Approximating rectangles by juntas and weakly-exponential lower bounds for LP relaxations of CSPs

Pravesh Kothari, R. Meka, P. Raghavendra
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引用次数: 73

Abstract

We show that for constraint satisfaction problems (CSPs), sub-exponential size linear programming relaxations are as powerful as nΩ(1)-rounds of the Sherali-Adams linear programming hierarchy. As a corollary, we obtain sub-exponential size lower bounds for linear programming relaxations that beat random guessing for many CSPs such as MAX-CUT and MAX-3SAT. This is a nearly-exponential improvement over previous results; previously, the best known lower bounds were quasi-polynomial in n (Chan, Lee, Raghavendra, Steurer 2013). Our bounds are obtained by exploiting and extending the recent progress in communication complexity for "lifting" query lower bounds to communication problems. The main ingredient in our results is a new structural result on "high-entropy rectangles" that may of independent interest in communication complexity.
用集合逼近矩形和csp的LP松弛的弱指数下界
我们证明了对于约束满足问题(csp),次指数大小的线性规划松弛与Sherali-Adams线性规划层次的nΩ(1)-轮一样强大。作为一个推论,我们得到了线性规划松弛的次指数大小下界,它击败了许多csp(如MAX-CUT和MAX-3SAT)的随机猜测。与之前的结果相比,这几乎是一个指数级的改进;以前,最著名的下界是n的拟多项式(Chan, Lee, Raghavendra, Steurer 2013)。我们的边界是通过利用和扩展通信复杂性的最新进展,将查询下界“提升”到通信问题而获得的。我们结果的主要成分是关于“高熵矩形”的一个新的结构结果,它可能对通信复杂性有独立的兴趣。
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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