Strongly refuting random CSPs below the spectral threshold

P. Raghavendra, Satish Rao, T. Schramm
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引用次数: 61

Abstract

Random constraint satisfaction problems (CSPs) are known to exhibit threshold phenomena: given a uniformly random instance of a CSP with n variables and m clauses, there is a value of m = Ω(n) beyond which the CSP will be unsatisfiable with high probability. Strong refutation is the problem of certifying that no variable assignment satisfies more than a constant fraction of clauses; this is the natural algorithmic problem in the unsatisfiable regime (when m/n = ω(1)). Intuitively, strong refutation should become easier as the clause density m/n grows, because the contradictions introduced by the random clauses become more locally apparent. For CSPs such as k-SAT and k-XOR, there is a long-standing gap between the clause density at which efficient strong refutation algorithms are known, m/n ≥ Ο(nk/2-1), and the clause density at which instances become unsatisfiable with high probability, m/n = ω (1). In this paper, we give spectral and sum-of-squares algorithms for strongly refuting random k-XOR instances with clause density m/n ≥ Ο(n(k/2-1)(1-δ)) in time exp(Ο(nδ)) or in Ο(nδ) rounds of the sum-of-squares hierarchy, for any δ ∈ [0,1) and any integer k ≥ 3. Our algorithms provide a smooth transition between the clause density at which polynomial-time algorithms are known at δ = 0, and brute-force refutation at the satisfiability threshold when δ = 1. We also leverage our k-XOR results to obtain strong refutation algorithms for SAT (or any other Boolean CSP) at similar clause densities. Our algorithms match the known sum-of-squares lower bounds due to Grigoriev and Schonebeck, up to logarithmic factors.
强烈反驳低于光谱阈值的随机csp
已知随机约束满足问题(CSP)表现出阈值现象:给定具有n个变量和m个子句的CSP的均匀随机实例,存在m = Ω(n)的值,超过该值CSP将有高概率不能满足。强反驳是证明没有变量赋值满足超过一个常数部分的子句的问题;这是不可满足状态下的自然算法问题(当m/n = ω(1))。直观地看,随着子句密度m/n的增大,强有力的反驳应该变得更加容易,因为随机子句引入的矛盾变得更加局部明显。csp k-SAT和k-XOR等,有一个长期有效的条款密度之间强烈的驳斥算法,m / n≥Ο(nk / 2 - 1),和条款成为不可满足的高概率密度的实例,m / n =ω(1)。在这篇文章中,我们给强烈驳斥光谱和平方和算法随机k-XOR实例与条款密度m / n≥Ο(n (k / 2 - 1)(1 -δ)及时exp(Ο(nδ))或Ο(nδ)轮平方和的层次结构,对于任意δ∈[0,1]和任意整数k≥3。我们的算法在子句密度(δ = 0时已知多项式时间算法)和可满足性阈值(δ = 1)的暴力反驳之间提供了平滑过渡。我们还利用我们的k-XOR结果来获得类似子句密度的SAT(或任何其他布尔CSP)的强大反驳算法。我们的算法匹配已知的平方和下界,由于Grigoriev和Schonebeck,到对数因子。
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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