Title of article
Adaptive density estimation: A curse of support?
Author/Authors
Reynaud-Bouret، نويسنده , , Patricia and Rivoirard، نويسنده , , Vincent and Tuleau-Malot، نويسنده , , Christine، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
25
From page
115
To page
139
Abstract
This paper deals with the classical problem of density estimation on the real line. Most of the existing papers devoted to minimax properties assume that the support of the underlying density is bounded and known. But this assumption may be very difficult to handle in practice. In this work, we show that, exactly as a curse of dimensionality exists when the data lie in R d , there exists a curse of support as well when the support of the density is infinite. As for the dimensionality problem where the rates of convergence deteriorate when the dimension grows, the minimax rates of convergence may deteriorate as well when the support becomes infinite. This problem is not purely theoretical since the simulations show that the support-dependent methods are really affected in practice by the size of the density support, or by the weight of the density tail. We propose a method based on a biorthogonal wavelet thresholding rule that is adaptive with respect to the nature of the support and the regularity of the signal, but that is also robust in practice to this curse of support. The threshold, that is proposed here, is very accurately calibrated so that the gap between optimal theoretical and practical tuning parameters is almost filled.
Keywords
WAVELET , Thresholding rule , Density estimation , Infinite support
Journal title
Journal of Statistical Planning and Inference
Serial Year
2011
Journal title
Journal of Statistical Planning and Inference
Record number
2221067
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