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PLS regression based on sure independence screening for multivariate calibration

机译:基于确定性独立性筛选的PLS回归用于多元校准

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By employing the simple but effective principle sure independence screening, a novel strategy for selecting the variables, named PLS regression combined with sure independence screening (PLSSIS), is developed. The PLSSIS algorithm combines the sure screening and latent variables method, which can fastly and efficiently deal with the high dimensional collinear data. Under the sure independence screening, the reduced submodel contains all the variables in the true model with probability tending to one. Our study shows that better prediction is obtained by PLSSIS compared with PLS modeling and moving window partial least squares (MWPLS)...
机译:通过采用简单但有效的原则,确定独立性筛选,开发了一种用于选择变量的新策略,称为PLS回归与确定独立性筛选(PLSSIS)。 PLSSIS算法结合了确定筛选和​​潜在变量方法,可以快速有效地处理高维共线数据。在确定独立性筛选下,简化的子模型包含真实模型中的所有变量,且几率趋于一。我们的研究表明,与PLS建模和移动窗口偏最小二乘法(MWPLS)相比,PLSSIS获得了更好的预测...

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