Alma Montserrat Romero-Serrano, Omar Ahumada-Valenzuela, J. C. Leyva-López, Marlenne G. Velazquez-Cazares
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引用次数: 0
摘要
在产品设计问题中,企业的目标是找到合适的产品属性配置,以增加其在市场中的参与度。这个问题属于定量营销领域,被认为是NP-Hard问题,因为它对最优解的搜索空间很广。在相关文献中,有不同的方法来解决这个问题,这些方法应用元启发式,重点是遗传算法。这项工作的主要目的是使用文献计量学分析方法对该领域最重要的贡献进行概述。本文采用Scopus数据库和Web of Science核心文集,获取国内领先和最具影响力的文章、会议论文、期刊、作者、机构和国家。结果显示,Kwong, C.K.是最具生产力的作者,而Nagamachi M.是最具影响力的作者。此外,中国在这一研究领域处于领先地位。遗传算法在解决产品设计问题中的应用是一个不断发展的研究领域,方法和方法都有了重要的发展。JEL代码:C00, C02收稿日期:07/10/2020。接受:20/02/2021。发表:01/06/2021。
A bibliometric analysis of the product line design problem
In the product design problem, firms aim to find suitable configurations of product attributes with the objective of increasing their participation in the marketplace. This problem belongs to the field of quantitative marketing and is considered a NP-Hard problem, due to its wide search space for an optimal solution. Among the related literature, there are different methodologies to address this problem, gaining ground those that apply metaheuristics, with an emphasis in Genetic Algorithms. The main aim of this work is to present an overview of the most significant contributions in this area using a bibliometric analysis approach. The paper uses Scopus database and Web of Science Core Collection, in order to obtain leading and the most influential articles, conferences papers, journals, authors, institutions and countries. The results highlight Kwong, C.K. as the most productive author while Nagamachi M. is the most influential author. Furthermore, China is the leading country in this research field. The use of Genetic Algorithms in the solutions of the Product Design Problem is a growing area of study with important development of methodologies and approaches.
JEL Codes: C00, C02
Received: 07/10/2020. Accepted: 20/02/2021. Published: 01/06/2021.