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Efficient simplicial reconstructions of manifolds from their samples

机译:从样本中有效地简化流形

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摘要

An algorithm for manifold learning is presented. Given only samples of a finite-dimensional differentiable manifold and no a priori knowledge of the manifold's geometry or topology except for its dimension, the goal is to find a description of the manifold. The learned manifold must approximate the true manifold well, both geometrically and topologically, when the sampling density is sufficiently high. The proposed algorithm constructs a simplicial complex based on approximations to the tangent bundle of the manifold. An important property of the algorithm is that its complexity depends on the dimension of the manifold, rather than that of the embedding space. Successful examples are presented in the cases of learning curves in the plane, curves in space, and surfaces in space; in addition, a case when the algorithm fails is analyzed.
机译:提出了一种用于流形学习的算法。仅给出有限维可分流形的样本,而除其尺寸外,不了解流形的几何形状或拓扑,我们的目标是找到流形的描述。当采样密度足够高时,学习到的歧管必须在几何上和拓扑上都近似于真实歧管。所提出的算法基于流形切线束的近似值构造了一个单纯复形。该算法的一个重要特性是其复杂度取决于流形的尺寸,而不是嵌入空间的尺寸。在学习平面中的曲线,空间中的曲线和空间中的曲面的情况下,提供了成功的例子。另外,分析了算法失败的情况。

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