Publication | Open Access
Fast Semidifferential-based Submodular Function Optimization
55
Citations
37
References
2013
Year
Mathematical ProgrammingArtificial IntelligenceModel OptimizationLarge-scale Global OptimizationEngineeringMachine LearningData ScienceSubmodular Function OptimizationDerivative-free OptimizationLarge Scale OptimizationInverse ProblemsComputer ScienceSubmodular SemigradientsDeep LearningNondifferentiable OptimizationApproximation TheorySubmodular Optimization
We present a practical and powerful new framework for both unconstrained and constrained submodular function optimization based on discrete semidifferentials (sub- and super-differentials). The resulting algorithms, which repeatedly compute and then efficiently optimize submodular semigradients, offer new and generalize many old methods for submodular optimization. Our approach, moreover, takes steps towards providing a unifying paradigm applicable to both submodular min- imization and maximization, problems that historically have been treated quite distinctly. The practicality of our algorithms is important since interest in submodularity, owing to its natural and wide applicability, has recently been in ascendance within machine learning. We analyze theoretical properties of our algorithms for minimization and maximization, and show that many state-of-the-art maximization algorithms are special cases. Lastly, we complement our theoretical analyses with supporting empirical experiments.
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