We study the problem of nonparametric estimation of a multivariate function
g:Rd→R that can be represented as a composition of two
unknown smooth functions f:R→R and G:Rd→R. We suppose that f and G belong to known smoothness classes of
functions, with smoothness γ and β, respectively. We obtain the
full description of minimax rates of estimation of g in terms of γ and
β, and propose rate-optimal estimators for the sup-norm loss. For the
construction of such estimators, we first prove an approximation result for
composite functions that may have an independent interest, and then a result on
adaptation to the local structure. Interestingly, the construction of
rate-optimal estimators for composite functions (with given, fixed smoothness)
needs adaptation, but not in the traditional sense: it is now adaptation to the
local structure. We prove that composition models generate only two types of
local structures: the local single-index model and the local model with
roughness isolated to a single dimension (i.e., a model containing elements of
both additive and single-index structure). We also find the zones of (γ,
β) where no local structure is generated, as well as the zones where the
composition modeling leads to faster rates, as compared to the classical
nonparametric rates that depend only to the overall smoothness of g.Comment: Published in at http://dx.doi.org/10.1214/08-AOS611 the Annals of
Statistics (http://www.imstat.org/aos/) by the Institute of Mathematical
Statistics (http://www.imstat.org