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The Edge Density Barrier: Computational-Statistical Tradeoffs in Combinatorial Inference

机译:边缘密度屏障:组合推理中的计算统计权衡

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We study the hypothesis testing problem of inferring the existence of combinatorial structures in undirected graphical models. Although there exist extensive studies on the information-theoretic limits of this problem, it remains largely unexplored whether such limits can be attained by efficient algorithms. In this paper, we quantify the minimum computational complexity required to attain the information-theoretic limits based on an oracle computational model. We prove that, for testing common combinatorial structures, such as clique, nearest neighbor graph and perfect matching, against an empty graph, or large clique against small clique, the information-theoretic limits are provably unachievable by tractable algorithms in general. More importantly, we define structural quantities called the weak and strong edge densities, which offer deep insight into the existence of such computational-statistical tradeoffs. To the best of our knowledge, our characterization is the first to identify and explain the fundamental tradeoffs between statistics and computation for combinatorial inference problems in undirected graphical models.
机译:我们研究了在无向图形模型中推断联合结构存在的假设检测问题。虽然存在关于这个问题的信息 - 理论极限的广泛研究,但它仍然很大程度上取消了这些限制是否可以通过有效的算法实现。在本文中,我们量化了基于Oracle计算模型实现了实现信息理论限制所需的最小计算复杂性。我们证明,为了测试常见的组合结构,例如Clique,最近的邻居图和完美匹配,反对空图或对小集团的大型集团,一般而言,通过易解算法可被证明是不可判断的信息定理限制。更重要的是,我们定义了称为弱和强边密度的结构数量,这提供了深入了解存在此类计算统计权衡的存在。据我们所知,我们的表征是第一个识别和解释统计学和计算之间的基本权衡,以对无向图形模型中的组合推理问题的计算。

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