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On Outer Bi-Lipschitz Extensions of Linear Johnson-Lindenstrauss Embeddings of Low-Dimensional Submanifolds of RN\mathbb{R}^N

Abstract

Let M\mathcal{M} be a compact dd-dimensional submanifold of RN\mathbb{R}^N with reach τ\tau and volume VMV_{\mathcal M}. Fix ϵ(0,1)\epsilon \in (0,1). In this paper we prove that a nonlinear function f:RNRmf: \mathbb{R}^N \rightarrow \mathbb{R}^{m} exists with mC(d/ϵ2)log(VMdτ)m \leq C \left(d / \epsilon^2 \right) \log \left(\frac{\sqrt[d]{V_{\mathcal M}}}{\tau} \right) such that (1 - \epsilon) \| {\bf x} - {\bf y} \|_2 \leq \left\| f({\bf x}) - f({\bf y}) \right\|_2 \leq (1 + \epsilon) \| {\bf x} - {\bf y} \|_2 holds for all xM{\bf x} \in \mathcal{M} and yRN{\bf y} \in \mathbb{R}^N. In effect, ff not only serves as a bi-Lipschitz function from M\mathcal{M} into Rm\mathbb{R}^{m} with bi-Lipschitz constants close to one, but also approximately preserves all distances from points not in M\mathcal{M} to all points in M\mathcal{M} in its image. Furthermore, the proof is constructive and yields an algorithm which works well in practice. In particular, it is empirically demonstrated herein that such nonlinear functions allow for more accurate compressive nearest neighbor classification than standard linear Johnson-Lindenstrauss embeddings do in practice.

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