A ranking model for the greedy algorithm and discrete convexity

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Abstract

Generalizing the idea of the Lovász extension of a set function and the discrete Choquet integral, we introduce a combinatorial model that allows us to define and analyze matroid-type greedy algorithms. The model is based on a real-valued function v on a (finite) family of sets which yields the constraints of a combinatorial linear program. Moreover, v gives rise to a ranking and selection procedure for the elements of the ground set N and thus implies a greedy algorithm for the linear program. It is proved that the greedy algorithm is guaranteed to produce primal and dual optimal solutions if and only if an associated functional on ℝ N is concave. Previous matroid-type greedy models are shown to fit into the present general context. In particular, a general model for combinatorial optimization under supermodular constraints is presented which guarantees the greedy algorithm to work. © 2010 The Author(s).

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Faigle, U., Kern, W., & Peis, B. (2012). A ranking model for the greedy algorithm and discrete convexity. Mathematical Programming, 132(1–2), 393–407. https://doi.org/10.1007/s10107-010-0406-2

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