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Multifactor analysis based on factor-dependent geometry

机译:基于因子相关几何的多因子分析

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This paper proposes a novel method that preserves the geometrical structure created by variation of multiple factors in analysis of multiple factor models, i.e., multifactor analysis. We use factor-dependent submanifolds as constituent elements of the factor-dependent geometry in a multiple factor framework. In this paper, a submanifold is defined as some subset of a manifold in the data space, and factor-dependent submanifolds are defined as the submani-folds created for each factor by varying only this factor. In this paper, we show that MPCA is formulated using factor-dependent submanifolds, as is our proposed method. We show, however, that MPCA loses the original shapes of these submanifolds because MPCA's parameterization is based on averaging the shapes of factor-dependent subman-ifolds for each factor. On the other hand, our proposed multifactor analysis preserves the shapes of individual factor-dependent submanifolds in low-dimensional spaces. Because the parameters obtained by our method do not lose their structures, our method, unlike MPCA, sufficiently covers original factor-dependent submanifolds. As a result of sufficient coverage, our method is appropriate for accurate classification of each sample.
机译:本文提出了一种新颖的方法,该方法在多因素模型分析(即多因素分析)中保留由多因素变化产生的几何结构。我们使用因数依赖子流形作为多因数框架中因数依赖几何的组成元素。在本文中,子流形被定义为数据空间中流形的某个子集,而因子相关子流形被定义为通过仅改变此因子而为每个因子创建的子流形。在本文中,我们证明了MPCA是使用依赖于因子的子流形制定的,正如我们提出的方法一样。但是,我们显示MPCA丢失了这些子流形的原始形状,因为MPCA的参数化基于对每个因子的因子相关子流形的形状求平均。另一方面,我们提出的多因子分析保留了低维空间中各个因子相关子流形的形状。因为通过我们的方法获得的参数不会丢失其结构,所以与MPCA不同,我们的方法充分涵盖了原始依赖于因子的子流形。由于覆盖范围足够,因此我们的方法适用于每个样品的准确分类。

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