Manifold Alignment with Multi-graph Embedding

Chang-Bin Huang, Timothy Apasiba Abeo, Xiang-jun Shen
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Abstract

In this paper, a novel manifold alignment approach via multi-graph embedding (MA-MGE) is proposed. Different from the traditional manifold alignment algorithms that use a single graph to describe the latent manifold structure of each dataset, our approach utilizes multiple graphs for modeling multiple local manifolds in multi-view data alignment. Therefore a composite manifold representation with complete and more useful information is obtained from each dataset through a dynamic reconstruction of multiple graphs. Experimental results on Protein and Face-10 datasets demonstrate that the mapping coordinates of the proposed method provide better alignment performance compared to the state-of-the-art methods, such as semi-supervised manifold alignment (SS-MA), manifold alignment using Procrustes analysis (PAMA) and manifold alignment without correspondence (UNMA).
多图嵌入的流形对齐
提出了一种基于多图嵌入的流形对齐方法。与传统流形对齐算法使用单个图来描述每个数据集的潜在流形结构不同,我们的方法在多视图数据对齐中使用多个图来建模多个局部流形。因此,通过对多个图的动态重构,从每个数据集中获得一个具有完整和更有用信息的复合流形表示。在Protein和Face-10数据集上的实验结果表明,与半监督流形对齐(SS-MA)、使用Procrustes分析的流形对齐(PAMA)和无对应流形对齐(UNMA)等最新方法相比,该方法的映射坐标具有更好的对齐性能。
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