Empirical likelihood based testing for regression

Abstract

Consider a random vector (X,Y) and let m(x)=E(Y|X=x). We are interested in testing H0:m∈ M, G=\γ(·,θ,g):θ ∈ ,g∈ G\ for some known function γ, some compact set ⊂ IRp and some function set G of real valued functions. Specific examples of this general hypothesis include testing for a parametric regression model, a generalized linear model, a partial linear model, a single index model, but also the selection of explanatory variables can be considered as a special case of this hypothesis. To test this null hypothesis, we make use of the so-called marked empirical process introduced by and studied by for the particular case of parametric regression, in combination with the modern technique of empirical likelihood theory in order to obtain a powerful testing procedure. The asymptotic validity of the proposed test is established, and its finite sample performance is compared with other existing tests by means of a simulation study.

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