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Johnson-Lindenstrauss Embeddings with Kronecker Structure (2106.13349v1)

Published 24 Jun 2021 in cs.DS

Abstract: We prove the Johnson-Lindenstrauss property for matrices $\Phi D_\xi$ where $\Phi$ has the restricted isometry property and $D_\xi$ is a diagonal matrix containing the entries of a Kronecker product $\xi = \xi{(1)} \otimes \dots \otimes \xi{(d)}$ of $d$ independent Rademacher vectors. Such embeddings have been proposed in recent works for a number of applications concerning compression of tensor structured data, including the oblivious sketching procedure by Ahle et al. for approximate tensor computations. For preserving the norms of $p$ points simultaneously, our result requires $\Phi$ to have the restricted isometry property for sparsity $C(d) (\log p)d$. In the case of subsampled Hadamard matrices, this can improve the dependence of the embedding dimension on $p$ to $(\log p)d$ while the best previously known result required $(\log p){d + 1}$. That is, for the case of $d=2$ at the core of the oblivious sketching procedure by Ahle et al., the scaling improves from cubic to quadratic. We provide a counterexample to prove that the scaling established in our result is optimal under mild assumptions.

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