The role of optimization in some recent advances in data-driven decision-making

被引:0
|
作者
Lennart Baardman
Rares Cristian
Georgia Perakis
Divya Singhvi
Omar Skali Lami
Leann Thayaparan
机构
[1] University of Michigan,Ross School of Business
[2] Massachusetts Institute of Technology,Operations Research Center
[3] New York University,Stern School of Business
来源
Mathematical Programming | 2023年 / 200卷
关键词
Data-driven decision-making; Offline learning; 90B50: Management decision making including multiple objectives; 90C11: Mixed Integer Optimization; 90C90: Applications of mathematical programming; 68T05: Learning and adaptive systems; 62H30: Classification and discrimination; cluster analysis; 62J05: Linear regression; 62J02: General nonlinear regression; 62-07: Data analysis;
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摘要
Data-driven decision-making has garnered growing interest as a result of the increasing availability of data in recent years. With that growth many opportunities and challenges have sprung up in the areas of predictive and prescriptive analytics. Often, optimization can play an important role in tackling these issues. In this paper, we review some recent advances that highlight the difference that optimization can make in data-driven decision-making. We discuss some of our contributions that aim to advance both predictive and prescriptive models. First, we describe how we can optimally estimate clustered models that result in improved predictions. Next, we consider how we can optimize over objective functions that arise from tree ensemble models in order to obtain better prescriptions. Finally, we discuss how we can learn optimal solutions directly from the data allowing for prescriptions without the need for predictions. For all these new methods, we stress the need for good performance but also the scalability to large heterogeneous datasets.
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页码:1 / 35
页数:34
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