利用神经网络研究库存控制中的趋势关键词

IF 1.9 Q3 ENGINEERING, INDUSTRIAL
Adam Sadowski, Michał Sadowski, Per Engelseth, Zbigniew Galar, Beata Skowron-Grabowska
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引用次数: 0

摘要

摘要库存控制是物流研究的重点领域之一。使用SCOPUS数据库,我们使用统计方法的三角测量和机器学习处理了9829篇关于库存控制的文章。我们已经证明了所提出的统计方法和图注意网络(GAT)架构在库存控制研究中确定趋势设定关键词的有效性。我们通过展示文章中关键词的演变,展示了1950年至2021年间研究的变化。我们研究的一个新颖之处是应用无监督深度学习的文献计量分析方法。它可以识别出决定文章高引用率的关键字。在库存控制研究中提出的研究知识结构的理论框架是通用的,可以应用于任何知识领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using neural networks to examine trending keywords in Inventory Control
Abstract Inventory control is one of the key areas of research in logistics. Using the SCOPUS database, we have processed 9,829 articles on inventory control using triangulation of statistical methods and machine learning. We have proven the usefulness of the proposed statistical method and Graph Attention Network (GAT) architecture for determining trend-setting keywords in inventory control research. We have demonstrated the changes in the research conducted between 1950 and 2021 by presenting the evolution of keywords in articles. A novelty of our research is the applied approach to bibliometric analysis using unsupervised deep learning. It allows to identify the keywords that determined the high citation rate of the article. The theoretical framework for the intellectual structure of research proposed in the studies on inventory control is general and can be applied to any area of knowledge.
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来源期刊
Production Engineering Archives
Production Engineering Archives Engineering-Industrial and Manufacturing Engineering
CiteScore
6.10
自引率
13.00%
发文量
50
审稿时长
6 weeks
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