Quantile crossing is a common phenomenon in shape constrained nonparametric quantile regression. A direct approach to address this problem is to impose non-crossing constraints to convex quantile regression. However, the non-crossing constraints may violate an intrinsic quantile property. This paper proposes a penalized convex quantile regression approach that can circumvent quantile crossing while maintaining the quantile property. A Monte Carlo study demonstrates the superiority of the proposed penalized approach in addressing the quantile crossing problem
--Quantile estimation , conditional distribution , local linear estimate , Nadaraya Watson estimate ...
Quantile regression and conditional density estimation can reveal structure that is missed by mean r...
Quantile regression methods have been used widely in finance to alleviate estimationproblems related...
Quantile crossing is a common phenomenon in shape constrained nonparametric quantile regression. A ...
Quantile regression can be used to obtain a nonparametric estimate of a conditional quantile functi...
In regression, the desired estimate of y|x is not always given by a conditional mean, although this...
Since the introduction by Koenker and Bassett, quantile regression has become increasingly important...
Since quantile regression curves are estimated individually, the quantile curves can cross, leading ...
Quantile regression models provide a wide picture of the conditional distributions of the response v...
Quantile regression can be used to obtain a non-parametric estimate of a conditional quantile funct...
Quantile regression and partial frontier are two distinct approaches to nonparametric quantile fron...
Since quantile regression curves are estimated individually, the quantile curves can cross, leading ...
Quantile regression (QR) has gained popularity during the last decades, and is now considered a stan...
This paper proposes a method to address the longstanding problem of lack of monotonicity in estimati...
Since quantile regression curves are estimated individually, the quantile curves can cross, lead-ing...
--Quantile estimation , conditional distribution , local linear estimate , Nadaraya Watson estimate ...
Quantile regression and conditional density estimation can reveal structure that is missed by mean r...
Quantile regression methods have been used widely in finance to alleviate estimationproblems related...
Quantile crossing is a common phenomenon in shape constrained nonparametric quantile regression. A ...
Quantile regression can be used to obtain a nonparametric estimate of a conditional quantile functi...
In regression, the desired estimate of y|x is not always given by a conditional mean, although this...
Since the introduction by Koenker and Bassett, quantile regression has become increasingly important...
Since quantile regression curves are estimated individually, the quantile curves can cross, leading ...
Quantile regression models provide a wide picture of the conditional distributions of the response v...
Quantile regression can be used to obtain a non-parametric estimate of a conditional quantile funct...
Quantile regression and partial frontier are two distinct approaches to nonparametric quantile fron...
Since quantile regression curves are estimated individually, the quantile curves can cross, leading ...
Quantile regression (QR) has gained popularity during the last decades, and is now considered a stan...
This paper proposes a method to address the longstanding problem of lack of monotonicity in estimati...
Since quantile regression curves are estimated individually, the quantile curves can cross, lead-ing...
--Quantile estimation , conditional distribution , local linear estimate , Nadaraya Watson estimate ...
Quantile regression and conditional density estimation can reveal structure that is missed by mean r...
Quantile regression methods have been used widely in finance to alleviate estimationproblems related...