Goodness-of-fit testing and quadratic functional estimation from indirect observations
成果类型:
Article
署名作者:
Butucea, Cristina
署名单位:
Universite Paris Nanterre; Sorbonne Universite
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/009053607000000118
发表日期:
2007
页码:
1907-1930
关键词:
integral functionals
bayesian-analysis
unknown number
density
CONVERGENCE
mixtures
摘要:
We consider the convolution model where i.i.d. random variables Xi having unknown density f are observed with additive i.i.d. noise, independent of the X's. We assume that the density f belongs to either a Sobolev class or a class of supersmooth functions. The noise distribution is known and its characteristic function decays either polynornially or exponentially asymptotically. We consider the problem of goodness-of-fit testing in the convolution model. We prove upper bounds for the risk of a test statistic derived from a kernel estimator of the quadratic functional f f 2 based on indirect observations. When the unknown density is smoother enough than the noise density, we prove that this estimator is n(-1/2) consistent, asymptotically normal and efficient (for the variance we compute). Otherwise, we give nonparametric upper bounds for the risk of the same estimator. We give an approach unifying the proof of nonparametric minimax lower bounds for both problems. We establish them for Sobolev densities and for supersmooth densities less smooth than exponential noise. In the two setups we obtain exact testing constants associated with the asymptotic minimax rates.
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