Uniform convergence rates and uniform adaptive estimation in mixtures of regressions

In this thesis, we develop theoretical tools to examine estimators in non-parametric regression models in regard of uniform convergence rates and uniform adaptivity with respect to the smoothness of the parameter functions. Subsequently, those are applied to non-parametric regression models with Höl...

Бүрэн тодорхойлолт

-д хадгалсан:
Номзүйн дэлгэрэнгүй
Үндсэн зохиолч: Werner, Heiko
Бусад зохиолчид: Holzmann, Hajo (Prof. Dr.) (Дипломын ажлын зөвлөх)
Формат: Dissertation
Хэл сонгох:англи
Хэвлэсэн: Philipps-Universität Marburg 2018
Нөхцлүүд:
Онлайн хандалт:PDF-н бүрэн текст
Шошгууд: Шошго нэмэх
Шошго байхгүй, Энэхүү баримтыг шошголох эхний хүн болох!
Тодорхойлолт
Тойм:In this thesis, we develop theoretical tools to examine estimators in non-parametric regression models in regard of uniform convergence rates and uniform adaptivity with respect to the smoothness of the parameter functions. Subsequently, those are applied to non-parametric regression models with Hölder-smooth parameter functions. One model is a mixture of Gaussian regressions and the other model is a mixture model with two components and an unspecified symmetric error distribution.
Биет тодорхойлолт:166 Seiten
DOI:10.17192/z2019.0100