Demand forecasting is a central component of the replenishment process for retailers, as it provides crucial input for subsequent decision making like ordering processes. In contrast to point estimates, such as the conditional mean of the underlying probability distribution, or confidence intervals, forecasting complete probability density functions allows to investigate the impact on operational metrics, which are important to define the business strategy, over the full range of the expected demand. Whereas metrics evaluating point estimates are widely used, methods for assessing the accuracy of predicted distributions are rare, and this work proposes new techniques for both qualitative and quantitative evaluation methods. Using the supervised machine learning method "Cyclic Boosting", complete individual probability density functions can be predicted such that each prediction is fully explainable. This is of particular importance for practitioners, as it allows to avoid "black-box" models and understand the contributing factors for each individual prediction. Another crucial aspect in terms of both explainability and generalizability of demand forecasting methods is the limitation of the influence of temporal confounding, which is prevalent in most state of the art approaches.
翻译:需求预测是零售商增资过程的一个核心组成部分,因为它为随后的订购程序等决策提供了关键投入。与点估计,如基本概率分布的有条件平均值或信心间隔不同,预测完整的概率密度功能有助于调查对业务指标的影响,而业务指标对于确定商业战略至关重要,对于预期需求的全部范围而言,对业务指标至关重要。虽然评估点估计数的指标被广泛使用,但评估预测分布准确性的方法很少,这项工作为定性和定量评价方法提出了新技术。使用监督的机器学习方法“赛事促动”,可以预测每个预测的完全单个概率密度功能。这对于从业人员特别重要,因为它能够避免“黑盒”模型,并理解每项预测的促成因素。在需求预测方法的解释性和可概括性方面,另一个关键方面是限制时间调试的影响,这在大多数艺术方法中都很普遍。