Abstract :
Let (X1,Y1), . . . , (Xn,Yn) be independent and identically distributed random variables
and let l(x) be the unknown p-quantile regression curve of Y conditional on X.
A quantile smoother ln(x) is a localized, nonlinear estimator of l(x). The strong uniform
consistency rate is established under general conditions. In many applications
it is necessary to know the stochastic fluctuation of the process {ln(x)−l(x)}. Using
strong approximations of the empirical process and extreme value theory, we consider
the asymptotic maximal deviation sup0x1 |ln(x)−l(x)|. The derived result
helps in the construction of a uniform confidence band for the quantile curve l(x).
This confidence band can be applied as a econometric model check. An economic
application considers the relation between age and earnings in the labor market by
means of parametric model specification tests, which presents a new framework to
describe trends in the entire wage distribution in a parsimonious way.