首页> 外文期刊>Analytica chimica acta >Evaluation of principal component selection methods to form a global prediction model by principal component regression
【24h】

Evaluation of principal component selection methods to form a global prediction model by principal component regression

机译:通过主成分回归评估主成分选择方法以形成全局预测模型

获取原文
获取原文并翻译 | 示例
           

摘要

Most situations using principal component regression (PCR) as a multivariate calibration tool use the conventional top-down selection procedure to determine the number of principal components (PCs) to generate a global model, i.e., the regression model is established by including PCs in sequence according to variances related to the PCs. This model is then used to predict future samples adequately spanned by the corresponding calibration set. Recently, some alternative procedures have been proposed for PC selection with respect to multivariate calibration. These include optimization (selection) by generalized simulated annealing and correlation principal component regression (CPCR) where PCs are ordered according to correlations with the dependent variable (concentration). The PCs are then selected one by one to form the global model based on a prediction criterion. In this paper, a forward selection procedure PCR (FSPCR) is evaluated and compared to CPCR and top-down selection. Four spectroscopic data sets are analyzed for the comparison study. In essence, results reveal that PCs selected based on a top-down approach generates the most stable global model. That is, top-down selection generally performs best for prediction of numerous future samples sets compared to CPCR and FSPCR. Reasons for such differences in performances of these procedures have been analyzed.
机译:使用主成分回归(PCR)作为多变量校准工具的大多数情况都使用常规的自上而下的选择过程来确定要生成全局模型的主成分(PC)的数量,即,通过依次包含PC来建立回归模型根据与PC相关的差异。然后,使用该模型来预测由相应的校准集充分涵盖的未来样本。近来,已经提出了关于多变量校准的一些用于PC选择的替代程序。其中包括通过广义模拟退火和相关主成分回归(CPCR)进行的优化(选择),其中PC根据与因变量(浓度)的相关性进行排序。然后,基于预测标准,一台一台选择PC,以形成全局模型。在本文中,对正向选择程序PCR(FSPCR)进行了评估,并将其与CPCR和自上而下的选择进行了比较。分析了四个光谱数据集以进行比较研究。从本质上讲,结果表明,基于自上而下的方法选择的PC可以生成最稳定的全局模型。也就是说,与CPCR和FSPCR相比,自上而下的选择通常最能预测大量未来样本。已经分析了这些程序的性能差异的原因。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号