English

Column randomization and almost-isometric embeddings

Statistics Theory 2021-03-10 v1 Functional Analysis Statistics Theory

Abstract

The matrix A:RnRmA:\mathbb{R}^n \to \mathbb{R}^m is (δ,k)(\delta,k)-regular if for any kk-sparse vector xx, Ax22x22δkx22. \left| \|Ax\|_2^2-\|x\|_2^2\right| \leq \delta \sqrt{k} \|x\|_2^2. We show that if AA is (δ,k)(\delta,k)-regular for 1k1/δ21 \leq k \leq 1/\delta^2, then by multiplying the columns of AA by independent random signs, the resulting random ensemble AϵA_\epsilon acts on an arbitrary subset TRnT \subset \mathbb{R}^n (almost) as if it were gaussian, and with the optimal probability estimate: if (T)\ell_*(T) is the gaussian mean-width of TT and dT=suptTt2d_T=\sup_{t \in T} \|t\|_2, then with probability at least 12exp(c((T)/dT)2)1-2\exp(-c(\ell_*(T)/d_T)^2), suptTAϵt22t22C(ΛdTδ(T)+(δ(T))2), \sup_{t \in T} \left| \|A_\epsilon t\|_2^2-\|t\|_2^2 \right| \leq C\left(\Lambda d_T \delta\ell_*(T)+(\delta \ell_*(T))^2 \right), where Λ=max{1,δ2log(nδ2)}\Lambda=\max\{1,\delta^2\log(n\delta^2)\}. This estimate is optimal for 0<δ1/logn0<\delta \leq 1/\sqrt{\log n}.

Keywords

Cite

@article{arxiv.2103.05237,
  title  = {Column randomization and almost-isometric embeddings},
  author = {Shahar Mendelson},
  journal= {arXiv preprint arXiv:2103.05237},
  year   = {2021}
}