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Multi-View Wasserstein Discriminant Analysis with Entropic Regularized Wasserstein Distance

机译:多视图Wasserstein判别分析与熵正则化韦瑟距离

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Analysis of multi-view data has recently garnered growing attention because multi-view data frequently appear in real-world applications, which are collected or taken from many sources or captured using various sensors. A simple and popular promising approach is to learn a latent subspace shared by multi-view data. Nevertheless, because one sample lies in heterogeneous structure types, many existing multi-view data analyses show that discrepancies in within-class data across multiple views have a larger value than discrepancies within the same view from different views. To evaluate this discrepancy, this paper presents a proposal of a multi-view Wasserstein discriminant analysis, designated as MvWDA, which exploits a recently developed optimal transport theory. Numerical evaluations using three real-world datasets reveal the effectiveness of the proposed MvWDA.
机译:多视图数据的分析最近获得了越来越长的注意,因为多视图数据经常出现在真实的应用中,这些数据被收集或从许多来源收集或使用各种传感器捕获。 一种简单而流行的有希望的方法是学习由多视图数据共享的潜在子空间。 然而,由于一个样本位于异构结构类型中,许多现有的多视图数据分析表明,跨多个视图跨课程内的数据中的差异比不同视图中同一视图中的差异更大的值。 为了评估这种差异,本文提出了一个多视图Wasserstein判别分析的提议,被指定为MVWDA,该分析利用最近开发的最佳运输理论。 使用三个现实数据集的数值评估显示所提出的MVWDA的有效性。

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