AbstractIn this paper bootstrap confidence bands are constructed for nonparametric quantile estimates of regression functions, where resampling is done from a suitably estimated empirical distribution function (edf) for residuals. It is known that the approximation error for the confidence band by the asymptotic Gumbel distribution is logarithmically slow. It is proved that the bootstrap approximation provides an improvement. The case of multidimensional and discrete regressor variables is dealt with using a partial linear model. An economic application considers the labor market differential effect with respect to different education levels
This paper evaluates bootstrap inference methods for quantile regression panel data models. We propo...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
The asymptotic variance matrix of the quantile regression estimator depends on the density of the er...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
Let ( X1 , Y 1), …, ( X, Y ) be independent and identically distributed random variables and let l (...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
This paper evaluates bootstrap inference methods for quantile regression panel data models. We propo...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
In this paper uniform confidence bands are constructed for nonparametric quantile estimates of regre...
The asymptotic variance matrix of the quantile regression estimator depends on the density of the er...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...
Let ( X1 , Y 1), …, ( X, Y ) be independent and identically distributed random variables and let l (...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
This paper evaluates bootstrap inference methods for quantile regression panel data models. We propo...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
We consider theoretical bootstrap "coupling" techniques for nonparametric robust smoothers and quant...