流中奇异值的近似函数

Yi Li, David P. Woodruff
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引用次数: 35

摘要

对于任意实数p > 0,我们几乎完全刻画了对于n × n矩阵A估计|A| pp =∑i=1n σip的空间复杂度,其中每一行和每一列都有O(1)个非零项,并且在数据流模型中每次呈现一个项。其中σi为A的奇异值,当p≥1时,σi为Schatten p-范数的p次幂。我们证明了当p不是偶数时,为了以恒定的概率获得对|| a ||pp的(1+ _)-近似,任何1-pass算法都需要n1−g(_)位空间,其中g(_)→0作为_→0并且_ > 0是与n无关的常数。然而,当p是偶数时,我们给出了n1−2/p(_−1logn)位空间的上界,这在turnstile数据流模型中是偶数。后者是最优的(−1 logn)因子。我们的结果大大加强了先前工作中任意(不一定稀疏)矩阵A的下界:先前的最佳下界为p∈(0,1)的Ω(logn), p∈[1,2]的Ω(n1/p−1/2/logn)和p∈(2,∞)的Ω(n1−2/p)。我们注意到对于p∈(2,∞),虽然我们对于偶数的下界是相同的,对于这个范围内的其他p,我们的下界是n1 - g(k),这比之前的n1 - 2/p要强得多,因为足够小的常数k > 0。我们获得了key - fan范数、特征值收缩器和m -估计器的近似线性下界,其中许多在我们的工作之前可以在对数空间中求解。
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On approximating functions of the singular values in a stream
For any real number p > 0, we nearly completely characterize the space complexity of estimating ||A||pp = ∑i=1n σip for n × n matrices A in which each row and each column has O(1) non-zero entries and whose entries are presented one at a time in a data stream model. Here the σi are the singular values of A, and when p ≥ 1, ||A||pp is the p-th power of the Schatten p-norm. We show that when p is not an even integer, to obtain a (1+є)-approximation to ||A||pp with constant probability, any 1-pass algorithm requires n1−g(є) bits of space, where g(є) → 0 as є → 0 and є > 0 is a constant independent of n. However, when p is an even integer, we give an upper bound of n1−2/p (є−1logn) bits of space, which holds even in the turnstile data stream model. The latter is optimal up to (є−1 logn) factors. Our results considerably strengthen lower bounds in previous work for arbitrary (not necessarily sparse) matrices A: the previous best lower bound was Ω(logn) for p∈ (0,1), Ω(n1/p−1/2/logn) for p∈ [1,2) and Ω(n1−2/p) for p∈ (2,∞). We note for p ∈ (2, ∞), while our lower bound for even integers is the same, for other p in this range our lower bound is n1−g(є), which is considerably stronger than the previous n1−2/p for small enough constant є > 0. We obtain similar near-linear lower bounds for Ky-Fan norms, eigenvalue shrinkers, and M-estimators, many of which could have been solvable in logarithmic space prior to our work.
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