论文标题
自动在代数多族层中使用质量措施进行基于匹配的聚合的质量措施
Automatic coarsening in Algebraic Multigrid utilizing quality measures for matching-based aggregations
论文作者
论文摘要
在本文中,我们讨论了代数多机(AMG)方法的一般对称阳性矩阵的收敛性。该方法依赖于一种聚合算法,该算法为\ emph {基于兼容的加权匹配}的变色},该算法利用了兼容放松原理与无方向的加权图中最大匹配的最大产品匹配之间的相互作用。结果基于使用不平滑聚合的AMG方法的一般融合分析理论,并确定了降级的质量度量。最初引入了类似的质量措施,并将其应用于其他方法,作为获得高质量聚集体的工具,从而为M-矩阵提供最佳的收敛。分析以及粗化程序纯粹是代数,在我们的情况下,\ emph {a后验}评估聚合程序的质量,我们将其应用于分析近似算法对匹配计算的近似算法的影响和图形边缘权重的定义。我们还探讨了聚集体的选择与兼容放松融合之间的联系,从而确认了在纯粹代数的多移民方法中设计粗化程序的理论之间的一致性,以及基于兼容的加权匹配的变质的有效性。我们讨论了各种全自动算法方法,以获取在各种测试用例上实现良好收敛属性的聚集体。
In this paper, we discuss the convergence of an Algebraic MultiGrid (AMG) method for general symmetric positive-definite matrices. The method relies on an aggregation algorithm, named \emph{coarsening based on compatible weighted matching}, which exploits the interplay between the principle of compatible relaxation and the maximum product matching in undirected weighted graphs. The results are based on a general convergence analysis theory applied to the class of AMG methods employing unsmoothed aggregation and identifying a quality measure for the coarsening; similar quality measures were originally introduced and applied to other methods as tools to obtain good quality aggregates leading to optimal convergence for M-matrices. The analysis, as well as the coarsening procedure, is purely algebraic and, in our case, allows an \emph{a posteriori} evaluation of the quality of the aggregation procedure which we apply to analyze the impact of approximate algorithms for matching computation and the definition of graph edge weights. We also explore the connection between the choice of the aggregates and the compatible relaxation convergence, confirming the consistency between theories for designing coarsening procedures in purely algebraic multigrid methods and the effectiveness of the coarsening based on compatible weighted matching. We discuss various completely automatic algorithmic approaches to obtain aggregates for which good convergence properties are achieved on various test cases.