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Multiscale Geometric Methods for Data Sets II: Geometric Multi-Resolution Analysis

25 May 2011
W. K. Allard
Guangliang Chen
Mauro Maggioni
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Abstract

Data sets are often modeled as point clouds in RDR^DRD, for DDD large. It is often assumed that the data has some interesting low-dimensional structure, for example that of a ddd-dimensional manifold MMM, with ddd much smaller than DDD. When MMM is simply a linear subspace, one may exploit this assumption for encoding efficiently the data by projecting onto a dictionary of ddd vectors in RDR^DRD (for example found by SVD), at a cost (n+D)d(n+D)d(n+D)d for nnn data points. When MMM is nonlinear, there are no "explicit" constructions of dictionaries that achieve a similar efficiency: typically one uses either random dictionaries, or dictionaries obtained by black-box optimization. In this paper we construct data-dependent multi-scale dictionaries that aim at efficient encoding and manipulating of the data. Their construction is fast, and so are the algorithms that map data points to dictionary coefficients and vice versa. In addition, data points are guaranteed to have a sparse representation in terms of the dictionary. We think of dictionaries as the analogue of wavelets, but for approximating point clouds rather than functions.

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