计算机科学
概率逻辑
机器学习
人工智能
调度(生产过程)
任务(项目管理)
数学优化
工程类
数学
系统工程
作者
Priya L. Donti,Brandon Amos,J. Zico Kolter
出处
期刊:Neural Information Processing Systems
日期:2017-03-01
卷期号:30: 5484-5494
被引量:76
摘要
With the increasing popularity of machine learning techniques, it has become common to see prediction algorithms operating within some larger process. However, the criteria by which we train these algorithms often differ from the ultimate criteria on which we evaluate them. This paper proposes an end-to-end approach for learning probabilistic machine learning models in a manner that directly captures the ultimate task-based objective for which they will be used, within the context of stochastic programming. We present three experimental evaluations of the proposed approach: a classical inventory stock problem, a real-world electrical grid scheduling task, and a real-world energy storage arbitrage task. We show that the proposed approach can outperform both traditional modeling and purely black-box policy optimization approaches in these applications.
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