Prime Factorization of the Kirchhoff Polynomial: Compact Enumeration of Arborescences

Matús Mihalák, P. Uznański, Pencho Yordanov
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引用次数: 8

Abstract

We study the problem of enumerating all rooted directed spanning trees (arborescences) of a directed graph (digraph) $G=(V,E)$ of $n$ vertices. An arborescence $A$ consisting of edges $e_1,\ldots,e_{n-1}$ can be represented as a monomial $e_1\cdot e_2 \cdots e_{n-1}$ in variables $e \in E$. All arborescences $\mathsf{arb}(G)$ of a digraph then define the Kirchhoff polynomial $\sum_{A \in \mathsf{arb}(G)} \prod_{e\in A} e$. We show how to compute a compact representation of the Kirchhoff polynomial -- its prime factorization, and how it relates to combinatorial properties of digraphs such as strong connectivity and vertex domination. In particular, we provide digraph decomposition rules that correspond to factorization steps of the polynomial, and also give necessary and sufficient primality conditions of the resulting factors expressed by connectivity properties of the corresponding decomposed components. Thereby, we obtain a linear time algorithm for decomposing a digraph into components corresponding to factors of the initial polynomial, and a guarantee that no finer factorization is possible. The decomposition serves as a starting point for a recursive deletion-contraction algorithm, and also as a preprocessing phase for iterative enumeration algorithms. Both approaches produce a compressed output and retain some structural properties in the resulting polynomial. This proves advantageous in practical applications such as calculating steady states on digraphs governed by Laplacian dynamics, or computing the greatest common divisor of Kirchhoff polynomials. Finally, we initiate the study of a class of digraphs which allow for a practical enumeration of arborescences. Using our decomposition rules we observe that various digraphs from real-world applications fall into this class or are structurally similar to it.
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Kirchhoff多项式的质因数分解:树列的紧枚举
研究了具有$n$个顶点的有向图$G=(V,E)$的所有有根有向生成树(树形)的枚举问题。由边组成的乔木$A$$e_1,\ldots,e_{n-1}$可以表示为变量$e \in E$中的单项$e_1\cdot e_2 \cdots e_{n-1}$。有向图的所有树形$\mathsf{arb}(G)$定义Kirchhoff多项式$\sum_{A \in \mathsf{arb}(G)} \prod_{e\in A} e$。我们展示了如何计算Kirchhoff多项式的紧凑表示——它的质因数分解,以及它如何与有向图的组合性质(如强连通性和顶点支配)相关。特别地,我们给出了与多项式分解步骤相对应的有向图分解规则,并给出了由相应分解分量的连通性表示的结果因子的充分必要素数条件。由此,我们得到了将有向图分解为与初始多项式的因子相对应的分量的线性时间算法,并保证不可能进行更精细的分解。分解是递归删除-收缩算法的起点,也是迭代枚举算法的预处理阶段。这两种方法都会产生压缩的输出,并在产生的多项式中保留一些结构属性。这在实际应用中被证明是有利的,例如计算由拉普拉斯动力学控制的有向图上的稳态,或计算基尔霍夫多项式的最大公约数。最后,我们开始研究一类有向图,它允许树杈的实际枚举。使用我们的分解规则,我们观察到来自实际应用程序的各种有向图都属于这一类,或者在结构上与之相似。
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