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引用次数: 0
摘要
一个图中的顶点集合如果能引出一个包含哈密顿循环的子图,则称为哈密顿子集。Kim, Liu, Sharifzadeh, and Staden证明了对于大$d$,在所有具有最小度$d$的图中,$K_{d+1}$使哈密顿子集的个数最小。我们证明了一个考虑图的顺序和结构的近似最优下界。对于许多自然图类,它提供了一个比极值界($\approx 2^{d+1}$)更好的界。其中,我们的界表明一个$n$顶点$C_4$最小度$d$的无图包含至少$n2^{d^{2- 0(1)}}$哈密顿子集。
Many Hamiltonian subsets in large graphs with given density
Abstract A set of vertices in a graph is a Hamiltonian subset if it induces a subgraph containing a Hamiltonian cycle. Kim, Liu, Sharifzadeh, and Staden proved that for large $d$ , among all graphs with minimum degree $d$ , $K_{d+1}$ minimises the number of Hamiltonian subsets. We prove a near optimal lower bound that takes also the order and the structure of a graph into account. For many natural graph classes, it provides a much better bound than the extremal one ( $\approx 2^{d+1}$ ). Among others, our bound implies that an $n$ -vertex $C_4$ -free graph with minimum degree $d$ contains at least $n2^{d^{2-o(1)}}$ Hamiltonian subsets.
期刊介绍:
Published bimonthly, Combinatorics, Probability & Computing is devoted to the three areas of combinatorics, probability theory and theoretical computer science. Topics covered include classical and algebraic graph theory, extremal set theory, matroid theory, probabilistic methods and random combinatorial structures; combinatorial probability and limit theorems for random combinatorial structures; the theory of algorithms (including complexity theory), randomised algorithms, probabilistic analysis of algorithms, computational learning theory and optimisation.