完整后设资料纪录
DC 栏位语言
dc.contributor.author曹智凯en_US
dc.contributor.authorTsau, Chih-Kaien_US
dc.contributor.author陈穆臻en_US
dc.contributor.authorChen, Mu-Chenen_US
dc.date.accessioned2014-12-12T02:43:07Z-
dc.date.available2014-12-12T02:43:07Z-
dc.date.issued2013en_US
dc.identifier.urihttp://140.113.39.130/cdrfb3/record/nctu/#GT070163601en_US
dc.identifier.urihttp://hdl.handle.net/11536/75361-
dc.description.abstract供应链风险管理一直是近年来非常热门的议题,而在供应链物流活动当中经常发生的货损事件,是造成延迟交货甚至是供应链中断的原因之一,但在实务或学术文献却鲜少有针对全球运筹企业各种运输方式造成的货损类型与其损防建议进行深入研究。因此,本论文将以从事全球运筹之电子产业为例,搜集并分析电子产品在频繁的全球物流活动当中发生的所有货损案件,再运用资料探勘技术中常见的决策树分析方法,发展出电子产品之货损类型与严重程度分类模式,并验证货损分类模式之有效性与实务管理之参考价值。
本论文之研究架构是参考知识发掘流程,并于资料探勘步骤运用决策树分析方法产生货损分类模式。决策树分析方法产生的货损分类模式,能提供实务管理者容易解读之分类规则与物流条件组合,做为预测货损结果之参考工具,因此能协助管理者建立出有效的货损防阻计画。此外,本研究使用的知识发掘与资料探勘技术,也期望能够推广至不同的产业与产品,用于企业物流活动之货损分析与货损防阻之管理。
zh_TW
dc.description.abstractSupply chain risk management has been a popular topic in recent years. Cargo loss in supply chain and logistics activities has been the major cause of delays and supply chain disruption; however, rarely do academic papers or examples in practice provide comprehensive studies focusing on types of cargo loss and loss prevention in various modes of transportation used by global companies. Therefore, this paper will mainly emphasize on the global electronics industry, gathering and analyzing all causes of its cargo losses in transit. Decision tree analysis, as generally used as one of the data mining technics, will be adapted to develop classification models for cargo loss type and severity. This paper also examines the effectiveness and value of these models in practice.
The frame work of the study is based on the process of KDD (Knowledge Discovery from Database) and the classification models are produced by using Decision Tree Analysis in the step of data mining. The cargo loss classification model produced by the decision tree analysis helps the manager understand the classification rule and the combination of logistics conditions easily so as to become a reference tool to the result of cargo loss prediction and helps the manager to make a more effective plan on cargo loss prevention. Furthermore, the KDD and Decision Tree Analysis used in this study are expected to be spread out in different industries and products, to manage their cargo loss analysis and cargo loss prevention in the logistics activities.
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dc.language.isozh_TWen_US
dc.subject供应链风险、货损、资料探勘、决策树zh_TW
dc.subjectSupply chain risk, Cargo loss, Data mining, Decision treeen_US
dc.title货损类型与严重程度分模式建构-以电子产品为例zh_TW
dc.titleDeveloping Classification Models for Cargo Loss Type and Severity ─ A Case of Electronics Productsen_US
dc.typeThesisen_US
dc.contributor.department管理学院运输物流学程zh_TW
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