A Classifier to Decide on the Linearization of Mixed-Integer Quadratic Problems in CPLEX

Oper. Res. Pub Date : 2022-04-05 DOI:10.1287/opre.2022.2267
Pierre Bonami, Andrea Lodi, Giulia Zarpellon
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引用次数: 7

Abstract

Despite modern solvers being able to tackle mixed-integer quadratic programming problems (MIQPs) for several years, the theoretical and computational implications of the employed resolution techniques are not fully grasped yet. An interesting question concerns the choice of whether to linearize the quadratic part of a convex MIQP: although in theory no approach dominates the other, the decision is typically performed during the preprocessing phase and can thus substantially condition the downstream performance of the solver. In “A Classifier to Decide on the Linearization of Mixed-Integer Quadratic Problems in CPLEX,” Bonami, Lodi, and Zarpellon use machine learning (ML) to cast a prediction on this algorithmic choice. The whole experimental framework aims at integrating optimization knowledge in the learning pipeline and contributes a general methodology for using ML in MIP technology. The workflow is fine-tuned to enable online predictions in the IBM-CPLEX solver ecosystem, and, as a practical result, a classifier deciding on MIQP linearization is successfully deployed in CPLEX 12.10.0.
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一种判定CPLEX中混合整数二次问题线性化的分类器
尽管现代求解器已经能够解决混合整数二次规划问题(MIQPs)好几年了,但所采用的解决技术的理论和计算含义尚未完全掌握。一个有趣的问题涉及到是否对凸MIQP的二次部分进行线性化的选择:尽管理论上没有一种方法优于另一种方法,但该决定通常是在预处理阶段执行的,因此可以实质上限制求解器的下游性能。在“决定CPLEX中混合整数二次问题线性化的分类器”中,Bonami, Lodi和Zarpellon使用机器学习(ML)对这种算法选择进行预测。整个实验框架旨在将优化知识整合到学习管道中,并为在MIP技术中使用ML提供了一个通用的方法。工作流程经过微调,可以在IBM-CPLEX求解器生态系统中进行在线预测,并且作为实际结果,在CPLEX 12.10.0中成功部署了决定MIQP线性化的分类器。
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