Estimating Demand Uncertainty Using Dispersion of Team Forecasts or Distributions of Forecast Errors

Christoph Diermann, Arnd Huchzermeier
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引用次数: 2

Abstract

In this paper, we compare two fundamentally different judgmental demand forecasting approaches used to estimate demand and their corresponding demand distributions. In the first approach, parameters are obtained from a linear regression and maximum likelihood estimation (MLE) based on team forecasts and dispersion within the judgmental forecasts. The second approach ignores dispersion and instead estimates the demand distribution based on the mean demand forecast and the historic relative forecast errors as measured by A/F ratios — that is, the ratio of actual to forecast outcomes. We show that accounting for forecast dispersion (as a timely indicator of anticipated demand risk) explains demand uncertainty sublinearly whereas the mean demand forecast most often explains demand uncertainty as being more than linear. We use actual company data from an online retailer to show that the A/F ratio approach dominates the MLE approach in terms of de-biasing the mean demand forecast, predicting total season demand, predicting the percentage of demand actually served at a target service level, and maximizing realized gross profit. However, the MLE approach more closely follows the assumed standard normally distributed demand and hence yields better-fitting demand distributions. Product segmentation can further improve the forecast accuracy of both approaches. In the application case study described here, we fit the data and analyze accuracy of forecasts. The results indicate that, in order to maximize accuracy, demand forecasts should always employ product segmentation and should favor the A/F ratio approach for order quantities “close” to the mean; otherwise, the MLE approach is preferred.
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利用团队预测的离散度或预测误差的分布估计需求不确定性
在本文中,我们比较了两种根本不同的判断需求预测方法,用于估计需求及其相应的需求分布。在第一种方法中,根据团队预测和判断预测内的离散度,通过线性回归和最大似然估计(MLE)获得参数。第二种方法忽略了分散,而是根据平均需求预测和历史相对预测误差(由A/F比率衡量)来估计需求分布,即实际结果与预测结果的比率。我们表明,考虑预测离散度(作为预期需求风险的及时指标)以次线性方式解释需求不确定性,而平均需求预测最常将需求不确定性解释为超过线性。我们使用来自在线零售商的实际公司数据来表明,在消除平均需求预测的偏倚、预测总季节需求、预测在目标服务水平上实际服务的需求百分比以及最大化实现毛利润方面,A/F比率方法优于MLE方法。然而,MLE方法更接近于假设的标准正态分布需求,因此产生更好的拟合需求分布。产品分割可以进一步提高两种方法的预测精度。在本文描述的应用案例研究中,我们拟合了数据并分析了预测的准确性。结果表明,为了最大限度地提高准确性,需求预测应始终采用产品细分,并应支持订单数量“接近”平均值的A/F比率方法;否则,首选MLE方法。
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