首页> 外文会议>International Conference on Numerical Optimization and Numerical Linear Algebra; 20031007-10; Guilin(CN) >Principal Manifolds and Nonlinear Dimensionality Reduction via Tangent Space Alignment
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Principal Manifolds and Nonlinear Dimensionality Reduction via Tangent Space Alignment

机译:主流形和通过切线空间对准的非线性维数减少

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We present a new algorithm for manifold learning and nonlinear dimensionality reduction. Based on a set of unorganized data points sampled with noise from a parameterized manifold, the local geometry of the manifold is learned by constructing an approximation for the tangent space at each data point, and those tangent spaces are then aligned to give the global coordinates of the data points with respect to the underlying manifold. We also present an error analysis of our algorithm showing that reconstruction errors can be quite small in some cases. We illustrate our algorithm using curves and surfaces both in 2D/3D Euclidean spaces and higher dimensional Euclidean spaces. We also address several theoretical and algorithmic issues for further research and improvements.
机译:我们提出了一种用于流形学习和非线性降维的新算法。基于从参数化歧管中采样的一组无序数据点的噪声,通过构建每个数据点的切线空间的近似值来学习歧管的局部几何形状,然后将这些切线空间对齐以给出全局坐标有关基础流形的数据点。我们还对算法进行了误差分析,结果表明在某些情况下重建误差可能很小。我们在2D / 3D欧式空间和高维欧式空间中使用曲线和曲面来说明算法。我们还解决了一些理论和算法问题,需要进一步研究和改进。

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