Abstract
In this paper, we outline a general approach to estimating the parametric component of a semiparametric model. For the case of a scalar parametric component, the method is based on the idea of first estimating a one-dimensional subproblem of the original problem that is least favorable in the sense of Stein. The likelihood function for the scalar parameter along this estimated subproblem may be viewed as a generalization of the profile likelihood for the problem. The scalar parameter is then estimated by maximizing this "generalized profile likelihood." This method of estimation is applied to a particular class of semiparametric models, where it is shown that the resulting estimator is asymptotically efficient.
Citation
Thomas A. Severini. Wing Hung Wong. "Profile Likelihood and Conditionally Parametric Models." Ann. Statist. 20 (4) 1768 - 1802, December, 1992. https://doi.org/10.1214/aos/1176348889
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