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Cluster algorithms and computational complexity.

机译:集群算法和计算复杂度。

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摘要

Cluster algorithms for the 2D Ising model with a staggered field have been studied and a new cluster algorithm for path sampling has been worked out. The complexity properties of Bak-Seppen model and the Growing network model have been studied by using the Computational Complexity Theory.;The dynamic critical behavior of the two-replica cluster algorithm is studied. Several versions of the algorithm are applied to the two-dimensional, square lattice Ising model with a staggered field. The dynamic exponent for the full algorithm is found to be less than 0.5. It is found that odd translations of one replica with respect to the other together with global flips are essential for obtaining a small value of the dynamic exponent.;The path sampling problem for the 1D Ising model is studied using both a local algorithm and a novel cluster algorithm. The local algorithm is extremely inefficient at low temperature, where the integrated autocorrelation time is found to be proportional to the fourth power of correlation length. The dynamic exponent of the cluster algorithm is found to be zero and therefore proved to be much more efficient than the local algorithm.;The parallel computational complexity of the Bak-Sneppen evolution model is studied. It is shown that Bak-Sneppen histories can be generated by a massively parallel computer in a time that is polylog in the length of the history, which means that the logical depth of producing a Bak-Sneppen history is exponentially less than the length of the history. The parallel dynamics for generating Bak-Sneppen histories is contrasted to standard Bak-Sneppen dynamics.;The parallel computational complexity of the Growing Network model is studied. The growth of the network with linear kernels is shown to be not complex and an algorithm with polylog parallel running time is found. The growth of the network with gamma ≥ 2 super-linear kernels can be realized by a randomized parallel algorithm with polylog expected running time.
机译:研究了具有交错场的二维伊辛模型的聚类算法,并提出了一种新的路径采样聚类算法。运用计算复杂度理论研究了Bak-Seppen模型和成长网络模型的复杂性。;研究了二副本聚类算法的动态临界行为。该算法的几种版本被应用于具有交错场的二维方格伊辛模型。发现完整算法的动态指数小于0.5。发现一个副本相对于另一个副本的奇异翻译以及全局翻转对于获取较小的动态指数至关重要。;使用局部算法和新颖方法研究一维伊辛模型的路径采样问题聚类算法。局部算法在低温下效率极低,在这种情况下,发现集成的自相关时间与相关长度的四次方成正比。发现聚类算法的动态指数为零,因此被证明比局部算法更有效。;研究了Bak-Sneppen演化模型的并行计算复杂度。结果表明,Bak-Sneppen历史记录可以由大型并行计算机在一段历史记录长度的时间内生成,这意味着生成Bak-Sneppen历史记录的逻辑深度成倍地小于Bak-Sneppen历史记录的逻辑深度。历史。生成Bak-Sneppen历史的并行动力学与标准的Bak-Sneppen动力学形成对比。;研究了成长网络模型的并行计算复杂性。线性核网络的增长并不复杂,并且发现了一种具有多对数并行运行时间的算法。具有gamma≥2超线性核的网络的增长可以通过具有polylog预期运行时间的随机并行算法来实现。

著录项

  • 作者

    Li, Xuenan.;

  • 作者单位

    University of Massachusetts Amherst.;

  • 授予单位 University of Massachusetts Amherst.;
  • 学科 Physics Condensed Matter.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 99 p.
  • 总页数 99
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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