MILP-StuDio: MILP Instance Generation via Block Structure Decomposition
Mixed-integer linear programming (MILP) is one of the most popular mathematical formulations with numerous applications. In practice, improving the performance of MILP solvers often requires a large amount of high-quality data, which can be challenging to collect. Researchers thus turn to generation...
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Zusammenfassung: | Mixed-integer linear programming (MILP) is one of the most popular
mathematical formulations with numerous applications. In practice, improving
the performance of MILP solvers often requires a large amount of high-quality
data, which can be challenging to collect. Researchers thus turn to generation
techniques to generate additional MILP instances. However, existing approaches
do not take into account specific block structures -- which are closely related
to the problem formulations -- in the constraint coefficient matrices (CCMs) of
MILPs. Consequently, they are prone to generate computationally trivial or
infeasible instances due to the disruptions of block structures and thus
problem formulations. To address this challenge, we propose a novel MILP
generation framework, called Block Structure Decomposition (MILP-StuDio), to
generate high-quality instances by preserving the block structures.
Specifically, MILP-StuDio begins by identifying the blocks in CCMs and
decomposing the instances into block units, which serve as the building blocks
of MILP instances. We then design three operators to construct new instances by
removing, substituting, and appending block units in the original instances,
enabling us to generate instances with flexible sizes. An appealing feature of
MILP-StuDio is its strong ability to preserve the feasibility and computational
hardness of the generated instances. Experiments on the commonly-used
benchmarks demonstrate that using instances generated by MILP-StuDio is able to
significantly reduce over 10% of the solving time for learning-based solvers. |
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DOI: | 10.48550/arxiv.2410.22806 |