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Study of different strategies for the Canonical Polyadic decomposition of nonnegative third order tensors with application to the separation of spectra in 3D fluorescence spectroscopy

机译:非负三阶张量规范多态分解的不同策略研究及其在3D荧光光谱分离中的应用

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In this communication, the problem of blind source separation in chemical analysis and more precisely in the fluorescence spectroscopy framework is addressed. Classically multi-linear Canonical Polyadic (CP or Candecomp/Parafac) decomposition algorithms are used to perform that task. Yet, as the constituent vectors of the loading matrices should be nonnegative since they stand for nonnegative quantities (spectra and concentrations), we focus on NonNegative CP decomposition algorithms (NNCP). In the unconstrained case, two types of trilinear (or triadic) decomposition model have been studied. Here, our aim is to investigate different strategies concerning the choice of models and optimization schemes in the case of a nonnegativity constraint. Computer simulations are performed on synthetic data to illustrate the robustness of the proposed approaches versus overfactoring problems but also the critical importance of the use of regularization terms.
机译:在此交流中,解决了化学分析中,更确切地说在荧光光谱框架中,盲源分离的问题。经典的多线性正则多态(CP或Candecomp / Parafac)分解算法用于执行该任务。但是,由于加载矩阵的构成矢量应为非负值,因为它们代表非负数量(光谱和浓度),因此我们将重点放在非负CP分解算法(NNCP)上。在无约束的情况下,已经研究了两种类型的三线性(或三重)分解模型。在这里,我们的目的是研究在非负约束条件下有关模型选择和优化方案的不同策略。对合成数据进行计算机仿真,以说明提出的方法相对于过度分解问题的鲁棒性,同时也说明使用正则化项的至关重要性。

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