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Safety stock planning under causal demand forecasting

机译:因果需求预测下的安全库存计划

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Mainstream inventory management approaches typically assume a given theoretical demand distribution and estimate the required parameters from historical data. A time series based framework uses a forecast (and a measure of forecast error) to parameterize the demand model. However, demand might depend on many other factors rather than just time and demand history. Inspired by a retail inventory management application where customer demand, among other factors, highly depends on sales prices, price changes, weather conditions, this paper presents two data-driven frameworks to set safety stock levels when demand depends on several exogenous variables. The first approach uses regression models to forecast demand and illustrates how estimation errors in this framework can be utilized to set required safety stocks. The second approach uses Linear Programming under different objectives and service level constraints to optimize a (linear) target inventory function of the exogenous variables. We illustrate the approaches using a case example and compare two methods with respect to their ability to achieve target service levels and the impact on inventory levels in a numerical study. We show that considerable improvements of the overly simplifying method of moments are possible and that the ordinary least squares approach yields a better performance than the LP-method, especially when the data sample for estimation is small and the objective is to satisfy a non-stockout probability constraint. However, if some of the standard assumptions of ordinary least squares regression are violated, the LP approach provides more robust inventory levels.
机译:主流库存管理方法通常假设给定的理论需求分布,并根据历史数据估算所需的参数。基于时间序列的框架使用预测(和预测误差的度量)来参数化需求模型。但是,需求可能取决于许多其他因素,而不仅仅是时间和需求历史记录。受到零售库存管理应用程序的启发,其中客户需求以及其他因素在很大程度上取决于销售价格,价格变化,天气情况,本文提出了两个数据驱动的框架,以在需求取决于几个外生变量时设置安全库存水平。第一种方法使用回归模型来预测需求,并说明如何利用此框架中的估计误差来设置所需的安全库存。第二种方法是在不同目标和服务水平约束下使用线性规划,以优化外生变量的(线性)目标库存函数。我们以案例为例进行说明,并在数值研究中比较两种方法的实现目标服务水平的能力以及对库存水平的影响。我们表明,矩的过分简化方法的显着改进是可能的,并且普通最小二乘法比LP方法具有更好的性能,特别是当用于估计的数据样本较小且目标是满足非缺货时概率约束。但是,如果违反了一般最小二乘回归的一些标准假设,则LP方法将提供更可靠的库存水平。

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