Efficient and Adaptive Estimation for Semiparametric Models (Johns Hopkins Series in the Mathematical Sciences)

by Peter J. Bickel, etc., Chris A.J. Klaassen, Yaacov Ritov, and Jon A. Wellner

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Book cover for Efficient and Adaptive Estimation for Semiparametric Models

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Wherever statistics is applied, the need to combine interpretable structure with a minimum of assumptions about random fluctuations leads to the use of semiparametric models. In theories of economic choice, for instance, decision making is modeled in part by parametric relations suggested by economic theory and in part by individual fluctuations about which little is known or assumed. Another well-known example, the proportional hazards model of survival analysis, permits an arbitrary baseline hazard rate for a human lifetime but postulates that such variables as medical treatment, age and gender act on the baseline only through parametric scaling factors. This book unifies the theory of estimation in such examples. The authors show how the classical information bounds developed for parametric models extend naturally to nonparametric and semiparametric models. They then apply these techniques in as broad a range of models as possible, illustrating the ease with which heuristic calculations of "optimal behaviour" can be carried out.
  • ISBN10 0801845416
  • ISBN13 9780801845413
  • Publish Date 1 September 1993
  • Publish Status Out of Stock
  • Out of Print 12 September 2003
  • Publish Country US
  • Imprint Johns Hopkins University Press
  • Format Hardcover
  • Pages 640
  • Language English