近似内积的最优压缩与降维

N. Alon, B. Klartag
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引用次数: 43

摘要

设X是欧氏空间R^k中n个范数不超过1的点的集合,设≥0。X的≥-距离草图是一种数据结构,给定X的任意两点,可以恢复它们之间(欧几里得)距离的平方,直至加性误差≥。设f(n,k,≥)表示这样一个草图的最小可能位数。这里我们确定f(n,k,≥)对于所有n ≥K ≥1和所有≥≥\frac{1}{n^{0.49}}。我们的证明是算法的,并提供了一种有效的算法来计算每个点的大小为O(f(n,k,≥)/n)的草图,从而可以从它们的草图中计算任意两点之间距离的平方,直到加性误差为≥在时间上,草图的长度是线性的。我们还讨论了较小的≥2/√并在此范围内得到了一些关于降维的新结果。特别地,我们证明对于任何这样的≥任意k ≤t= \frac{\log (2+≥^2 n)}{≥^2}存在R^k中n个点的构型不能嵌入到R^{&#x2113中;}For ℓ
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Optimal Compression of Approximate Inner Products and Dimension Reduction
Let X be a set of n points of norm at most 1 in the Euclidean space R^k, and suppose ≥0. An ≥-distance sketch for X is a data structure that, given any two points of X enables one to recover the square of the (Euclidean) distance between them up to an additive} error of ≥. Let f(n,k,≥) denote the minimum possible number of bits of such a sketch. Here we determine f(n,k,≥) up to a constant factor for all n ≥ k ≥ 1 and all ≥ ≥ \frac{1}{n^{0.49}}. Our proof is algorithmic, and provides an efficient algorithm for computing a sketch of size O(f(n,k,≥)/n) for each point, so that the square of the distance between any two points can be computed from their sketches up to an additive error of ≥ in time linear in the length of the sketches. We also discuss the case of smaller ≥2/√ n and obtain some new results about dimension reduction in this range. In particular, we show that for any such ≥ and any k ≤ t=\frac{\log (2+≥^2 n)}{≥^2} there are configurations of n points in R^k that cannot be embedded in R^{ℓ} for ℓ
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