In regression, the desired estimate of y|x is not always given by a conditional mean, although this is most common. Sometimes one wants to obtain a good estimate that satisfies the property that a proportion, t, of y|x, will be below the estimate. For t = 0.5 this is an estimate of the median. What might be called median regression, is subsumed under the term quantile regression. We present a nonparametric version of a quantile estimator, which can be obtained by solving a simple quadratic programming problem and provide uniform convergence statements and bounds on the quantile property of our estimator. Experimental results show the feasibility of the approach and competitiveness of our method with existing ones. We discuss several ...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
<正> The ordinary quantiles for univariate data were successfully generalized to linear modelsi...
In regression, the desired estimate of y|x is not always given by a conditional mean, although this ...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
Abstract. Classical least squares regression may be viewed as a natural way of extending the idea of...
Quantile regression can be used to obtain a nonparametric estimate of a conditional quantile functi...
An algorithm for computing parametric linear quantile regression estimates subject to linear inequal...
Quantile crossing is a common phenomenon in shape constrained nonparametric quantile regression. A d...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
144 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.The work presented here is a ...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
The work of three leading "gures in the early history of econometrics is used to motivate some ...
Since the introduction by Koenker and Bassett, quantile regression has become increasingly important...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
<正> The ordinary quantiles for univariate data were successfully generalized to linear modelsi...
In regression, the desired estimate of y|x is not always given by a conditional mean, although this ...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
Abstract. Classical least squares regression may be viewed as a natural way of extending the idea of...
Quantile regression can be used to obtain a nonparametric estimate of a conditional quantile functi...
An algorithm for computing parametric linear quantile regression estimates subject to linear inequal...
Quantile crossing is a common phenomenon in shape constrained nonparametric quantile regression. A d...
Abstract: We define a nonparametric prewhitening method for estimating condi-tional quantiles based ...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
144 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2000.The work presented here is a ...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
The work of three leading "gures in the early history of econometrics is used to motivate some ...
Since the introduction by Koenker and Bassett, quantile regression has become increasingly important...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
<正> The ordinary quantiles for univariate data were successfully generalized to linear modelsi...