The Lopsided Lovasz Local Lemma (LLLL) is a cornerstone probabilistic tool for showing that it is possible to avoid a collection of "bad" events as long as their probabilities and interdependencies are sufficiently small. The strongest possible criterion in these terms is due to Shearer (1985), although it is technically difficult to apply to constructions in combinatorics. The original formulation of the LLLL was non-constructive; a seminal algorithm of Moser & Tardos (2010) gave an efficient algorithm for nearly all its applications, including to $k$-SAT instances where each variable appears in a bounded number of clauses. Harris (2015) later gave an alternate criterion for this algorithm to converge; unlike the LLL criterion or its variants, this criterion depends in a fundamental way on the decomposition of bad-events into variables. In this note, we show that the criterion given by Harris can be stronger in some cases even than Shearer's criterion. We construct $k$-SAT formulas with bounded variable occurrence, and show that the criterion of Harris is satisfied while the criterion of Shearer is violated. In fact, there is an exponentially growing gap between the bounds provable from any form of the LLLL and from the bound shown by Harris.
翻译:Lopside Lovasz Lompasz Lemma (LLLLLL) 是一个基本概率工具,用以表明只要概率和相互依存性都足够小,就有可能避免收集“坏”事件。这些术语中最有力的标准来自Shearer(1985年),尽管在技术上很难适用于组合式建筑。LLLLLLL的最初表述是非建设性性的;Moser & Tardos(2010年)的半数值算法为几乎所有应用提供了有效的算法,包括每个变量出现在受约束的条款数中的美元-SAT案例。Harris(2015年)后来为这种算法提供了一个替代标准;与LLL标准或其变量不同,这一标准的根本取决于坏事件在变量中的分解情况。在本说明中,Harris提出的标准在某些情况下甚至比Shearer的标准更强。我们为美元-SAT的公式设计了受约束的可变数,并表明Harris的标准在从Sheral的束缚性标准中得到了满足,而从Sherrov的束缚性标准则是从任何受约束的。