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Mirror-Descent Methods in Mixed-Integer Convex Optimization

In: Facets of Combinatorial Optimization

Author

Listed:
  • Michel Baes

    (ETH Zürich, Department of Mathematics, Institut für Operations Research)

  • Timm Oertel

    (ETH Zürich, Department of Mathematics, Institut für Operations Research)

  • Christian Wagner

    (ETH Zürich, Department of Mathematics, Institut für Operations Research)

  • Robert Weismantel

    (ETH Zürich, Department of Mathematics, Institut für Operations Research)

Abstract

In this paper, we address the problem of minimizing a convex function f over a convex set, with the extra constraint that some variables must be integer. This problem, even when f is a piecewise linear function, is NP-hard. We study an algorithmic approach to this problem, postponing its hardness to the realization of an oracle. If this oracle can be realized in polynomial time, then the problem can be solved in polynomial time as well. For problems with two integer variables, we show with a novel geometric construction how to implement the oracle efficiently, that is, in $\mathcal {O}(\ln(B))$ approximate minimizations of f over the continuous variables, where B is a known bound on the absolute value of the integer variables. Our algorithm can be adapted to find the second best point of a purely integer convex optimization problem in two dimensions, and more generally its k-th best point. This observation allows us to formulate a finite-time algorithm for mixed-integer convex optimization.

Suggested Citation

  • Michel Baes & Timm Oertel & Christian Wagner & Robert Weismantel, 2013. "Mirror-Descent Methods in Mixed-Integer Convex Optimization," Springer Books, in: Michael Jünger & Gerhard Reinelt (ed.), Facets of Combinatorial Optimization, edition 127, pages 101-131, Springer.
  • Handle: RePEc:spr:sprchp:978-3-642-38189-8_5
    DOI: 10.1007/978-3-642-38189-8_5
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