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首页> 外文期刊>Journal of the American statistical association >Smooth Blockwise Iterative Thresholding: A Smooth Fixed Point Estimator Based on the Likelihood's Block Gradient
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Smooth Blockwise Iterative Thresholding: A Smooth Fixed Point Estimator Based on the Likelihood's Block Gradient

机译:平滑块状迭代阈值:基于似然性块梯度的平滑不动点估计

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摘要

The proposed smooth blockwise iterative thresholding estimator (SBITE) is a model selection technique defined as a fixed point reached by iterating a likelihood gradient-based thresholding function. The smooth James-Stein thresholding function has two regularization parameters X and v, and a smoothness parameter s. It enjoys smoothness like ridge regression and selects variables like lasso. Focusing on Gaussian regression, we show that SBITE is uniquely defined, and that its Stein unbiased risk estimate is a smooth function of A. and v, for better selection of the two regularization parameters. We perform a Monte Carlo simulation to investigate the predictive and oracle properties of this smooth version of adaptive lasso. The motivation is a gravitational wave burst detection problem from several concomitant time series. A nonparametric wavelet-based estimator is developed to combine information from all captors by block-thresholding multiresolution coefficients. We study how the smoothness parameter s tempers the erraticity of the risk estimate, and derives a universal threshold, an information criterion, and an oracle inequality in this canonical setting.
机译:提出的平滑逐块迭代阈值估计器(SBITE)是一种模型选择技术,定义为通过迭代基于似然梯度的阈值函数达到的固定点。平滑James-Stein阈值函数具有两个正则化参数X和v,以及一个平滑度参数s。它具有像岭回归一样的平滑性,并选择套索之类的变量。着重于高斯回归,我们显示SBITE是唯一定义的,并且其Stein无偏风险估计是A.和v的平滑函数,以便更好地选择两个正则化参数。我们执行蒙特卡洛模拟,以研究这种自适应套索的平滑版本的预测和预言性质。动机是来自几个伴随时间序列的引力波猝发检测问题。开发了一种基于非参数小波的估计器,以通过块阈值多分辨率系数组合来自所有捕获器的信息。我们研究了平滑度参数如何缓和风险估计的不确定性,并在此规范背景下得出通用阈值,信息准则和预言性不等式。

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