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Empirical Bayes estimation by wavelet series

机译:小波序列的经验贝​​叶斯估计

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摘要

In traditional nonparametric EB (empirical Bayes) setting, the paper proposes generalization of the linear EB estimation method which takes advantage of the flexibility of the wavelet techniques. A nonparametric EB estimator is represented as a wavelet series expansion and the coefficients are estimated by minimizing the prior risk of the estimator. Although wavelet series have been used previously for EB estimation, the method suggested in the paper is completely novel since the EB estimator as a whole is represented as a wavelet series rather than its components. Moreover, the method exploits de-correlating property of wavelets which is not instrumental for the former wavelet-based EB techniques. As a result, estimation of wavelet coefficients requires solution of a well-posed sparse system of linear equations. The technique provides asymptotically optimal EB estimators posterior risks of which tend to zero at the optimal rate as the number of observations tends to infinity.
机译:在传统的非参数EB(经验贝叶斯)设置中,本文提出了线性EB估计方法的一般化方法,该方法利用了小波技术的灵活性。非参数EB估计器表示为小波级数展开,并且通过最小化估计器的先验风险来估计系数。尽管小波序列先前已用于EB估计,但本文中提出的方法是全新的,因为EB估计器作为一个整体表示为小波序列而不是其分量。此外,该方法利用了小波的去相关特性,这对于以前的基于小波的EB技术没有帮助。结果,小波系数的估计需要解决一个良好的线性方程组稀疏系统。该技术提供了渐近最优的EB估计量,其后验风险随着观察次数趋于无穷大而以最优速率趋于零。

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