Publication | Open Access
A New Framework for Distributed Submodular Maximization
60
Citations
26
References
2016
Year
Mathematical ProgrammingArtificial IntelligenceCluster ComputingLarge-scale Global OptimizationEngineeringMachine LearningDistributed AlgorithmsNetwork AnalysisDistributed Ai SystemDistributed Data AnalyticsFast Sequential AlgorithmData ScienceData MiningParallel ComputingDistributed Submodular MaximizationCombinatorial OptimizationDistributed ModelMatroid ConstraintDistributed Constraint OptimizationLarge Scale OptimizationComputer ScienceDistributed LearningNetwork ScienceParallel Programming
A wide variety of problems in machine learning, including exemplar clustering, document summarization, and sensor placement, can be cast as constrained submodular maximization problems. A lot of recent effort has been devoted to developing distributed algorithms for these problems. However, these results suffer from high number of rounds, suboptimal approximation ratios, or both. We develop a framework for bringing existing algorithms in the sequential setting to the distributed setting, achieving near optimal approximation ratios for many settings in only a constant number of MapReduce rounds. Our techniques also give a fast sequential algorithm for non-monotone maximization subject to a matroid constraint.
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