Generalized matrix completion and algebraic natural proofs

M. Bläser, Christian Ikenmeyer, Gorav Jindal, Vladimir Lysikov
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引用次数: 16

Abstract

Algebraic natural proofs were recently introduced by Forbes, Shpilka and Volk (Proc. of the 49th Annual ACM SIGACT Symposium on Theory of Computing (STOC), pages 653–664, 2017) and independently by Grochow, Kumar, Saks and Saraf (CoRR, abs/1701.01717, 2017) as an attempt to transfer Razborov and Rudich’s famous barrier result (J. Comput. Syst. Sci., 55(1): 24–35, 1997) for Boolean circuit complexity to algebraic complexity theory. Razborov and Rudich’s barrier result relies on a widely believed assumption, namely, the existence of pseudo-random generators. Unfortunately, there is no known analogous theory of pseudo-randomness in the algebraic setting. Therefore, Forbes et al. use a concept called succinct hitting sets instead. This assumption is related to polynomial identity testing, but it is currently not clear how plausible this assumption is. Forbes et al. are only able to construct succinct hitting sets against rather weak models of arithmetic circuits. Generalized matrix completion is the following problem: Given a matrix with affine linear forms as entries, find an assignment to the variables in the linear forms such that the rank of the resulting matrix is minimal. We call this rank the completion rank. Computing the completion rank is an NP-hard problem. As our first main result, we prove that it is also NP-hard to determine whether a given matrix can be approximated by matrices of completion rank ≤ b. The minimum quantity b for which this is possible is called border completion rank (similar to the border rank of tensors). Naturally, algebraic natural proofs can only prove lower bounds for such border complexity measures. Furthermore, these border complexity measures play an important role in the geometric complexity program. Using our hardness result above, we can prove the following barrier: We construct a small family of matrices with affine linear forms as entries and a bound b, such that at least one of these matrices does not have an algebraic natural proof of polynomial size against all matrices of border completion rank b, unless coNP ⊆ ∃ BPP. This is an algebraic barrier result that is based on a well-established and widely believed conjecture. The complexity class ∃ BPP is known to be a subset of the more well known complexity class in the literature. Thus ∃ BPP can be replaced by MA in the statements of all our results. With similar techniques, we can also prove that tensor rank is hard to approximate. Furthermore, we prove a similar result for the variety of matrices with permanent zero. There are no algebraic polynomial size natural proofs for the variety of matrices with permanent zero, unless P#P ⊆ ∃ BPP. On the other hand, we are able to prove that the geometric complexity theory approach initiated by Mulmuley and Sohoni (SIAM J. Comput. 31(2): 496–526, 2001) yields proofs of polynomial size for this variety, therefore overcoming the natural proofs barrier in this case.
广义矩阵补全与代数自然证明
最近,Forbes、Shpilka和Volk(第49届ACM SIGACT计算理论研讨会(STOC) Proc., 653-664页,2017)和Grochow、Kumar、Saks和Saraf (CoRR, abs/1701.01717, 2017)分别引入了代数自然证明,试图转移Razborov和Rudich著名的障位结果(J. Comput。系统。科学。数学学报,55(1):24 - 35,1997)Razborov和Rudich的势垒结果依赖于一个被广泛相信的假设,即伪随机发生器的存在。不幸的是,在代数设置中没有已知的伪随机性的类似理论。因此,Forbes等人使用了一个叫做简洁命中集的概念。这个假设与多项式恒等检验有关,但目前还不清楚这个假设是否合理。Forbes等人只能针对相当弱的算术电路模型构建简洁的命中集。广义矩阵补全是这样一个问题:给定一个以仿射线性形式为元素的矩阵,求对线性形式的变量的赋值,使得到的矩阵的秩最小。我们称这个秩为完成秩。计算完成等级是一个np困难问题。作为我们的第一个主要结果,我们证明了确定给定矩阵是否可以由补全秩≤b的矩阵近似也是np困难的。可能的最小量b称为边界补全秩(类似于张量的边界秩)。自然地,代数自然证明只能证明这种边界复杂度测度的下界。此外,这些边界复杂度度量在几何复杂度规划中起着重要的作用。利用我们上面的硬度结果,我们可以证明以下障碍:我们构造了一个以仿射线性形式为入口和界b的矩阵小族,使得这些矩阵中至少有一个不具有对所有边补齐秩b的矩阵的多项式大小的代数自然证明,除非coNP∃BPP。这是一个代数势垒结果,它建立在一个公认的、被广泛相信的猜想的基础上。已知复杂性类∃是文献中更知名的复杂性类的一个子集。因此,在我们所有结果的陈述中,∃BPP可以用MA代替。通过类似的技术,我们也可以证明张量秩是难以近似的。进一步,我们证明了具有永久零的矩阵的变化的类似结果。除p# P≠BPP外,对于恒量为零的各种矩阵没有代数多项式大小的自然证明。另一方面,我们能够证明Mulmuley和Sohoni提出的几何复杂性理论方法(SIAM J. Comput. 31(2): 496 - 526,2001)为这种变化提供了多项式大小的证明,从而克服了这种情况下的自然证明障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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