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A flexible trilinear decomposition algorithm for three-way calibration based on the trilinear component model and a theoretical extension of the algorithm to the multilinear component model

机译:基于三线性分量模型的三向标定的灵活三线性分解算法及其在多线性分量模型上的理论扩展

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摘要

There is a great deal of interest in decompositions of multilinear component models in the field of multi-way calibration, especially the three-way case. A flexible novel trilinear decomposition algorithm of the trilinear component model as a modification of an alternating least squares algorithm for three-way calibration is proposed. The proposed algorithm (constrained alternating trilinear decomposition, CATLD) is based on an alternating approximate least-squares scheme, in which two extra terms are added to each loss function, making it more efficient and flexible. The analysis of simulated three-way data arrays shows that it converges fast, is insensitive to initialization, and is insensitive to the overestimated number of components used in the decomposition. The analysis of real excitation-emission matrix (EEM) fluorescence and real high performance liquid chromatography-photodiode array detection (HPLC-DAD) data arrays confirms the results of the simulation studies, and shows that the proposed algorithm is favorable not only for EEMs but also for HPLC-DAD data. The three-way calibration method based on the CATLD algorithm is very efficient and flexible for direct quantitative analysis of multiple analytes of interest in complex systems, even in the presence of uncalibrated interferents and varying background interferents. Additionally, a theoretical extension of the proposed algorithm to the multilinear component model (constrained alternating multilinear decomposition, CAMLD) is developed. (C) 2015 Elsevier B.V. All rights reserved.
机译:在多向标定领域,尤其是在三向标定领域中,对多线性分量模型的分解引起了极大的兴趣。提出了一种灵活的新颖的三线性分量模型的三线性分解算法,作为三向标定的交替最小二乘算法的改进。所提出的算法(约束交替三线性分解,CATLD)基于交替近似最小二乘方案,其中在每个损失函数中添加了两个额外的项,从而使其更加有效和灵活。对模拟的三向数据数组的分析表明,它收敛速度快,对初始化不敏感,并且对分解中使用的高估组件数不敏感。对真实的激发-发射矩阵(EEM)荧光和真实的高效液相色谱-光电二极管阵列检测(HPLC-DAD)数据阵列的分析证实了仿真研究的结果,并且表明所提出的算法不仅对EEM有利,而且对也用于HPLC-DAD数据。基于CATLD算法的三向校准方法非常有效且灵活,即使在存在未经校准的干扰物和变化的背景干扰物的情况下,也可以对复杂系统中的多种目标分析物进行直接定量分析。此外,该算法在理论上扩展到多线性分量模型(约束交替多线性分解,CAMLD)。 (C)2015 Elsevier B.V.保留所有权利。

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