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B2B Supply Chain Performance Enhancement Road Map Using Data Mining Techniques

机译:使用数据挖掘技术的B2B供应链绩效增强路线图

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Presently, modern B2B supply chain management (B2B-SCM) equipped with semi-automated data logging systems accumulate large volumes. However, each SC unit in B2B-SC still individually develops their performance. Besides, their linkages of performance attributes between SC units still lack vital information extraction to improve theirs. Therefore, this paper aims to propose an integrated framework between B2B supply chain (B2B-SC) performance evaluation systems and data mining techniques, developing relationship rules of collaborative performance attribute enhancement. The methodology is as follows. Firstly, B2B-SC performance evaluation questionnaires based on two levels able to characterize collaborative relation between two or more partners in their SC were gathered from the case study companies. The data set of relationships between enterprise and its direct customers of the case study companies in France was used for demonstration. Secondly, data cleaning and preparations for rule extraction were performed on the questionnaire database. The significance of attribute was calculated using attribute ranking algorithms by means of information gain based on ranker search. These results were used to choose the crucial attributes from each micro view. Thirdly, web graph analysis was performed on this data to confirm the strong attribute relationship. Next, association rule was deployed to extract performance attribute relationship rules grounded on support and confidence cross validation method. The quality of each recognized rule is tested and, from numerous rules, only those that are statistically very strong and contain vital information are selected. Last but not least, these rules are interpreted by domain experts and studied by domain engineers to build a collaborative performance attribute enhancement road map. Furthermore, the final rule set of extracted rules contains very interesting information relating to SCs and also point out the critical existing SC attribute improvement. Ultimately, companies in this SC are able to use this framework to design and adjust their units to conform with the exact customer needs.
机译:当前,配备有半自动数据记录系统的现代B2B供应链管理(B2B-SCM)积累了大量信息。但是,B2B-SC中的每个SC单元仍会各自发展其性能。此外,它们在SC单元之间的性能属性的联系仍然缺乏重要的信息提取来改善它们。因此,本文旨在提出一个B2B供应链(B2B-SC)绩效评估系统与数据挖掘技术之间的集成框架,开发协作绩效属性增强的关系规则。方法如下。首先,从案例研究公司收集了基于B2B-SC绩效评估问卷,该问卷基于两个级别,能够表征其SC中两个或多个合作伙伴之间的协作关系。法国案例研究公司的企业与其直接客户之间的关系数据集用于演示。其次,在问卷数据库上进行数据清理和规则提取准备。通过基于等级搜索的信息增益,使用属性等级算法计算属性的重要性。这些结果用于从每个微观视图中选择关键属性。第三,对该数据进行网络图分析以确认强属性关系。接下来,部署关联规则以提取基于支持和置信度交叉验证方法的性能属性关系规则。每个公认规则的质量都经过测试,并且从众多规则中,仅选择统计上非常强大并包含重要信息的规则。最后但并非最不重要的一点是,这些规则由领域专家解释并由领域工程师进行研究,以构建协作的性能属性增强路线图。此外,提取的规则的最终规则集包含与SC有关的非常有趣的信息,并且还指出了现有SC关键属性的改进。最终,该SC中的公司能够使用此框架来设计和调整其单元,以符合确切的客户需求。

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