Data-driven imitation learning-based approach for order size determination in supply chains

被引:2
|
作者
Kurian, Dony S. S. [1 ]
Pillai, V. Madhusudanan [1 ]
Gautham, J. [1 ]
Raut, Akash [2 ]
机构
[1] Natl Inst Technol Calicut, Dept Mech Engn, NIT Campus, Calicut 673601, Kerala, India
[2] Natl Inst Technol Calicut, Dept Elect & Elect Engn, NIT Campus, Calicut 673601, Kerala, India
关键词
supply chain; order size determination; machine learning; behavioural experiments; LightGBM; imitation learning; beer game; BEER DISTRIBUTION GAME; INVENTORY MANAGEMENT; DECISION-MAKING; OPTIMIZATION; BEHAVIOR; POLICIES; IMPACT;
D O I
10.1504/EJIE.2023.130601
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Past studies have attempted to formulate the order decision-making behaviour of humans for inventory replenishment in dynamic stock management environments. This paper investigates whether a data-driven approach like machine learning can imitate the order size decisions of humans and consequently enhance supply chain performances. Accordingly, this paper proposes a supervised machine learning-based order size determination approach. The proposed approach is initially executed using the order decision data collected from a simulated stock management environment similar to the 'beer game'. Subsequent comparative analysis shows that the proposed approach successfully enhances all supply chain performance measures compared to other well-known ordering methods. Additionally, the proposed approach is validated on a retail case study to investigate its efficacy. This paper thus focuses on extending the past works reported in the literature by modelling human order decision-making as data-driven imitation learning and contributing to machine learning applications for order management. [Submitted: 19 August 2021; Accepted: 16 February 2022]
引用
收藏
页码:379 / 407
页数:30
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