression with input-dependent noise rates. No existing approach enjoys all of these desirable...
Abstract: Socio-economic variables are often measured on a discrete scale or rounded to protect conf...
Quantile regression (QR) is a principal regression method for analyzing the impact of covariates on ...
This paper makes two main contributions to inference for conditional quantiles. First, we construct ...
Quantile regression refers to the process of estimating the quantiles of a conditional distribution ...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Abstract: This paper contains a complete procedure for calculating the value of a conditional quanti...
This paper investigates a nonparametric approach for estimating conditional quantiles of time series...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
We define a nonparametric prewhitening method for estimating conditional quantiles based on local li...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
This thesis develops and assesses new ways to study the conditional quantiles of a population using ...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Socio-economic variables are often measured on a discrete scale or rounded to protect confidentialit...
Let (X, Y) be a two dimensional random variable with a joint density function f(x, y) and a joint di...
Abstract: Socio-economic variables are often measured on a discrete scale or rounded to protect conf...
Quantile regression (QR) is a principal regression method for analyzing the impact of covariates on ...
This paper makes two main contributions to inference for conditional quantiles. First, we construct ...
Quantile regression refers to the process of estimating the quantiles of a conditional distribution ...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Abstract: This paper contains a complete procedure for calculating the value of a conditional quanti...
This paper investigates a nonparametric approach for estimating conditional quantiles of time series...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
We define a nonparametric prewhitening method for estimating conditional quantiles based on local li...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
This thesis develops and assesses new ways to study the conditional quantiles of a population using ...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Socio-economic variables are often measured on a discrete scale or rounded to protect confidentialit...
Let (X, Y) be a two dimensional random variable with a joint density function f(x, y) and a joint di...
Abstract: Socio-economic variables are often measured on a discrete scale or rounded to protect conf...
Quantile regression (QR) is a principal regression method for analyzing the impact of covariates on ...
This paper makes two main contributions to inference for conditional quantiles. First, we construct ...