Limits of local algorithms over sparse random graphs

D. Gamarnik, M. Sudan
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引用次数: 141

Abstract

Local algorithms on graphs are algorithms that run in parallel on the nodes of a graph to compute some global structural feature of the graph. Such algorithms use only local information available at nodes to determine local aspects of the global structure, while also potentially using some randomness. Research over the years has shown that such algorithms can be surprisingly powerful in terms of computing structures like large independent sets in graphs locally. These algorithms have also been implicitly considered in the work on graph limits, where a conjecture due to Hatami, Lovász and Szegedy [17] implied that local algorithms may be able to compute near-maximum independent sets in (sparse) random d-regular graphs. In this paper we refute this conjecture and show that every independent set produced by local algorithms is smaller that the largest one by a multiplicative factor of at least 1/2+1/(2√2) ≈ .853, asymptotically as d → ∞. Our result is based on an important clustering phenomena predicted first in the literature on spin glasses, and recently proved rigorously for a variety of constraint satisfaction problems on random graphs. Such properties suggest that the geometry of the solution space can be quite intricate. The specific clustering property, that we prove and apply in this paper shows that typically every two large independent sets in a random graph either have a significant intersection, or have a nearly empty intersection. As a result, large independent sets are clustered according to the proximity to each other. While the clustering property was postulated earlier as an obstruction for the success of local algorithms, such as for example, the Belief Propagation algorithm, our result is the first one where the clustering property is used to formally prove limits on local algorithms.
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稀疏随机图上局部算法的极限
图上的局部算法是在图的节点上并行运行以计算图的某些全局结构特征的算法。这种算法只使用节点上可用的局部信息来确定全局结构的局部方面,同时也可能使用一些随机性。多年来的研究表明,这种算法在计算结构(如局部图中的大型独立集)方面的功能非常强大。这些算法在图极限的研究中也被隐式地考虑,其中由Hatami、Lovász和Szegedy[17]提出的一个猜想表明,局部算法可能能够计算(稀疏)随机d-正则图中的近极大独立集。本文反驳了这一猜想,并证明了由局部算法产生的每一个独立集都比最大集小1/2+1/(2√2)≈.853,且渐近地为d→∞。我们的结果是基于一个重要的聚类现象,首先在自旋玻璃的文献中预测,最近严格证明了各种随机图上的约束满足问题。这些性质表明,解空间的几何结构可以相当复杂。本文证明并应用的特定聚类性质表明,在随机图中,通常每两个大的独立集要么有一个显著交集,要么有一个近空交集。因此,根据彼此的接近度对大型独立集进行聚类。虽然早先聚类属性被假设为局部算法(例如信念传播算法)成功的障碍,但我们的结果是第一个使用聚类属性正式证明局部算法限制的结果。
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