Tutorial on prescriptive analytics for logistics: what to predict and how to predict

The development of the Internet of things (IoT) and online platforms enables companies and governments to collect data from a much broader spatial and temporal area in the logistics industry. The huge amount of data provides new opportunities to handle uncertainty in optimization problems within the...

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Main Authors: Tian, Xuecheng, Yan, Ran, Wang, Shuaian, Liu, Yannick, Zhen, Lu
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2024
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Online Access:https://hdl.handle.net/10356/173752
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1737522024-03-01T15:33:53Z Tutorial on prescriptive analytics for logistics: what to predict and how to predict Tian, Xuecheng Yan, Ran Wang, Shuaian Liu, Yannick Zhen, Lu School of Civil and Environmental Engineering Business and Management Machine learning Predictive analytics The development of the Internet of things (IoT) and online platforms enables companies and governments to collect data from a much broader spatial and temporal area in the logistics industry. The huge amount of data provides new opportunities to handle uncertainty in optimization problems within the logistics system. Accordingly, various prescriptive analytics frameworks have been developed to predict different parts of uncertain optimization problems, including the uncertain parameter, the combined coefficient consisting of the uncertain parameter, the objective function, and the optimal solution. This tutorial serves as the pioneer to introduce existing literature on state-of-the-art prescriptive analytics methods, such as the predict-then-optimize framework, the smart predict-then-optimize framework, the weighted sample average approximation framework, the empirical risk minimization framework, and the kernel optimization framework. Based on these frameworks, this tutorial further proposes possible improvements and practical tips to be considered when we use these methods. We hope that this tutorial will serve as a reference for future prescriptive analytics research on the logistics system in the era of big data Published version 2024-02-26T06:55:49Z 2024-02-26T06:55:49Z 2023 Journal Article Tian, X., Yan, R., Wang, S., Liu, Y. & Zhen, L. (2023). Tutorial on prescriptive analytics for logistics: what to predict and how to predict. Electronic Research Archive, 31(4), 2265-2285. https://dx.doi.org/10.3934/era.2023116 2688-1594 https://hdl.handle.net/10356/173752 10.3934/era.2023116 2-s2.0-85150449778 4 31 2265 2285 en Electronic Research Archive © 2023 the Author(s), licensee AIMS Press. This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0). application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Business and Management
Machine learning
Predictive analytics
spellingShingle Business and Management
Machine learning
Predictive analytics
Tian, Xuecheng
Yan, Ran
Wang, Shuaian
Liu, Yannick
Zhen, Lu
Tutorial on prescriptive analytics for logistics: what to predict and how to predict
description The development of the Internet of things (IoT) and online platforms enables companies and governments to collect data from a much broader spatial and temporal area in the logistics industry. The huge amount of data provides new opportunities to handle uncertainty in optimization problems within the logistics system. Accordingly, various prescriptive analytics frameworks have been developed to predict different parts of uncertain optimization problems, including the uncertain parameter, the combined coefficient consisting of the uncertain parameter, the objective function, and the optimal solution. This tutorial serves as the pioneer to introduce existing literature on state-of-the-art prescriptive analytics methods, such as the predict-then-optimize framework, the smart predict-then-optimize framework, the weighted sample average approximation framework, the empirical risk minimization framework, and the kernel optimization framework. Based on these frameworks, this tutorial further proposes possible improvements and practical tips to be considered when we use these methods. We hope that this tutorial will serve as a reference for future prescriptive analytics research on the logistics system in the era of big data
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Tian, Xuecheng
Yan, Ran
Wang, Shuaian
Liu, Yannick
Zhen, Lu
format Article
author Tian, Xuecheng
Yan, Ran
Wang, Shuaian
Liu, Yannick
Zhen, Lu
author_sort Tian, Xuecheng
title Tutorial on prescriptive analytics for logistics: what to predict and how to predict
title_short Tutorial on prescriptive analytics for logistics: what to predict and how to predict
title_full Tutorial on prescriptive analytics for logistics: what to predict and how to predict
title_fullStr Tutorial on prescriptive analytics for logistics: what to predict and how to predict
title_full_unstemmed Tutorial on prescriptive analytics for logistics: what to predict and how to predict
title_sort tutorial on prescriptive analytics for logistics: what to predict and how to predict
publishDate 2024
url https://hdl.handle.net/10356/173752
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