Efficiency of profile likelihood in semi-parametric models |
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Authors: | Yuichi Hirose |
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Affiliation: | 1.School of Mathematics, Statistics and Operations Research,Victoria University of Wellington,Wellington,New Zealand |
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Abstract: | Profile likelihood is a popular method of estimation in the presence of an infinite-dimensional nuisance parameter, as the method reduces the infinite-dimensional estimation problem to a finite-dimensional one. In this paper we investigate the efficiency of a semi-parametric maximum likelihood estimator based on the profile likelihood. By introducing a new parametrization, we improve on the seminal work of Murphy and van der Vaart (J Am Stat Assoc, 95: 449–485, 2000): our improvement establishes the efficiency of the estimator through the direct quadratic expansion of the profile likelihood, which requires fewer assumptions. To illustrate the method an application to two-phase outcome-dependent sampling design is given. |
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