WAVELET SHRINKAGE - ASYMPTOPIA

被引:4
|
作者
DONOHO, DL
JOHNSTONE, IM
KERKYACHARIAN, G
PICARD, D
机构
[1] STANFORD UNIV,DEPT STAT,STANFORD,CA 94305
[2] UNIV PICARDIE,AMIENS,FRANCE
[3] UNIV PARIS 07,PARIS,FRANCE
关键词
ADAPTIVE ESTIMATION; BESOV SPACES; DENSITY ESTIMATION; MINIMAX ESTIMATION; NONPARAMETRIC REGRESSION; OPTIMAL RECOVERY; SPATIAL ADAPTATION; WAVELET ORTHONORMAL BASES;
D O I
暂无
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Much recent effort has sought asymptotically minimax methods for recovering infinite dimensional objects-curves, densities, spectral densities, images-from noisy data. A now rich and complex body of work develops nearly or exactly minimax estimators for an array of interesting problems. Unfortunately, the results have rarely moved into practice, for a variety of reasons-among them being similarity to known methods, computational intractability and lack of spatial adaptivity. We discuss a method for curve estimation based on n noisy data: translate the empirical wavelet coefficients towards the origin by an amount root(2 log n)sigma/root n. The proposal differs from those in current use, is computationally practical and is spatially adaptive; it thus avoids several of the previous objections. Further, the method is nearly minimax both for a wide variety of loss functions-pointwise error, global error measured in L(p)-norms, pointwise and global error in estimation of derivatives-and for a wide range of smoothness classes, including standard Holder and Sobolev classes, and bounded variation. This is a much broader near optimality than anything previously proposed: we draw loose parallels with near optimality in robustness and also with the broad near eigenfunction properties of wavelets themselves. Finally, the theory underlying the method is interesting, as it exploits a correspondence between statistical questions and questions of optimal recovery and information-based complexity.
引用
下载
收藏
页码:301 / 337
页数:37
相关论文
共 50 条
  • [21] A Bayesian transformation model for wavelet shrinkage
    Ray, S
    Mallick, BK
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2003, 12 (12) : 1512 - 1521
  • [22] Wavelet shrinkage estimators of Hilbert transform
    Chen, Di-Rong
    Zhao, Yao
    JOURNAL OF APPROXIMATION THEORY, 2011, 163 (05) : 652 - 662
  • [23] Wavelet shrinkage for unequally spaced data
    Sylvain Sardy
    Donald B. Percival
    Andrew G. Bruce
    Hong-Ye Gao
    Werner Stuetzle
    Statistics and Computing, 1999, 9 : 65 - 75
  • [24] Adaptive seismic compression by wavelet shrinkage
    Khène, MF
    Abdul-Jauwad, SH
    PROCEEDINGS OF THE TENTH IEEE WORKSHOP ON STATISTICAL SIGNAL AND ARRAY PROCESSING, 2000, : 544 - 548
  • [25] Bayesian wavelet shrinkage with beta priors
    Sousa, Alex Rodrigo dos S.
    Garcia, Nancy L.
    Vidakovic, Brani
    COMPUTATIONAL STATISTICS, 2021, 36 (02) : 1341 - 1363
  • [26] Robust image wavelet shrinkage for denoising
    Lau, DL
    Arce, GR
    Gallagher, NC
    INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, PROCEEDINGS - VOL I, 1996, : 371 - 374
  • [27] Multivariate Bayes wavelet shrinkage and applications
    Huerta, G
    JOURNAL OF APPLIED STATISTICS, 2005, 32 (05) : 529 - 542
  • [28] Wavelet Shrinkage with Double Weibull Prior
    Remenyi, Norbert
    Vidakovic, Brani
    COMMUNICATIONS IN STATISTICS-SIMULATION AND COMPUTATION, 2015, 44 (01) : 88 - 104
  • [29] Bayesian wavelet shrinkage with beta priors
    Alex Rodrigo dos S. Sousa
    Nancy L. Garcia
    Brani Vidakovic
    Computational Statistics, 2021, 36 : 1341 - 1363
  • [30] Cross-validated wavelet shrinkage
    Hee-Seok Oh
    Donghoh Kim
    Youngjo Lee
    Computational Statistics, 2009, 24 : 497 - 512