4 research outputs found

    Maximizing Submodular Functions under Matroid Constraints by Multi-objective Evolutionary Algorithms

    No full text
    Many combinatorial optimization problems have underlying goal functions that are submodular. The classical goal is to find a good solution for a given submodular function f under a given set of constraints. In this paper, we investigate the runtime of a multi-objective evolutionary algorithm called GSEMO until it has obtained a good approximation for submodular functions. For the case of monotone submodular functions and uniform cardinality constraints we show that GSEMO achieves a (1 - 1/e)-approximation in expected time O(n2 (log n + k)), where k is the value of the given constraint. For the case of non-monotone submodular functions with k matroid intersection constraints, we show that GSEMO achieves a 1/(k +2+1/k + epsilon)-approximation in expected time O(nk+5 log(n)/epsilon).Tobias Friedrich and Frank Neuman
    corecore