From Weak to Strong LP Gaps for All CSPs

Mrinalkanti Ghosh, Madhur Tulsiani
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引用次数: 6

Abstract

We study the approximability of constraint satisfaction problems (CSPs) by linear programming (LP) relaxations. We show that for every CSP, the approximation obtained by a basic LP relaxation, is no weaker than the approximation obtained using relaxations given by $\Omega\left(\frac{\log n}{\log \log n}\right)$ levels of the Sherali-Adams hierarchy on instances of size $n$. It was proved by Chan et al. [FOCS 2013] that any polynomial size LP extended formulation is no stronger than relaxations obtained by a super-constant levels of the Sherali-Adams hierarchy.. Combining this with our result also implies that any polynomial size LP extended formulation is no stronger than the basic LP. Using our techniques, we also simplify and strengthen the result by Khot et al. [STOC 2014] on (strong) approximation resistance for LPs. They provided a necessary and sufficient condition under which $\Omega(\log \log n)$ levels of the Sherali-Adams hierarchy cannot achieve an approximation better than a random assignment. We simplify their proof and strengthen the bound to $\Omega\left(\frac{\log n}{\log \log n}\right)$ levels.
所有csp从弱到强LP差距
利用线性规划(LP)松弛研究了约束满足问题的近似性。我们表明,对于每个CSP,由基本LP松弛得到的近似,并不弱于使用大小为$n$的实例上Sherali-Adams层次的$\Omega\left(\frac{\log n}{\log \log n}\right)$松弛得到的近似。Chan等人[FOCS 2013]证明,任何多项式大小的LP扩展公式都不会比Sherali-Adams层次的超常数级别获得的松弛强。结合我们的结果也意味着任何多项式大小的LP扩展公式都不会比基本LP强。使用我们的技术,我们还简化和加强了Khot等人[STOC 2014]关于lp(强)近似阻力的结果。他们提供了一个充分必要条件,在这个条件下,$\Omega(\log \log n)$ Sherali-Adams等级不能比随机分配得到更好的近似。我们简化了它们的证明,并加强了对$\Omega\left(\frac{\log n}{\log \log n}\right)$级别的约束。
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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