Distributed Submodular Maximization with Limited Information
June 12, 2017 ยท Declared Dead ยท ๐ IEEE Transactions on Control of Network Systems
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Authors
Bahman Gharesifard, Stephen L. Smith
arXiv ID
1706.04082
Category
cs.DS: Data Structures & Algorithms
Cross-listed
eess.SY
Citations
66
Venue
IEEE Transactions on Control of Network Systems
Last Checked
2 months ago
Abstract
We consider a class of distributed submodular maximization problems in which each agent must choose a single strategy from its strategy set. The global objective is to maximize a submodular function of the strategies chosen by each agent. When choosing a strategy, each agent has access to only a limited number of other agents' choices. For each of its strategies, an agent can evaluate its marginal contribution to the global objective given its information. The main objective is to investigate how this limitation of information about the strategies chosen by other agents affects the performance when agents make choices according to a local greedy algorithm. In particular, we provide lower bounds on the performance of greedy algorithms for submodular maximization, which depend on the clique number of a graph that captures the information structure. We also characterize graph-theoretic upper bounds in terms of the chromatic number of the graph. Finally, we demonstrate how certain graph properties limit the performance of the greedy algorithm. Simulations on several common models for random networks demonstrate our results.
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