Operations Research Center, Massachusetts Institute of Technology, Cambridge, MA 02140;
Sloan School of Management, Massachusetts Institute of Technology, Cambridge, MA 02140.
Proc Natl Acad Sci U S A. 2021 Oct 12;118(41). doi: 10.1073/pnas.2108492118.
The problem of optimizing over random structures emerges in many areas of science and engineering, ranging from statistical physics to machine learning and artificial intelligence. For many such structures, finding optimal solutions by means of fast algorithms is not known and often is believed not to be possible. At the same time, the formal hardness of these problems in the form of the complexity-theoretic -hardness is lacking. A new approach for algorithmic intractability in random structures is described in this article, which is based on the topological disconnectivity property of the set of pairwise distances of near-optimal solutions, called the Overlap Gap Property. The article demonstrates how this property 1) emerges in most models known to exhibit an apparent algorithmic hardness; 2) is consistent with the hardness/tractability phase transition for many models analyzed to the day; and, importantly, 3) allows to mathematically rigorously rule out a large class of algorithms as potential contenders, specifically the algorithms that exhibit the input stability (insensitivity).
在许多科学和工程领域,从统计物理到机器学习和人工智能,都存在着优化随机结构的问题。对于许多这样的结构,通过快速算法找到最优解是未知的,而且通常被认为是不可能的。同时,这些问题的形式复杂性理论的难度也缺乏。本文描述了一种针对随机结构算法复杂性的新方法,该方法基于近优解的对距离集合的拓扑不连通性特性,称为重叠间隙特性。本文演示了该特性如何:1)在大多数表现出明显算法复杂性的已知模型中出现;2)与迄今为止分析的许多模型的硬度/可处理性相变一致;并且,重要的是,3)允许从数学上严格排除一大类算法作为潜在的竞争者,特别是那些表现出输入稳定性(不敏感性)的算法。