Optimal testing for additivity in multiple nonparametric regression

Abstract
We consider the problem of testing for additivity in the standard multiple nonparametric regression model. We derive optimal (in the minimax sense) non- adaptive and adaptive hypothesis testing procedures for additivity against the composite nonparametric alternative that the response function involves interactions of second or higher orders separated away from zero in L 2([0, 1] d )-norm and also possesses some smoothness properties. In order to shed some light on the theoretical results obtained, we carry out a wide simulation study to examine the finite sample performance of the proposed hypothesis testing procedures and compare them with a series of other tests for additivity available in the literature.
Anno
2009
Autori IAC
Tipo pubblicazione
Altri Autori
Abramovich F.; De Feis I.; Sapatinas T.
Editore
Springer
Rivista
Annals of the Institute of Statistical Mathematics