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Stacked partial least squares regression analysis for spectral calibration and prediction

机译:堆叠偏最小二乘回归分析用于光谱校准和预测

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摘要

Two novel algorithms which employ the idea of stacked generalization or stacked regression, stacked partial least squares (SPLS) and stacked moving-window partial least squares (SMWPLS) are reported in the present paper. The new algorithms establish parallel, conventional PLS models based on all intervals of a set of spectra to take advantage of the information from the whole spectrum by incorporating parallel models in a way to emphasize intervals highly related to the target property. It is theoretically and experimentally illustrated that the predictive ability of these two stacked methods combining all subsets or intervals of the whole spectrum is never poorer than that of a PLS model based only on the best interval. These two stacking algorithms generate more parsimonious regression models with better predictive power than conventional PLS, and perform best when the spectral information is neither isolated to a single, small region, nor spread uniformly over the response. A simulation data set is employed in this work not only to demonstrate this improvement, but also to demonstrate that stacked regressions have the potential capability of predicting property information from an outlier spectrum in the prediction set. Moisture, oil, protein and starch in Cargill corn samples have been successfully predicted by these new algorithms, as well as hydroxy I number for different instruments of terpolymer samples including and excluding an outlier spectrum.
机译:本文报道了两种新颖的算法,它们采用了堆叠泛化或堆叠回归的思想,即堆叠局部最小二乘(SPLS)和堆叠移动窗口最小二乘(SMWPLS)。新算法基于一组频谱的所有间隔建立并行的常规PLS模型,以通过合并并行模型来强调整个与目标属性高度相关的间隔,从而利用整个频谱中的信息。理论上和实验上都表明,这两种叠加方法结合了整个光谱的所有子集或间隔的预测能力永远不会比仅基于最佳间隔的PLS模型的预测能力差。与传统的PLS相比,这两种叠加算法可生成更多的简约回归模型,具有更好的预测能力,并且当光谱信息既未隔离到单个小区域,也未在响应中均匀分布时,性能最佳。在这项工作中使用了一个模拟数据集,不仅证明了这一改进,而且还证明了堆叠回归具有从预测集中的异常光谱中预测属性信息的潜在能力。这些新算法已成功预测了嘉吉玉米样品中的水分,油,蛋白质和淀粉,以及不同仪器的三元共聚物样品的羟基I值,包括但不包括离群光谱。

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