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引用次数: 0
摘要
我们讨论了有向图的顺序存根匹配,并证明这一过程可用于以渐近相等的概率对简单数图进行采样。该过程从一个空边集开始,以一定的状态偏差反复添加边,直到满足所需的度序列,同时避免放置双边或自循环。我们证明,当最大度数 \(d_\text {max}\)被 \(m^{1/4}\)(其中 m 是边的数量)渐近支配时,就可以在稀疏机制中实现均匀采样。证明的基础是推导出与具有给定度序列的数字图数量相关的各种组合估计值,以及控制这些估计值在大型数字图中的集中。这表明,顺序存根匹配可以看作是一种对数字图进行几乎均匀采样的实用算法。我们证明,这种算法可以实现线性预期运行时间 O(m)。
Sequential Stub Matching for Asymptotically Uniform Generation of Directed Graphs with a Given Degree Sequence
We discuss sequential stub matching for directed graphs and show that this process can be used to sample simple digraphs with asymptotically equal probability. The process starts with an empty edge set and repeatedly adds edges to it with a certain state-dependent bias until the desired degree sequence is fulfilled, whilst avoiding placing a double edge or self-loop. We show that uniform sampling is achieved in the sparse regime when the maximum degree \(d_\text {max}\) is asymptotically dominated by \(m^{1/4}\), where m is the number of edges. The proof is based on deriving various combinatorial estimates related to the number of digraphs with a given degree sequence and controlling concentration of these estimates in large digraphs. This suggests that sequential stub matching can be viewed as a practical algorithm for almost uniform sampling of digraphs. We show that this algorithm can be implemented to feature a linear expected runtime O(m).
期刊介绍:
Annals of Combinatorics publishes outstanding contributions to combinatorics with a particular focus on algebraic and analytic combinatorics, as well as the areas of graph and matroid theory. Special regard will be given to new developments and topics of current interest to the community represented by our editorial board.
The scope of Annals of Combinatorics is covered by the following three tracks:
Algebraic Combinatorics:
Enumerative combinatorics, symmetric functions, Schubert calculus / Combinatorial Hopf algebras, cluster algebras, Lie algebras, root systems, Coxeter groups / Discrete geometry, tropical geometry / Discrete dynamical systems / Posets and lattices
Analytic and Algorithmic Combinatorics:
Asymptotic analysis of counting sequences / Bijective combinatorics / Univariate and multivariable singularity analysis / Combinatorics and differential equations / Resolution of hard combinatorial problems by making essential use of computers / Advanced methods for evaluating counting sequences or combinatorial constants / Complexity and decidability aspects of combinatorial sequences / Combinatorial aspects of the analysis of algorithms
Graphs and Matroids:
Structural graph theory, graph minors, graph sparsity, decompositions and colorings / Planar graphs and topological graph theory, geometric representations of graphs / Directed graphs, posets / Metric graph theory / Spectral and algebraic graph theory / Random graphs, extremal graph theory / Matroids, oriented matroids, matroid minors / Algorithmic approaches