Correlated Mutations for Integer Programming
Ofer M. Shir, Michael Emmerich

TL;DR
This paper investigates correlated mutation distributions for integer programming, proposing the Double Geometric distribution and the $ ext{l}_1$-norm as improvements for heuristic search strategies, supported by theoretical analysis and empirical results.
Contribution
It introduces the use of the Double Geometric distribution and the $ ext{l}_1$-norm in integer evolution strategies, enhancing their theoretical foundation and practical performance.
Findings
DG distribution outperforms TN in unbounded integer search.
Replacing $ ext{l}_2$-norm with $ ext{l}_1$-norm improves heuristic effectiveness.
Correlated mutations with DG yield better results on quadratic IP.
Abstract
Even with the recent theoretical advancements that dramatically reduced the complexity of Integer Programming (IP), heuristics remain the dominant problem-solvers for this difficult category. This study seeks to establish the groundwork for Integer Evolution Strategies (IESs), a class of randomized search heuristics inherently designed for continuous spaces. IESs already excel in treating IP in practice, but accomplish it via discretization and by applying sophisticated patches to their continuous operators, while persistently using the -norm as their operation pillar. We lay foundations for discrete search, by adopting the -norm, accounting for the suitable step-size, and questioning alternative measures to quantify correlations over the integer lattice. We focus on mutation distributions for unbounded integer decision variables. We briefly discuss a couple of candidate…
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