基于张张化的任意树上随机独立集的最优混合

IF 1.3 4区 物理与天体物理 Q4 PHYSICS, APPLIED Spin Pub Date : 2023-07-15 DOI:10.48550/arXiv.2307.07727
Charilaos Efthymiou, Thomas P. Hayes, Daniel Stefankovic, Eric Vigoda
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引用次数: 0

摘要

我们研究了单点更新马尔可夫链的混合时间,称为Glauber动力学,用于生成树的随机独立集。我们的重点是获得任意树的最优收敛结果。我们考虑从核心模型中的吉布斯分布中抽样的更一般的问题,其中独立集由参数$\lambda>0$加权。Martinelli, Sinclair和Weitz(2004)先前的工作获得了所有$\lambda$的完整$\Delta$ -正则树的最优混合时间界限。然而,Restrepo等人(2014)表明,对于足够大的$\lambda$,存在最优混合不成立的有界度树。Eppstein和Frishberg(2022)最近的工作证明了任意树的Glauber动力学的多项式混合时间界,更一般地说,对于有界树宽度的图。我们建立了任意树上未加权独立集的Glauber动力学的松弛时间(即逆谱隙)$O(n)$的最优界。此外,对于$\lambda\leq .44$,我们证明了$O(n\log{n})$的最优混合时间界。我们强调,我们的结果适用于任意树,并且不依赖于最大度$\Delta$。有趣的是,我们的结果远远超出了惟一性阈值,该阈值大约为$\lambda=O(1/\Delta)$。我们的证明方法受到了最近关于谱独立性的研究的启发。事实上,我们证明了谱独立性与任何树的最大度无关,但这并不意味着对一般树进行混合,因为Chen, Liu和Vigoda(2021)的最优混合结果仅适用于有界度图。相反,我们利用独立集的组合性质,通过非平凡的归纳证明直接证明方差/熵的近似张化。
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Optimal Mixing via Tensorization for Random Independent Sets on Arbitrary Trees
We study the mixing time of the single-site update Markov chain, known as the Glauber dynamics, for generating a random independent set of a tree. Our focus is obtaining optimal convergence results for arbitrary trees. We consider the more general problem of sampling from the Gibbs distribution in the hard-core model where independent sets are weighted by a parameter $\lambda>0$. Previous work of Martinelli, Sinclair and Weitz (2004) obtained optimal mixing time bounds for the complete $\Delta$-regular tree for all $\lambda$. However, Restrepo et al. (2014) showed that for sufficiently large $\lambda$ there are bounded-degree trees where optimal mixing does not hold. Recent work of Eppstein and Frishberg (2022) proved a polynomial mixing time bound for the Glauber dynamics for arbitrary trees, and more generally for graphs of bounded tree-width. We establish an optimal bound on the relaxation time (i.e., inverse spectral gap) of $O(n)$ for the Glauber dynamics for unweighted independent sets on arbitrary trees. Moreover, for $\lambda\leq .44$ we prove an optimal mixing time bound of $O(n\log{n})$. We stress that our results hold for arbitrary trees and there is no dependence on the maximum degree $\Delta$. Interestingly, our results extend (far) beyond the uniqueness threshold which is on the order $\lambda=O(1/\Delta)$. Our proof approach is inspired by recent work on spectral independence. In fact, we prove that spectral independence holds with a constant independent of the maximum degree for any tree, but this does not imply mixing for general trees as the optimal mixing results of Chen, Liu, and Vigoda (2021) only apply for bounded degree graphs. We instead utilize the combinatorial nature of independent sets to directly prove approximate tensorization of variance/entropy via a non-trivial inductive proof.
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来源期刊
Spin
Spin Materials Science-Electronic, Optical and Magnetic Materials
CiteScore
2.10
自引率
11.10%
发文量
34
期刊介绍: Spin electronics encompasses a multidisciplinary research effort involving magnetism, semiconductor electronics, materials science, chemistry and biology. SPIN aims to provide a forum for the presentation of research and review articles of interest to all researchers in the field. The scope of the journal includes (but is not necessarily limited to) the following topics: *Materials: -Metals -Heusler compounds -Complex oxides: antiferromagnetic, ferromagnetic -Dilute magnetic semiconductors -Dilute magnetic oxides -High performance and emerging magnetic materials *Semiconductor electronics *Nanodevices: -Fabrication -Characterization *Spin injection *Spin transport *Spin transfer torque *Spin torque oscillators *Electrical control of magnetic properties *Organic spintronics *Optical phenomena and optoelectronic spin manipulation *Applications and devices: -Novel memories and logic devices -Lab-on-a-chip -Others *Fundamental and interdisciplinary studies: -Spin in low dimensional system -Spin in medical sciences -Spin in other fields -Computational materials discovery
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