Litcius/Paper detail

Diversifying greedy sampling and evolutionary diversity optimisation for constrained monotone submodular functions

Aneta Neumann, Jakob Bossek, Frank Neumann

2021Proceedings of the Genetic and Evolutionary Computation Conference36 citationsDOI

Abstract

Submodular functions allow to model many real-world optimisation problems. This paper introduces approaches for computing diverse sets of high quality solutions for submodular optimisation problems with uniform and knapsack constraints. We first present diversifying greedy sampling approaches and analyse them with respect to the diversity measured by entropy and the approximation quality of the obtained solutions. Afterwards, we introduce an evolutionary diversity optimisation (EDO) approach to further improve diversity of the set of solutions. We carry out experimental investigations on popular submodular benchmark problems and analyse trade-offs in terms of solution quality and diversity of the resulting solution sets.

Topics & Concepts

Submodular set functionKnapsack problemMathematical optimizationGreedy algorithmBenchmark (surveying)Monotone polygonEntropy (arrow of time)MathematicsSampling (signal processing)Set (abstract data type)Computer scienceProgramming languageGeometryGeographyGeodesyPhysicsComputer visionFilter (signal processing)Quantum mechanicsComplexity and Algorithms in GraphsOptimization and Packing ProblemsOptimization and Search Problems