A continuous Gaussian approximation to a nonparametric regression in two dimensions
Carter, Andrew V.
Bernoulli, Tome 12 (2006) no. 2, p. 143-156 / Harvested from Project Euclid
Estimating the mean in a nonparametric regression on a two-dimensional regular grid of design points is asymptotically equivalent to estimating the drift of a continuous Gaussian process on the unit square. In particular, we provide a construction of a Brownian sheet process with a drift that is almost the mean function in the nonparametric regression. This can be used to apply estimation or testing procedures from the continuous process to the regression experiment as in Le~Cam's theory of equivalent experiments. Our result is motivated by first looking at the amount of information lost in binning the data in a density estimation problem.
Publié le : 2006-02-14
Classification:  asymptotic equivalence of experiments,  density estimation,  nonparametric regression
@article{1141136654,
     author = {Carter, Andrew V.},
     title = {A continuous Gaussian approximation to a nonparametric regression in two dimensions},
     journal = {Bernoulli},
     volume = {12},
     number = {2},
     year = {2006},
     pages = { 143-156},
     language = {en},
     url = {http://dml.mathdoc.fr/item/1141136654}
}
Carter, Andrew V. A continuous Gaussian approximation to a nonparametric regression in two dimensions. Bernoulli, Tome 12 (2006) no. 2, pp.  143-156. http://gdmltest.u-ga.fr/item/1141136654/