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arxiv: 1308.3280 · v1 · submitted 2013-08-15 · 💻 cs.DM · cs.CG· math.PR

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Lower bounds for oblivious subspace embeddings

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classification 💻 cs.DM cs.CGmath.PR
keywords deltasubspaceboundslowerobliviouscolumndimensiondistribution
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An oblivious subspace embedding (OSE) for some eps, delta in (0,1/3) and d <= m <= n is a distribution D over R^{m x n} such that for any linear subspace W of R^n of dimension d, Pr_{Pi ~ D}(for all x in W, (1-eps) |x|_2 <= |Pi x|_2 <= (1+eps)|x|_2) >= 1 - delta. We prove that any OSE with delta < 1/3 must have m = Omega((d + log(1/delta))/eps^2), which is optimal. Furthermore, if every Pi in the support of D is sparse, having at most s non-zero entries per column, then we show tradeoff lower bounds between m and s.

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