简单非线性主成分分析

Thomas Hunt, A. Krener
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引用次数: 0

摘要

我们提出了简单主成分分析(SNPCA),一种新的流形重建算法,它将位于低维流形附近的一组数据点作为输入,可能带有噪声,并提取适合数据和流形的简单复合体。我们在输入点云可以通过2-简单复数三角化的情况下实现了该算法,但嵌入在任意维度的空间中。该算法易于并行化。我们正在努力将该算法扩展到位于高维流形和更复杂形状(可能是不同维数)上的数据集。我们提供了算法的输出,这些数据落在有噪声和没有噪声的环面、瑞士卷和折痕片的表面上,所有这些数据都嵌入在r中。我们选择这些流形来证明该算法不需要光滑的底层流形,也不需要没有边界的流形。我们还讨论了算法的理论证明。
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Simplicial Nonlinear Principal Component Analysis
We present simplicial principal component analysis (SNPCA), a new manifold reconstruction algorithm that takes a set of data points lying near a lower dimensional manifold as input, possibly with noise, and extracts a simplicial complex that fits the data and the manifold. We have implemented the algorithm in the case where the input point cloud can be triangulated by a complex of 2-simplices, but is embedded in a space of arbitrary dimension. The algorithm is easily parallelizable. We are working to extend the algorithm to data sets lying on higher dimensional manifolds and more complex shapes, possibly of varying dimension. We provide the output of our algorithm for data that fall on the surface of a torus with and without noise, a swiss roll, and creased sheet, all embedded in R. We chose these manifolds to demonstrate that the algorithm does not require a smooth underlying manifold, or a manifold without boundary. We also discuss the theoretical justification of our algorithm.
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