An Ensemble Learning Framework for Model Fitting and Evaluation in Inverse Linear Optimization

A. Babier, T. Chan, Taewoo Lee, Rafid Mahmood, Daria Terekhov
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引用次数: 22

Abstract

We develop a generalized inverse optimization framework for fitting the cost vector of a single linear optimization problem given multiple observed decisions. This setting is motivated by ensemble learning, where building consensus from base learners can yield better predictions. We unify several models in the inverse optimization literature under a single framework and derive assumption-free and exact solution methods for each one. We extend a goodness-of-fit metric previously introduced for the problem with a single observed decision to this new setting and demonstrate several important properties. Finally, we demonstrate our framework in a novel inverse optimization-driven procedure for automated radiation therapy treatment planning. Here, the inverse optimization model leverages an ensemble of dose predictions from different machine learning models to construct a consensus treatment plan that outperforms baseline methods. The consensus plan yields better trade-offs between the competing clinical criteria used for plan evaluation.
逆线性优化中模型拟合与评价的集成学习框架
我们开发了一个广义逆优化框架,用于拟合给定多个观测决策的单个线性优化问题的代价向量。这种设置是由集成学习驱动的,在集成学习中,从基础学习器中建立共识可以产生更好的预测。将逆优化文献中的几个模型统一在一个框架下,推导出每个模型的无假设精确解方法。我们将之前为具有单个观察决策的问题引入的拟合优度度量扩展到这个新设置,并演示了几个重要属性。最后,我们在一个新的逆优化驱动程序中展示了我们的框架,用于自动化放射治疗治疗计划。在这里,逆优化模型利用来自不同机器学习模型的剂量预测集合来构建优于基线方法的共识治疗计划。共识计划在用于计划评估的竞争性临床标准之间产生更好的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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