Elsevier

Journal of Algorithms

Volume 24, Issue 2, August 1997, Pages 310-324
Journal of Algorithms

Regular Article
A Network-Flow Technique for Finding Low-Weight Bounded-Degree Spanning Trees,☆☆

https://doi.org/10.1006/jagm.1997.0862Get rights and content
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Abstract

Given a graph with edge weights satisfying the triangle inequality, and a degree bound for each vertex, the problem of computing a low-weight spanning tree such that the degree of each vertex is at most its specified bound is considered. In particular, modifying a given spanning treeTusingadoptionsto meet the degree constraints is considered. A novel network-flow-based algorithm for finding a good sequence of adoptions is introduced. The method yields a better performance guarantee than any previous algorithm. If the degree constraintd(v) for eachvis at least 2, the algorithm is guaranteed to find a tree whose weight is at most the weight of the given tree times 2  min{(d(v)  2)/(degT(v)  2) : degT(v) > 2}, where degT(v) is the initial degree ofv. Equally importantly, it takes this approach to the limit in the following sense: if any performance guarantee that is solely a function of the topology and edge weights of a given tree holds foranyalgorithm at all, then it also holds for the given algorithm. Examples are provided in which no lighter tree meeting the degree constraint exists. Linear-time algorithms are provided with the same worst-case performance guarantee. ChoosingTto be a minimum spanning tree yields approximation algorithms with factors less than 2 for the general problem on geometric graphs with distances induced by variousLpnorms. Finally, examples of Euclidean graphs are provided in which the ratio of the lengths of an optimal Traveling Salesman path and a minimum spanning tree can be arbitrarily close to 2.

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A preliminary version of this paper appeared in “Proceedings of the 5th International Integer Programming and Combinatorial Optimization Conference (IPCO), June 1996,” pp. 105–117.

☆☆

B. Roy, Ed.

E-mail: [email protected].

Research supported by NSF Research Initiation Award CCR-9307462 and an NSF CAREER Award CCR-9501355. E-mail: [email protected].

§

E-mail: [email protected].

Research supported in part by NSF Research Initiation Award CCR-9409625. E-mail: [email protected].

Part of this research was done while at the School of ORIE, Cornell University, Ithaca, NY 14853 supported by Éva Tardos' NSF PYI Grant DDM-9157199. E-mail: [email protected].