In this paper, nonparametric estimation of conditional quantiles of a nonlinear time series model is formulated as a nonsmooth optimization problem involving an asymmetric loss function. This asymmetric loss function is nonsmooth and is of the same structure as the so-called 'lopsided' absolute value function. Using an effective smoothing approximation method introduced for this lopsided absolute value function, we obtain a sequence of approximate smooth optimization problems. Some important convergence properties of the approximation are established. Each of these smooth approximate optimization problems is solved by an optimization algorithm based on a sequential quadratic programming approximation with active set strategy. Within the fra...
In this paper, we construct a new class of estimators for conditional quantiles in possibly misspec...
This paper develops a nonparametric method to estimate a conditional quantile function for a panel d...
The main objective of this paper is to estimate non-parametrically the quantiles of a conditional d...
In this paper a new nonparametric estimate of conditional quantiles is proposed, that avoids the pro...
Since the introduction by Koenker and Bassett, quantile regression has become increasingly important...
We propose a new approach to conditional quantile function estimation that combines both parametric ...
We consider the problem of estimating the conditional quantile of a time series at time t given obse...
We define a nonparametric prewhitening method for estimating conditional quantiles based on local li...
The aim of this paper is to estimate nonparametrically the conditional quantile density function. A ...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
Conditional quantile curves provide a comprehensive picture of a response contingent on explanatory ...
We consider smooth estimation of the conditional quantile process in linear models using penalized s...
AbstractMany processes can be represented in a simple form as infinite-order linear series. In such ...
Let (X, Y) be a random vector such that X is d-dimensional, Y is real valued, and [theta](X) is the ...
In this paper, we construct a new class of estimators for conditional quantiles in possibly misspec...
This paper develops a nonparametric method to estimate a conditional quantile function for a panel d...
The main objective of this paper is to estimate non-parametrically the quantiles of a conditional d...
In this paper a new nonparametric estimate of conditional quantiles is proposed, that avoids the pro...
Since the introduction by Koenker and Bassett, quantile regression has become increasingly important...
We propose a new approach to conditional quantile function estimation that combines both parametric ...
We consider the problem of estimating the conditional quantile of a time series at time t given obse...
We define a nonparametric prewhitening method for estimating conditional quantiles based on local li...
The aim of this paper is to estimate nonparametrically the conditional quantile density function. A ...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
Conditional quantile curves provide a comprehensive picture of a response contingent on explanatory ...
We consider smooth estimation of the conditional quantile process in linear models using penalized s...
AbstractMany processes can be represented in a simple form as infinite-order linear series. In such ...
Let (X, Y) be a random vector such that X is d-dimensional, Y is real valued, and [theta](X) is the ...
In this paper, we construct a new class of estimators for conditional quantiles in possibly misspec...
This paper develops a nonparametric method to estimate a conditional quantile function for a panel d...
The main objective of this paper is to estimate non-parametrically the quantiles of a conditional d...