{"title":"伊辛模型的非线性动力学","authors":"Pietro Caputo, Alistair Sinclair","doi":"10.1007/s00220-024-05129-w","DOIUrl":null,"url":null,"abstract":"<div><p>We introduce and analyze a natural class of nonlinear dynamics for spin systems such as the Ising model. This class of dynamics is based on the framework of mass action kinetics, which models the evolution of systems of entities under pairwise interactions, and captures a number of important nonlinear models from various fields, including chemical reaction networks, Boltzmann’s model of an ideal gas, recombination in population genetics and genetic algorithms. In the context of spin systems, it is a natural generalization of linear dynamics based on Markov chains, such as Glauber dynamics and block dynamics, which are by now well understood. However, the inherent nonlinearity makes the dynamics much harder to analyze, and rigorous quantitative results so far are limited to processes which converge to essentially trivial stationary distributions that are product measures. In this paper we provide the first quantitative convergence analysis for natural nonlinear dynamics in a combinatorial setting where the stationary distribution contains non-trivial correlations, namely spin systems at high temperatures. We prove that nonlinear versions of both the Glauber dynamics and the block dynamics converge to the Gibbs distribution of the Ising model (with given external fields) in times <span>\\(O(n\\log n)\\)</span> and <span>\\(O(\\log n)\\)</span> respectively, where <i>n</i> is the size of the underlying graph (number of spins). Given the lack of general analytical methods for such nonlinear systems, our analysis is unconventional, and combines tools such as information percolation (due in the linear setting to Lubetzky and Sly), a novel coupling of the Ising model with Erdős-Rényi random graphs, and non-traditional branching processes augmented by a “fragmentation” process. Our results extend immediately to any spin system with a finite number of spins and bounded interactions.</p></div>","PeriodicalId":522,"journal":{"name":"Communications in Mathematical Physics","volume":"405 11","pages":""},"PeriodicalIF":2.2000,"publicationDate":"2024-10-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://link.springer.com/content/pdf/10.1007/s00220-024-05129-w.pdf","citationCount":"0","resultStr":"{\"title\":\"Nonlinear Dynamics for the Ising Model\",\"authors\":\"Pietro Caputo, Alistair Sinclair\",\"doi\":\"10.1007/s00220-024-05129-w\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>We introduce and analyze a natural class of nonlinear dynamics for spin systems such as the Ising model. 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In this paper we provide the first quantitative convergence analysis for natural nonlinear dynamics in a combinatorial setting where the stationary distribution contains non-trivial correlations, namely spin systems at high temperatures. We prove that nonlinear versions of both the Glauber dynamics and the block dynamics converge to the Gibbs distribution of the Ising model (with given external fields) in times <span>\\\\(O(n\\\\log n)\\\\)</span> and <span>\\\\(O(\\\\log n)\\\\)</span> respectively, where <i>n</i> is the size of the underlying graph (number of spins). Given the lack of general analytical methods for such nonlinear systems, our analysis is unconventional, and combines tools such as information percolation (due in the linear setting to Lubetzky and Sly), a novel coupling of the Ising model with Erdős-Rényi random graphs, and non-traditional branching processes augmented by a “fragmentation” process. 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引用次数: 0
摘要
我们介绍并分析了伊辛模型等自旋系统的一类自然非线性动力学。这一类动力学基于质量作用动力学的框架,该框架模拟了实体系统在成对相互作用下的演化,并捕捉了来自不同领域的许多重要非线性模型,包括化学反应网络、理想气体的玻尔兹曼模型、群体遗传学中的重组和遗传算法。在自旋系统中,它是对基于马尔可夫链的线性动力学(如格劳伯动力学和块动力学)的自然概括。然而,其固有的非线性使得动力学分析变得更加困难,迄今为止,严格的定量结果仅限于收敛到基本琐碎的静态分布(即乘积度量)的过程。在本文中,我们首次对组合环境中的自然非线性动力学进行了定量收敛分析,在这种环境中,静态分布包含非三维相关性,即高温下的自旋系统。我们证明格劳伯动力学和块动力学的非线性版本分别在 \(O(n\log n)\)和 \(O(\log n)\)时间内收敛到伊辛模型的吉布斯分布(给定外部场),其中 n 是底层图的大小(自旋数)。鉴于缺乏针对此类非线性系统的通用分析方法,我们的分析是非常规的,并结合了信息渗流(在线性环境中归功于卢贝兹基和斯莱)、伊兴模型与厄尔多斯-雷尼随机图的新颖耦合,以及由 "分裂 "过程增强的非传统分支过程等工具。我们的结果可以立即扩展到任何具有有限数量自旋和有界相互作用的自旋系统。
We introduce and analyze a natural class of nonlinear dynamics for spin systems such as the Ising model. This class of dynamics is based on the framework of mass action kinetics, which models the evolution of systems of entities under pairwise interactions, and captures a number of important nonlinear models from various fields, including chemical reaction networks, Boltzmann’s model of an ideal gas, recombination in population genetics and genetic algorithms. In the context of spin systems, it is a natural generalization of linear dynamics based on Markov chains, such as Glauber dynamics and block dynamics, which are by now well understood. However, the inherent nonlinearity makes the dynamics much harder to analyze, and rigorous quantitative results so far are limited to processes which converge to essentially trivial stationary distributions that are product measures. In this paper we provide the first quantitative convergence analysis for natural nonlinear dynamics in a combinatorial setting where the stationary distribution contains non-trivial correlations, namely spin systems at high temperatures. We prove that nonlinear versions of both the Glauber dynamics and the block dynamics converge to the Gibbs distribution of the Ising model (with given external fields) in times \(O(n\log n)\) and \(O(\log n)\) respectively, where n is the size of the underlying graph (number of spins). Given the lack of general analytical methods for such nonlinear systems, our analysis is unconventional, and combines tools such as information percolation (due in the linear setting to Lubetzky and Sly), a novel coupling of the Ising model with Erdős-Rényi random graphs, and non-traditional branching processes augmented by a “fragmentation” process. Our results extend immediately to any spin system with a finite number of spins and bounded interactions.
期刊介绍:
The mission of Communications in Mathematical Physics is to offer a high forum for works which are motivated by the vision and the challenges of modern physics and which at the same time meet the highest mathematical standards.