LGAIDec 31, 2024

Fast and Interpretable Mixed-Integer Linear Program Solving by Learning Model Reduction

arXiv:2501.00307v13 citationsh-index: 2AAAI
Originality Incremental advance
AI Analysis

This addresses the problem of solving large-scale MILP problems faster and more accurately for optimization practitioners, representing an incremental improvement over existing ML-based methods.

The paper tackles the scalability issue in machine learning-based Mixed-Integer Linear Programming (MILP) solvers by learning a reduced and equivalent model instead of directly learning the optimal solution, resulting in nearly 20% improvement in solution accuracy over state-of-the-art methods and two to four orders of magnitude speedups compared to the commercial solver Gurobi.

By exploiting the correlation between the structure and the solution of Mixed-Integer Linear Programming (MILP), Machine Learning (ML) has become a promising method for solving large-scale MILP problems. Existing ML-based MILP solvers mainly focus on end-to-end solution learning, which suffers from the scalability issue due to the high dimensionality of the solution space. Instead of directly learning the optimal solution, this paper aims to learn a reduced and equivalent model of the original MILP as an intermediate step. The reduced model often corresponds to interpretable operations and is much simpler, enabling us to solve large-scale MILP problems much faster than existing commercial solvers. However, current approaches rely only on the optimal reduced model, overlooking the significant preference information of all reduced models. To address this issue, this paper proposes a preference-based model reduction learning method, which considers the relative performance (i.e., objective cost and constraint feasibility) of all reduced models on each MILP instance as preferences. We also introduce an attention mechanism to capture and represent preference information, which helps improve the performance of model reduction learning tasks. Moreover, we propose a SetCover based pruning method to control the number of reduced models (i.e., labels), thereby simplifying the learning process. Evaluation on real-world MILP problems shows that 1) compared to the state-of-the-art model reduction ML methods, our method obtains nearly 20% improvement on solution accuracy, and 2) compared to the commercial solver Gurobi, two to four orders of magnitude speedups are achieved.

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