...
首页> 外文期刊>Entropy >Assessing the Performance of Hierarchical Forecasting Methods on the Retail Sector
【24h】

Assessing the Performance of Hierarchical Forecasting Methods on the Retail Sector

机译:评估零售业层次预测方法的效果

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Retailers need demand forecasts at different levels of aggregation in order to support a variety of decisions along the supply chain. To ensure aligned decision-making across the hierarchy, it is essential that forecasts at the most disaggregated level add up to forecasts at the aggregate levels above. It is not clear if these aggregate forecasts should be generated independently or by using an hierarchical forecasting method that ensures coherent decision-making at the different levels but does not guarantee, at least, the same accuracy. To give guidelines on this issue, our empirical study investigates the relative performance of independent and reconciled forecasting approaches, using real data from a Portuguese retailer. We consider two alternative forecasting model families for generating the base forecasts; namely, state space models and ARIMA. Appropriate models from both families are chosen for each time-series by minimising the bias-corrected Akaike information criteria. The results show significant improvements in forecast accuracy, providing valuable information to support management decisions. It is clear that reconciled forecasts using the Minimum Trace Shrinkage estimator (MinT-Shrink) generally improve on the accuracy of the ARIMA base forecasts for all levels and for the complete hierarchy, across all forecast horizons. The accuracy gains generally increase with the horizon, varying between 1.7% and 3.7% for the complete hierarchy. It is also evident that the gains in forecast accuracy are more substantial at the higher levels of aggregation, which means that the information about the individual dynamics of the series, which was lost due to aggregation, is brought back again from the lower levels of aggregation to the higher levels by the reconciliation process, substantially improving the forecast accuracy over the base forecasts.
机译:零售商需要在不同聚合级别上进行需求预测,以支持整个供应链中的各种决策。为了确保在整个层次结构中做出一致的决策,至关重要的是,将最细分级别的预测加到以上汇总级别的预测中。尚不清楚这些汇总预测是应独立生成还是通过使用分层预测方法生成,该方法可以确保在不同级别进行一致的决策,但至少不能保证相同的准确性。为了给这个问题提供指导,我们的实证研究使用来自葡萄牙零售商的真实数据,调查了独立和协调的预测方法的相对性能。我们考虑了两个可供选择的预测模型族,用于生成基本预测。即状态空间模型和ARIMA。通过最小化经偏差校正的Akaike信息标准,为每个时间序列选择两个族的适当模型。结果表明,预测准确性得到了显着提高,为支持管理决策提供了有价值的信息。显然,使用最小迹线收缩估计器(MinT-Shrink)进行协调的预测通常会提高ARIMA基础预测在所有级别和整个层次上跨所有预测范围的准确性。准确度增益通常随范围而增加,对于整个层次结构,准确度增益在1.7%和3.7%之间变化。同样明显的是,在较高的聚合水平下,预测准确性的收益会更大,这意味着由于聚合而丢失的有关该系列各个动态的信息会从较低的聚合水平中重新带回通过对帐过程提高到更高的水平,从而大大提高了基础预测的预测准确性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号