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Automobile Manufacturing Logistic Service Management and Decision Support Using Classification and Clustering Methodologies

机译:汽车制造物流服务管理和决策支持使用分类和聚类方法

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Given the growing complexity of consumer preferences and the underlying market advantages of addressing these preferences, manufacturers and logistic service providers constantly monitor supply chain efficiency and quality requirements. Third-party logistic services are offered as a means to attract customers and enhance competitiveness as long as these services are effectively integrated into the order fullfilment processes. This research uses customer preference attributes to define distinctive dilivery and distribution of orders. The clustering and classification methods provide decision support capabilities to logistics providers so that they can adapt processes to satisfy specific customer preferences. A K-means clustering algorithm clusters customers' orders using demand attributes. Second, a decision tree classification approach analyzes each cluster segment using the history of consumer order preferences. Thus, the cluster results are the input data for the classification of logistics operations. The logistics service provider's delivery services are tailored to satisfy each customer’s order requirements and preferences.
机译:鉴于消费者偏好的复杂性越来越复杂,以及解决这些偏好的潜在市场优势,制造商和物流服务提供商不断监控供应链效率和质量要求。只要这些服务有效地集成到订单全面流程中,提供了吸引客户的第三方物流服务,以吸引客户并提高竞争力。本研究使用客户偏好属性来定义独特的拖递和分发订单。聚类和分类方法为物流提供商提供决策支持能力,以便它们可以调整满足特定客户偏好的流程。 k-means聚类算法将客户使用需求属性的命令群集。其次,决策树分类方法使用消费者订单偏好的历史分析每个群集段。因此,集群结果是物流操作分类的输入数据。物流服务提供商的送货服务是量身定制的,以满足每个客户的订单要求和偏好。

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