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首页> 外文期刊>Communications in Statistics >Semi-supervised Bayesian adaptive multiresolution shrinkage for wavelet-based denoising
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Semi-supervised Bayesian adaptive multiresolution shrinkage for wavelet-based denoising

机译:基于小波去噪的半监督贝叶斯自适应多分辨率收缩

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摘要

We can use wavelet shrinkage to estimate a possibly multivariate regression function g under the general regression setup, y = g + epsilon. We propose an enhanced wavelet-based denoising methodology based on Bayesian adaptive multiresolution shrinkage, an effective Bayesian shrinkage rule in addition to the semi-supervised learning mechanism. The Bayesian shrinkage rule is advanced by utilizing the semi-supervised learning method in which the neighboring structure of a wavelet coefficient is adopted and an appropriate decision function is derived. According to decision function, wavelet coefficients follow one of two prespecified Bayesian rules obtained using varying related parameters. The decision of a wavelet coefficient depends not only on its magnitude, but also on the neighboring structure on which the coefficient is located. We discuss the theoretical properties of the suggested method and provide recommended parameter settings. We show that the proposed method is often superior to several existing wavelet denoising methods through extensive experimentation.
机译:我们可以使用小波收缩来估计在一般回归设置下y = g + epsilon的可能的多元回归函数g。我们提出了一种基于贝叶斯自适应多分辨率收缩的增强的基于小波的去噪方法,除半监督学习机制外,它是一种有效的贝叶斯收缩规则。利用半监督学习方法改进贝叶斯收缩规则,该方法采用小波系数的相邻结构并导出适当的决策函数。根据决策函数,小波系数遵循使用不同相关参数获得的两个预定贝叶斯规则之一。小波系数的决定不仅取决于其大小,还取决于系数所位于的相邻结构。我们讨论了建议方法的理论特性,并提供了建议的参数设置。我们通过广泛的实验表明,提出的方法通常优于几种现有的小波去噪方法。

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