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Nonlinear Dimensionality Reduction by Topologically Constrained Isometric Embedding

机译:拓扑约束等距嵌入的非线性降维

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摘要

Many manifold learning procedures try to embed a given feature data into a flat space of low dimensionality while preserving as much as possible the metric in the natural feature space. The embedding process usually relies on distances between neighboring features, mainly since distances between features that are far apart from each other often provide an unreliable estimation of the true distance on the feature manifold due to its non-convexity. Distortions resulting from using long geodesics indiscriminately lead to a known limitation of the Isomap algorithm when used to map non-convex manifolds. Presented is a framework for nonlinear dimensionality reduction that uses both local and global distances in order to learn the intrinsic geometry of flat manifolds with boundaries. The resulting algorithm filters out potentially problematic distances between distant feature points based on the properties of the geodesics connecting those points and their relative distance to the boundary of the feature manifold, thus avoiding an inherent limitation of the Isomap algorithm. Since the proposed algorithm matches non-local structures, it is robust to strong noise. We show experimental results demonstrating the advantages of the proposed approach over conventional dimensionality reduction techniques, both global and local in nature.
机译:许多多样的学习过程试图将给定的特征数据嵌入到低维的平面空间中,同时在自然特征空间中尽可能保留度量。嵌入过程通常依赖于相邻特征之间的距离,这主要是因为彼此之间距离较远的特征之间的距离通常会由于其不凸性而对特征歧管上的真实距离提供不可靠的估计。当使用长测地线时,不加区别地导致的失真会导致Isomap算法在用于映射非凸流形时的已知局限性。提出了一种非线性降维的框架,该框架使用局部和全局距离来学习带边界的平面流形的内在几何形状。生成的算法会根据连接这些点的测地线的属性及其到特征歧管边界的相对距离,过滤掉远处特征点之间可能存在问题的距离,从而避免了Isomap算法的固有局限性。由于所提出的算法与非局部结构匹配,因此对强噪声具有鲁棒性。我们显示了实验结果,证明了该方法相对于常规降维技术的优势,无论是全局的还是局部的。

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