Random Projections of Smooth Manifolds

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作者
Richard G. Baraniuk
Michael B. Wakin
机构
[1] Rice University,Department of Electrical and Computer Engineering
[2] University of Michigan,Department of Electrical Engineering and Computer Science
关键词
Manifolds; Dimensionality reduction; Random projections; Compressed sensing; Sparsity; Manifold learning; Johnson–Lindenstrauss lemma; 53A07; 57R40; 62H99; 65C99; 68P30; 68T05; 94A12; 94A29;
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摘要
We propose a new approach for nonadaptive dimensionality reduction of manifold-modeled data, demonstrating that a small number of random linear projections can preserve key information about a manifold-modeled signal. We center our analysis on the effect of a random linear projection operator Φ:ℝN→ℝM, M<N, on a smooth well-conditioned K-dimensional submanifold ℳ⊂ℝN. As our main theoretical contribution, we establish a sufficient number M of random projections to guarantee that, with high probability, all pairwise Euclidean and geodesic distances between points on ℳ are well preserved under the mapping Φ.
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页码:51 / 77
页数:26
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