三向数据的化学等级估计:主范数向量正交投影法

Xie Hong-Ping , Jiang Jian-Hui , Shen Guo-Li , Yu Ru-Qin
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引用次数: 2

摘要

提出了一种估计三元阵列化学秩的新方法——主范数向量正交投影法。该方法是基于三元数据阵列的化学秩等于展开矩阵沿光谱或色谱模式的列空间的一个。在展开矩阵的列向量中选取一个Frobenius范数最大的向量作为主范数向量(PNV)。用PNV表示的正交投影矩阵对列向量进行变换。由此得到的残差矩阵的列空间的数学秩应该降低1。这样的正交投影反复进行,直到消除化学物质对信号数据的贡献。此时,数学秩的下降将等于化学秩的下降,剩余的残差子空间将完全是由于噪声的贡献。使用f检验可以很容易地估计化学等级。该方法已成功应用于模拟的HPLC-DAD型三向数据阵列和氨基酸混合物和染料混合物两个真实的激发-发射荧光数据集。仿真结果表明,该方法具有较好的抗异方差噪声的鲁棒性。该算法简单,易于编程,计算量小。
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Estimation of the chemical rank for the three-way data: a principal norm vector orthogonal projection approach

A new approach for estimating the chemical rank of the three-way array called the principal norm vector orthogonal projection method has been proposed. The method is based on the fact that the chemical rank of the three-way data array is equal to one of the column space of the unfolded matrix along the spectral or chromatographic mode. A vector with maximum Frobenius norm is selected among all the column vectors of the unfolded matrix as the principal norm vector (PNV). A transformation is conducted for the column vectors with an orthogonal projection matrix formulated by PNV. The mathematical rank of the column space of the residual matrix thus obtained should decrease by one. Such orthogonal projection is carried out repeatedly till the contribution of chemical species to the signal data is all deleted. At this time the decrease of the mathematical rank would equal that of the chemical rank, and the remaining residual subspace would entirely be due to the noise contribution. The chemical rank can be estimated easily by using an F-test. The method has been used successfully to the simulated HPLC-DAD type three-way data array and two real excitation–emission fluorescence data sets of amino acid mixtures and dye mixtures. The simulation with added relatively high level noise shows that the method is robust in resisting the heteroscedastic noise. The proposed algorithrn is simple and easy to program with quite light computational burden.

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