情境线性优化的快速收敛率

Fast Rates for Contextual Linear Optimization

Management Science · 2022
被引 30
人大 A+FT50UTD24ABS 4*

中文导读

研究了情境线性优化中,直接使用预测模型进行决策的简单方法,其遗憾收敛速度比专门优化下游决策的方法更快,对实践有积极意义。

Abstract

Incorporating side observations in decision making can reduce uncertainty and boost performance, but it also requires that we tackle a potentially complex predictive relationship. Although one may use off-the-shelf machine learning methods to separately learn a predictive model and plug it in, a variety of recent methods instead integrate estimation and optimization by fitting the model to directly optimize downstream decision performance. Surprisingly, in the case of contextual linear optimization, we show that the naïve plug-in approach actually achieves regret convergence rates that are significantly faster than methods that directly optimize downstream decision performance. We show this by leveraging the fact that specific problem instances do not have arbitrarily bad near-dual-degeneracy. Although there are other pros and cons to consider as we discuss and illustrate numerically, our results highlight a nuanced landscape for the enterprise to integrate estimation and optimization. Our results are overall positive for practice: predictive models are easy and fast to train using existing tools; simple to interpret; and, as we show, lead to decisions that perform very well. This paper was accepted by Hamid Nazerzadeh, data science.

上下文线性优化快速收敛率插件法决策性能