E-Commerce Supply Chain Optimization with the MOORA Method and Certainty Factor

Caroline
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Abstract

This study analyzes supply chain optimization on e-commerce platforms by applying the MOORA (Multi-Objective Optimization on the basis of Ratio Analysis) and Certainty Factor methods. The aim of this research is to gain in-depth insights into the relative performance of e-commerce platforms in the context of predefined criteria and sub-criteria. The research methodology consists of six stages, including data collection, selection of criteria and sub-criteria, application of Certainty Factor, selection of case studies, relative analysis using MOORA, and certainty level analysis using Certainty Factor. The results of the analysis show that these two methods provide valuable insights regarding the performance of e-commerce platforms. The MOORA method provides a relatively strong rating, while the Certainty Factor provides an additional dimension by considering the level of certainty regarding the factors that affect performance. From a comparison of the results of the two methods, platforms such as Tokopedia.com and Shopee consistently rank well in both analyses. The implication of this research is that the e-commerce platform has greater development potential in supply chain optimization efforts. Overall, the integration of the MOORA and Certainty Factor methods has succeeded in providing more detailed and comprehensive insights into supply chain optimization on e-commerce platforms. This research provides guidance for stakeholders in making more informed and directed decisions regarding supply chain optimization strategies in e-commerce platforms
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利用 MOORA 方法和确定性因子优化电子商务供应链
本研究通过应用 MOORA(基于比率分析的多目标优化)和确定性因子方法,对电子商务平台的供应链优化进行了分析。本研究的目的是根据预定义的标准和子标准,深入了解电子商务平台的相对绩效。研究方法包括六个阶段,包括数据收集、标准和次级标准的选择、确定性因子的应用、案例研究的选择、使用 MOORA 进行相对分析以及使用确定性因子进行确定性水平分析。分析结果表明,这两种方法都能为电子商务平台的绩效提供有价值的见解。MOORA 方法提供了一个相对较强的评级,而确定性因子则通过考虑影响绩效的因素的确定性水平提供了一个额外的维度。通过比较这两种方法的结果,Tokopedia.com 和 Shopee 等平台在这两种分析中的排名都很靠前。这项研究的意义在于,电子商务平台在供应链优化工作中具有更大的发展潜力。总之,MOORA 和确定性因子方法的整合成功地为电子商务平台的供应链优化提供了更详细、更全面的见解。这项研究为利益相关者提供了指导,帮助他们就电子商务平台的供应链优化战略做出更明智、更有方向性的决策。
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