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Adaptive penalties for generalized Tikhonov regularization in statistical regression models with application to spectroscopy data

机译:统计回归模型中广义Tikhonov正则化的自适应惩罚及其在光谱数据中的应用

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摘要

Tikhonov regularization was proposed for multivariate calibration by Andries and Kalivas []. We use this framework for modeling the statistical association between spectroscopy data and a scalar outcome. In both the calibration and regression settings this regularization process has advantages over methods of spectral pre-processing and dimension-reduction approaches such as feature extraction or principal component regression. We propose an extension of this penalized regression framework by adaptively refining the penalty term to optimally focus the regularization process. We illustrate the approach using simulated spectra and compare it with other penalized regression models and with a two-step method that first pre-processes the spectra then fits a dimension-reduced model using the processed data. The methods are also applied to magnetic resonance spectroscopy data to identify brain metabolites that are associated with cognitive function.
机译:Tikhonov正则化由Andries和Kalivas提出用于多元校准。我们使用此框架来建模光谱数据和标量结果之间的统计关联。在校准和回归设置中,此正则化过程都优于光谱预处理和降维方法(例如特征提取或主成分回归)。我们通过自适应地完善惩罚项以优化聚焦正则化过程,提出了这种惩罚回归框架的扩展。我们使用模拟光谱说明了该方法,并将其与其他惩罚回归模型以及两步法进行了比较,该方法首先对光谱进行了预处理,然后使用处理后的数据拟合了降维模型。该方法还应用于磁共振波谱数据,以识别与认知功能相关的脑代谢物。

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