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New Classes of Degree Sequences with Fast Mixing Swap Markov Chain Sampling

机译:新的学位序列序列快速混合交换马尔可夫链采样

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In network modelling of complex systems one is often required to sample random realizations of networks that obey a given set of constraints, usually in the form of graph measures. A much studied class of problems targets uniform sampling of simple graphs with given degree sequence or also with given degree correlations expressed in the form of a Joint Degree Matrix. One approach is to use Markov chains based on edge switches (swaps) that preserve the constraints, are irreducible (ergodic) and fast mixing. In 1999, Kannan, Tetali and Vempala (KTV) proposed a simple swap Markov chain for sampling graphs with given degree sequence, and conjectured that it mixes rapidly (in polynomial time) for arbitrary degree sequences. Although the conjecture is still open, it has been proved for special degree sequences, in particular for those of undirected and directed regular simple graphs, half-regular bipartite graphs, and graphs with certain bounded maximum degrees. Here we prove the fast mixing KTV conjecture for novel, exponentially large classes of irregular degree sequences. Our method is based on a canonical decomposition of degree sequences into split graph degree sequences, a structural theorem for the space of graph realizations and on a factorization theorem for Markov chains. After introducing bipartite 'splitted' degree sequences, we also generalize the canonical split graph decomposition for bipartite and directed graphs.
机译:在复杂系统的网络建模中,通常需要对遵守给定的约束集的网络的随机实现,通常以图形测量的形式。一类研究的问题阶级针对具有给定度序列的简单图的均匀采样,或者还具有以关节矩阵形式表示的给定程度相关性。一种方法是使用基于边缘开关(掉掉)保护约束的Markov链,是不可缩短的(ergodic)和快速混合。 1999年,Kannan,Tetali和Vempala(KTV)提出了一种简单的交换马尔可夫链,用于给定度序列的采样图,并猜测它在任意度序列中快速(多项式时间)混合。虽然猜想仍然是开放的,但已经证明了特殊程度序列,特别是对于无向和定向的常规简单图,半常规二分层和具有某些有界最大程度的图形的那些。在这里,我们证明了用于新颖,指数大量的不规则程度序列的快速混合KTV猜想。我们的方法基于度量序列的规范分解成分裂图度序列,是图形实现空间的结构定理以及Markov链的分解定理。在引入二分的“分裂”度序列后,我们还概括了双链和指向图的规范分裂图分解。

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