We consider the problem of estimation of a shift parameter of an unknown symmetric function in Gaussian white noise. We introduce a notion of semiparametric second-order efficiency and propose estimators that are semiparametrically efficient and second-order efficient in our model. These estimators are of a penalized maximum likelihood type with an appropriately chosen penalty. We argue that second-order efficiency is crucial in semiparametric problems since only the second-order terms in asymptotic expansion for the risk account for the behavior of the "nonparametric component" of a semiparametric procedure, and they are not dramatically smaller than the first-order terms. © Institute or Mathematical Statistics, 2006.
CITATION STYLE
Dalalyan, A. S., Golubev, G. K., & Tsybakov, A. B. (2006). Penalized maximum likelihood and semiparametric second-order efficiency. Annals of Statistics, 34(1), 169–201. https://doi.org/10.1214/009053605000000895
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