Consistencies and rates of convergence of jump penalized least squares estimators

2009 | journal article; research paper. A publication with affiliation to the University of Göttingen.

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​Consistencies and rates of convergence of jump penalized least squares estimators​
Boysen, L.; Kempe, A.; Liebscher, V.; Munk, A.   & Wittich, O.​ (2009) 
Annals of statistics37(1) pp. 157​-183​.​ DOI: https://doi.org/10.1214/07-AOS558 

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Authors
Boysen, Leif; Kempe, Angela; Liebscher, Volkmar; Munk, Axel ; Wittich, Olaf
Abstract
We study the asymptotics for jump-penalized least squares regression aiming at approximating a regression function by piecewise constant functions. Besides conventional consistency and convergence rates of the estimates in L(2)([0, 1)) our results cover other metrics like Skorokhod metric on the space of cadlag functions and uniform metrics on C([0, 1]). We will show that these estimators are in an adaptive sense rate optimal over certain classes of "approximation spaces." Special cases are the class of functions of bounded variation (piecewise) Holder continuous functions of order 0 < alpha <= 1 and the class of step functions with a finite but arbitrary number of jumps. In the latter setting, we will also deduce the rates known from change-point analysis for detecting the jumps. Finally, the issue of fully automatic selection of the smoothing parameter is addressed.
Issue Date
2009
Journal
Annals of statistics 
ISSN
0090-5364
Language
English

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