参数化和非参数化操作数据分析的框架

IF 4.8 3区 管理学 Q1 ENGINEERING, MANUFACTURING
Qi Feng, J. George Shanthikumar
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引用次数: 0

摘要

本文介绍了基于数据的决策建模的操作数据分析(ODA)框架的一般理念。该框架的基本发展在于通过确定适当的操作统计类别,建立从数据到决策的直接映射。有效的决策制定依赖于数据集成和决策验证之间的仔细平衡。通过一个不确定条件下的典型决策问题,我们证明了现有的方法(包括统计估计再优化、回顾性优化、样本平均逼近、正则化、鲁棒优化和鲁棒满足)都可以通过ODA公式统一起来。为了使关键概念易于理解,我们使用一个简单的运行示例演示了一些现有方法如何在官方发展援助框架下变得等效,以及官方发展援助解决方案如何提高决策效率,特别是在小样本制度下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The framework of parametric and nonparametric operational data analytics
Abstract This paper introduces the general philosophy of the Operational Data Analytics (ODA) framework for data‐based decision modeling. The fundamental development of this framework lies in establishing the direct mapping from data to decision by identifying the appropriate class of operational statistics. The efficient decision making relies on a careful balance between data integration and decision validation . Through a canonical decision making problem under uncertainty, we show that the existing approaches (including statistical estimation and then optimization, retrospective optimization, sample average approximation, regularization, robust optimization, and robust satisficing) can all be unified through the lens of the ODA formulation. To make the key concepts accessible, we demonstrate, using a simple running example, how some of the existing approaches may become equivalent under the ODA framework, and how the ODA solution can improve the decision efficiency, especially in the small sample regime.
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来源期刊
Production and Operations Management
Production and Operations Management 管理科学-工程:制造
CiteScore
7.50
自引率
16.00%
发文量
278
审稿时长
24 months
期刊介绍: The mission of Production and Operations Management is to serve as the flagship research journal in operations management in manufacturing and services. The journal publishes scientific research into the problems, interest, and concerns of managers who manage product and process design, operations, and supply chains. It covers all topics in product and process design, operations, and supply chain management and welcomes papers using any research paradigm.
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