Abstract
A general approach to the first order asymptotic analysis of penalized likelihood and related estimators is described. The method gives expansions for the systematic and random error. Asymptotic convergence rates in a family of spectral norms are obtained. The theory applies to a broad range of function estimation problems including nonparametric density, hazard and generalized regression curve estimation. Some examples are provided. CR - Copyright © 1990 Institute of Mathematical Statistics
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CITATION STYLE
Cox, D. D., & O’Sullivan, F. (2007). Asymptotic Analysis of Penalized Likelihood and Related Estimators. The Annals of Statistics, 18(4). https://doi.org/10.1214/aos/1176347872
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