Estimation of the Error Density in a Semiparametric Transformation Model

Abstract

Consider the semiparametric transformation model θo(Y)=m(X)+ε, where θo is an unknown finite dimensional parameter, the functions θo and m are smooth, ε is independent of X, and (ε)=0. We propose a kernel-type estimator of the density of the error ε, and prove its asymptotic normality. The estimated errors, which lie at the basis of this estimator, are obtained from a profile likelihood estimator of θo and a nonparametric kernel estimator of m. The practical performance of the proposed density estimator is evaluated in a simulation study.

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