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Expanders Are Universal for the Class of All Spanning Trees

Given a class of graphs F, we say that a graph G is universal for F, or F-universal, if every H in F is contained in G as a subgraph. The construction of sparse universal graphs for various families F has received a considerable amount of attention. One is particularly interested in tight F-universal graphs, i.e., graphs whose number of vertices is equal to the largest number of vertices in a graph from F. Arguably, the most studied case is that when F is some class of trees. Given integers n and Δ, we denote by T(n,Δ) the class of all n-vertex trees with maximum degree at most Δ. In this work, we show that every n-vertex graph satisfying certain natural expansion properties is T(n,Δ)-universal or, in other words, contains every spanning tree of maximum degree at most Δ. Our methods also apply to the case when Δis some function of n. The result has a few very interesting implications. Most importantly, we obtain that the random graph G(n,p) is asymptotically almost surely (a.a.s.) universal for the class of all bounded degree spanning (i.e., n-vertex) trees provided that p \geq c n^{-1/3} \log^2n where c > 0 is a constant. Moreover, a corresponding result holds for the random regular graph of degree pn. In fact, we show that if Δsatisfies \log n \leq Δ\leq n^{1/3}, then the random graph G(n,p) with p \geq c Δn^{-1/3} \log n and the random r-regular n-vertex graph with r \geq cΔn^{2/3} \log n are a.a.s. T(n,Δ)-universal. Another interesting consequence is the existence of locally sparse n-vertex T(n,Δ)-universal graphs. For constant Δ, we show that one can (randomly) construct n-vertex T(n,Δ)-universal graphs with clique number at most five. Finally, we show robustness of random graphs with respect to being universal for T(n,Δ) in the context of the Maker-Breaker tree-universality game.

preprint2011arXivOpen access
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