Scaling, proximity, and optimization of integrally convex functions
2019
In discrete convex analysis, the scaling and proximity properties for the class of L\(^{\natural }\)-convex functions were established more than a decade ago and have been used to design efficient minimization algorithms. For the larger class of integrally convex functions of n variables, we show here that the scaling property only holds when \(n \le 2\), while a proximity theorem can be established for any n, but only with a superexponential bound. This is, however, sufficient to extend the classical logarithmic complexity result for minimizing a discrete convex function of one variable to the case of integrally convex functions of any fixed number of variables.
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