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arxiv: 1305.0258 · v2 · pith:EFI33BAYnew · submitted 2013-05-01 · 🧮 math.NA · cs.NA· physics.data-an· stat.ML

Inverting Nonlinear Dimensionality Reduction with Scale-Free Radial Basis Function Interpolation

classification 🧮 math.NA cs.NAphysics.data-anstat.ML
keywords inversebasisdimensionalityextensionkernelnonlinearnystrradial
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Nonlinear dimensionality reduction embeddings computed from datasets do not provide a mechanism to compute the inverse map. In this paper, we address the problem of computing a stable inverse map to such a general bi-Lipschitz map. Our approach relies on radial basis functions (RBFs) to interpolate the inverse map everywhere on the low-dimensional image of the forward map. We demonstrate that the scale-free cubic RBF kernel performs better than the Gaussian kernel: it does not suffer from ill-conditioning, and does not require the choice of a scale. The proposed construction is shown to be similar to the Nystr\"om extension of the eigenvectors of the symmetric normalized graph Laplacian matrix. Based on this observation, we provide a new interpretation of the Nystr\"om extension with suggestions for improvement.

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