On the Price of Stability of Undirected Multicast Games
October 20, 2016 Β· Declared Dead Β· π Workshop on Internet and Network Economics
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Authors
Rupert Freeman, Samuel Haney, Debmalya Panigrahi
arXiv ID
1610.06515
Category
cs.DS: Data Structures & Algorithms
Citations
6
Venue
Workshop on Internet and Network Economics
Last Checked
4 months ago
Abstract
In multicast network design games, a set of agents choose paths from their source locations to a common sink with the goal of minimizing their individual costs, where the cost of an edge is divided equally among the agents using it. Since the work of Anshelevich et al. (FOCS 2004) that introduced network design games, the main open problem in this field has been the price of stability (PoS) of multicast games. For the special case of broadcast games (every vertex is a terminal, i.e., has an agent), a series of works has culminated in a constant upper bound on the PoS (Bilo` et al., FOCS 2013). However, no significantly sub-logarithmic bound is known for multicast games. In this paper, we make progress toward resolving this question by showing a constant upper bound on the PoS of multicast games for quasi-bipartite graphs. These are graphs where all edges are between two terminals (as in broadcast games) or between a terminal and a nonterminal, but there is no edge between nonterminals. This represents a natural class of intermediate generality between broadcast and multicast games. In addition to the result itself, our techniques overcome some of the fundamental difficulties of analyzing the PoS of general multicast games, and are a promising step toward resolving this major open problem.
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