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首页> 外文期刊>Analytica chimica acta >Fusion strategies for selecting multiple tuning parameters for multivariate calibration and other penalty based processes: A model updating application for pharmaceutical analysis
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Fusion strategies for selecting multiple tuning parameters for multivariate calibration and other penalty based processes: A model updating application for pharmaceutical analysis

机译:用于为多元校准和其他基于惩罚的过程选择多个调整参数的融合策略:药物分析的模型更新应用

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New multivariate calibration methods and other processes are being developed that require selection of multiple tuning parameter (penalty) values to form the final model. With one or more tuning parameters, using only one measure of model quality to select final tuning parameter values is not sufficient. Optimization of several model quality measures is challenging. Thus, three fusion ranking methods are investigated for simultaneous assessment of multiple measures of model quality for selecting tuning parameter values. One is a supervised learning fusion rule named sum of ranking differences (SRD). The other two are non-supervised learning processes based on the sum and median operations. The effect of the number of models evaluated on the three fusion rules are also evaluated using three procedures. One procedure uses all models from all possible combinations of the tuning parameters. To reduce the number of models evaluated, an iterative process (only applicable to SRD) is applied and thresholding a model quality measure before applying the fusion rules is also used. A near infrared pharmaceutical data set requiring model updating is used to evaluate the three fusion rules. In this case, calibration of the primary conditions is for the active pharmaceutical ingredient (API) of tablets produced in a laboratory. The secondary conditions for calibration updating is for tablets produced in the full batch setting. Two model updating processes requiring selection of two unique tuning parameter values are studied. One is based on Tikhonov regularization (TR) and the other is a variation of partial least squares (PLS). The three fusion methods are shown to provide equivalent and acceptable results allowing automatic selection of the tuning parameter values. Best tuning parameter values are selected when model quality measures used with the fusion rules are for the small secondary sample set used to form the updated models. In this model updating situation, evaluation of all possible models, thresholding, and iterative SRD performed equivalently for the three fusion rules with TR and PLS performed worse. While the application is model updating, the fusion processes are applicable to other situations requiring selection of multiple tuning parameter values. (C) 2016 Elsevier B.V. All rights reserved.
机译:正在开发新的多元校准方法和其他过程,这些过程需要选择多个调整参数(惩罚)值以形成最终模型。对于一个或多个调整参数,仅使用一种模型质量度量来选择最终调整参数值是不够的。几种模型质量度量的优化具有挑战性。因此,研究了三种融合排序方法,以同时评估用于选择调整参数值的多种模型质量度量。一种是有监督的学习融合规则,称为等级差异总和(SRD)。另外两个是基于求和和中值运算的非监督学习过程。还使用三个过程评估了模型数量对三个融合规则的影响。一种过程使用调谐参数所有可能组合中的所有模型。为了减少评估模型的数量,将应用迭代过程(仅适用于SRD),并在应用融合规则之前使用模型质量度量作为阈值。需要模型更新的近红外药物数据集用于评估三个融合规则。在这种情况下,主要条件的校准是针对实验室生产的片剂的活性药物成分(API)。校准更新的次要条件是使用完整批次设置生产的片剂。研究了需要选择两个唯一的调整参数值的两个模型更新过程。一种是基于Tikhonov正则化(TR),另一种是偏最小二乘(PLS)的变体。所示的三种融合方法可提供等效且可接受的结果,从而允许自动选择调整参数值。当与融合规则一起使用的模型质量度量用于用于形成更新模型的小型次要样本集时,将选择最佳调整参数值。在这种模型更新情况下,对TR和PLS的三个融合规则,所有可能模型的评估,阈值和迭代SRD均等效执行。在应用程序进行模型更新时,融合过程适用于需要选择多个调整参数值的其他情况。 (C)2016 Elsevier B.V.保留所有权利。

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