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Multidimensional single-index signal regression

机译:多维单指标信号回归

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In general, linearity is assumed to hold in multivariate calibration (MVC), but this may not be true. We approach the MVC problem using multidimensional penalized signal regression, which can be extended with an explicit link function between linear prediction and response and in the spirit of single-index models. As the two-dimensional surface of calibration coefficients is smoothly and generally estimated with tensor product P-splines, the unknown link function is estimated using univariate Psplines. The methods presented are grounded in penalized regression, where difference penalties are placed on the rows and columns of the tensor product coefficients, as well as on the link function coefficients, each having its own tuning parameter. An application to ternary mixture data shows that a non-linearity is present. Performance comparisons are made to standard penalized signal regression, not only demonstrating the nonlinear effect, but also improvements in external prediction.
机译:通常,假定线性在多元校正(MVC)中保持不变,但这可能并非如此。我们使用多维惩罚信号回归方法来解决MVC问题,该方法可以通过线性预测和响应之间的显式链接函数以及根据单指标模型的精神进行扩展。由于校准系数的二维表面是平滑且通常使用张量积P样条估计,因此未知链接函数是使用单变量P样条估计的。提出的方法基于惩罚回归,其中将差异惩罚放在张量积系数的行和列以及链接函数系数上,每个都有自己的调整参数。对三元混合物数据的应用表明存在非线性。对标准的惩罚信号回归进行了性能比较,不仅证明了非线性效应,而且还改善了外部预测。

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