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Sequential Model Selection Method for Nonparametric Autoregression

Statistics Theory 2018-09-10 v1 Statistics Theory

Abstract

In this paper for the first time the nonparametric autoregression estimation problem for the quadratic risks is considered. To this end we develop a new adaptive sequential model selection method based on the efficient sequential kernel estimators proposed by Arkoun and Pergamenshchikov (2016). Moreover, we develop a new analytical tool for general regression models to obtain the non asymptotic sharp or- acle inequalities for both usual quadratic and robust quadratic risks. Then, we show that the constructed sequential model selection proce- dure is optimal in the sense of oracle inequalities.

Keywords

Cite

@article{arxiv.1809.02241,
  title  = {Sequential Model Selection Method for Nonparametric Autoregression},
  author = {Ouerdia Arkoun and Jean-Yves Brua and Serguei Pergamenshchikov},
  journal= {arXiv preprint arXiv:1809.02241},
  year   = {2018}
}

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30 pages