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Modelling near-real-time order arrival demand in e-commerce context: a machine learning predictive methodology

机译:在电子商务背景下建模近实时订单需求:机器学习预测方法

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Purpose Accurate prediction of order demand across omni-channel supply chains improves the management's decision-making ability at strategic, tactical and operational levels. The paper aims to develop a predictive methodology for forecasting near-real-time e-commerce order arrivals in distribution centres, allowing third-party logistics service providers to manage the hour-to-hour fast-changing arrival rates of e-commerce orders better. Design/methodology/approach The paper proposes a novel machine learning predictive methodology through the integration of the time series data characteristics into the development of an adaptive neuro-fuzzy inference system. A four-stage implementation framework is developed for enabling practitioners to apply the proposed model. Findings A structured model evaluation framework is constructed for cross-validation of model performance. With the aid of an illustrative case study, forecasting evaluation reveals a high level of accuracy of the proposed machine learning approach in forecasting the arrivals of real e-commerce orders in three different retailers at three-hour intervals. Research limitations/implications Results from the case study suggest that real-time prediction of individual retailer's e-order arrival is crucial in order to maximize the value of e-order arrival prediction for daily operational decision-making. Originality/value Earlier researchers examined supply chain demand, forecasting problem in a broader scope, particularly in dealing with the bullwhip effect. Prediction of real-time, hourly based order arrivals has been lacking. The paper fills this research gap by presenting a novel data-driven predictive methodology.
机译:目的准确预测全渠道供应链的订单需求提高了战略,战术和业务水平的管理层的决策能力。本文旨在开发预测方法,用于预测分销中心的近期实时电子商务订单抵达,允许第三方物流服务提供商管理一小时到小时的快速变化的电子商务订单的快速变化率。设计/方法/方法本文通过将时间序列数据特性集成到自适应神经模糊推理系统的开发中提出了一种新颖的机器学习预测方法。开发了一个四阶段实施框架,用于支持从业者应用所提出的模型。调查结果构造了结构化模型评估框架,用于模型性能的交叉验证。借助于说明性案例研究,预测评估揭示了所提出的机器学习方法的高度准确性,以便在三个小时的间隔预测三个不同零售商的真正电子商务订单的到达。研究局限/影响结果来自案例研究表明,个别零售商的电子订单到达的实时预测是至关重要的,以最大限度地提高日常运行决策的电子订单到达预测的价值。原创性/价值早期研究人员审查了供应链需求,预测更广泛的范围内的问题,特别是在处理牛鞭效应方面。缺乏实时预测,每小时的订单到达。本文通过呈现新的数据驱动的预测方法来填充该研究差距。

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