首页> 外文期刊>Central European journal of operations research: CEJOR >Multistep quantile forecasts for supply chain and logistics operations: bootstrapping, the GARCH model and quantile regression based approaches
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Multistep quantile forecasts for supply chain and logistics operations: bootstrapping, the GARCH model and quantile regression based approaches

机译:供应链和物流运算的多步定量预测:引导,GARCH模型和大分回归的基于方法

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摘要

In this paper, we discuss and compare empirically various ways of computing multistep quantile forecasts of demand, with a special emphasis on the use of the quantile regression methodology. Such forecasts constitute a basis for production planning and inventory management in logistics systems optimized according to the cycle service level approach. Different econometric methods and models are considered: direct and iterated computations, linear and nonlinear (GARCH) models, simulation and non-simulation based procedures and parametric as well as semiparametric specifications. These methods are applied to compute multiperiod quantile forecasts of the monthly microeconomic time series from the popular M3 competition database. According to various accuracy measures for quantile predictions, the best procedures are based on simulation techniques using predictive distributions generated by either the quantile regression methodology combined with random draws from the uniform distribution or parametric and nonparametric bootstrap techniques. These methods lead to large reductions in the total costs of logistics systems as compared with non-simulation based procedures. For example, in the case of forecasting 12 months ahead, relatively short time series and a high cycle service level, the quantile regression based simulation approach reduces the average supply chain cost per unit of output by about 70-85%. At the shortest horizons, the GARCH model should be seriously considered among the preferred forecasting solutions for production and inventory planning.
机译:在本文中,我们讨论和比较了经验各种方式计算多级数量预测的需求,特别强调使用量子回归方法。根据周期服务水平方法优化的物流系统中,此类预测构成了生产计划和库存管理的基础。考虑了不同的计量方法和模型:直接和迭代的计算,线性和非线性(GARCH)模型,仿真和基于非模拟的程序和参数以及半仿真规范。这些方法应用于从流行的M3竞争数据库计算每月微观经济时间序列的多极定量预测。根据定量预测的各种准确度措施,最佳过程基于使用由量子回归方法生成的预测分布与随机抽取的预测分布,从均匀分布或参数和非参数和非参数引导技术的基础上基于仿真技术。与基于非模拟的程序相比,这些方法导致物流系统总成本的总成本较大。例如,在预测前12个月的情况下,相对短的时间序列和高周期服务水平,基于分位数的回归的仿真方法将每单位输出量的平均供应链成本降低约70-85%。在最短的地平线上,应在生产和库存规划的首选预测解决方案中认真考虑GARCH模型。

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