The polymer model framework is a classical tool from statistical mechanics that has recently been used to obtain approximation algorithms for spin systems on classes of bounded-degree graphs; examples include the ferromagnetic Potts model on expanders and on the grid. One of the key ingredients in the analysis of polymer models is controlling the growth rate of the number of polymers, which has been typically achieved so far by invoking the bounded-degree assumption. Nevertheless, this assumption is often restrictive and obstructs the applicability of the method to more general graphs. For example, sparse random graphs typically have bounded average degree and good expansion properties, but they include vertices with unbounded degree, and therefore are excluded from the current polymer-model framework. We develop a less restrictive framework for polymer models that relaxes the standard bounded-degree assumption, by reworking the relevant polymer models from the edge perspective. The edge perspective allows us to bound the growth rate of the number of polymers in terms of the total degree of polymers, which in turn can be related more easily to the expansion properties of the underlying graph. To apply our methods, we consider random graphs with unbounded degrees from a fixed degree sequence (with minimum degree at least 3) and obtain approximation algorithms for the ferromagnetic Potts model, which is a standard benchmark for polymer models. Our techniques also extend to more general spin systems.
翻译:聚合物模型框架是一个典型的工具,它来自统计机制,最近被用来获取约束度图形类别中旋转系统旋转系统的近似算法;例子包括扩张器和网格中的铁磁棒模型;聚合物模型分析中的一个关键要素是控制聚合物聚合物数量的增长率,通过从边缘角度对相关的聚合物模型进行重新工作,这种增长率迄今为止通常是通过采用约束度假设实现的。然而,这一假设往往具有限制性,妨碍该方法适用于更一般性的图表。例如,稀散的随机图表通常具有平均约束度和良好的扩张特性,但它们包括无约束度的顶点,因此被排除在目前的聚合物模型框架之外。我们为聚合物模型开发了一个不那么严格的框架,通过从边缘角度对相关的聚合物模型进行重新工作,放松标准约束度假设。这种边缘视角使我们能够将聚合物数量的增长率与总水平的聚合物模型联系起来,而这反过来又可能更容易与基础图形的扩张特性相关,但是它们包括无约束度的顶点,因此被排斥在目前的聚合物模型模型中,因此被排除了。我们为从最起码的标准水平上,我们用一个随机的图表将一个最起码的模型与最起码的模型进行。