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A prescriptive analytics framework for efficient E-commerce order delivery

机译:高效电子商务订单交付的规定分析框架

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摘要

Achieving timely last-mile order delivery is often the most challenging part of an e-commerce order fulfillment. Effective management of last-mile operations can result in significant cost savings and lead to increased customer satisfaction. Currently, due to the lack of customer availability information, the schedules followed by delivery agents are optimized for the shortest tour distance. Therefore, orders are not delivered in customer-preferred time periods resulting in missed deliveries. Missed deliveries are undesirable since they incur additional costs. In this paper, we propose a decision support framework that is intended to improve delivery success rates while reducing delivery costs. Our framework generates delivery schedules by predicting the appropriate delivery time periods for order delivery. In particular, the proposed framework works in two stages. In the first stage, order delivery success for every order throughout the delivery shift is predicted using machine learning models. The predictions are used as an input for the optimization scheme, which generates delivery schedules in the second stage. The proposed framework is evaluated on two real-world datasets collected from a large e-commerce platform. The results indicate the effectiveness of the decision support framework in enabling savings of up to 10.2% in delivery costs when compared to the current industry practice.
机译:实现及时的一英里令汇率往往是电子商务订单履行的最具挑战性的部分。有效管理的最后一英里运营可能会降低成本的成本,并导致客户满意度提高。目前,由于客户可用性信息缺乏,随后的时间表随后针对最短的旅游距离进行了优化。因此,订单不会在客户 - 首选时间段内交付,导致错过交付。由于它们产生了额外的成本,因此错过的交付是不可取的。在本文中,我们提出了一个决策支持框架,该框架旨在提高交付成功率,同时降低交付成本。我们的框架通过预测订单交付的适当交货时间段来生成交付时间表。特别是,所提出的框架在两个阶段工作。在第一阶段,使用机器学习模型预测整个交付班次整个订单的订单交付成功。预测用作优化方案的输入,其在第二阶段生成递送时间表。拟议的框架是在从大型电子商务平台收集的两个现实世界数据集上进行评估。结果表明,决策支持框架的有效性在与当前行业实践相比,在交付成本上节省高达10.2%的效果。

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