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Demand forecasting in the presence of systematic events: Cases in capturing sales promotions

机译:在系统事件存在下需求预测:捕获销售促销的案例

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摘要

Reliable demand forecasts are critical for effective supply chain management. Several endogenous and exogenous variables can influence the dynamics of demand, and hence a single statistical model that only consists of historical sales data is often insufficient to produce accurate forecasts. In practice, the forecasts generated by baseline statistical models are often judgmentally adjusted by forecasters to incorporate factors and information that are not incorporated in the baseline models. There are however systematic events whose effect can be quantified and modeled to help minimize human intervention in adjusting the baseline forecasts. In this paper, we develop and test a novel regime-switching approach to quantify systematic information/events and objectively incorporate them into the baseline statistical model. Our simple yet practical and effective model can help limit forecast adjustments to only focus on the impact of less systematic events such as sudden climate change or dynamic market activities. The model is validated empirically using sales and promotional data from two Australian companies. The model is also benchmarked against commonly employed statistical and machine learning forecasting models. Discussions focus on thorough analysis of promotions impact and benchmarking results. We show that the proposed model can successfully improve forecast accuracy and avoid poor forecasts when compared to the current industry practice which heavily relies on human judgment to factor in all types of information/events. The proposed model also outperforms sophisticated machine learning methods by mitigating the generation of extremely poor forecasts that drastically differ from actual sales due to changes in demand states.
机译:可靠的需求预测对于有效的供应链管理至关重要。几个内源性和外源性变量可以影响需求的动态,因此单一的统计模型仅由历史销售数据组成,通常不足以产生准确的预测。在实践中,由基线统计模型产生的预测通常由预报员判配判配评分,以结合在基线模型中未结合的因素和信息。然而,有系统的事件,其效果可以量化和建模,以帮助最大限度地减少人为干预调整基线预测。在本文中,我们开发和测试一种新的制度切换方法来量化系统信息/事件,并客观地将它们纳入基线统计模型。我们简单而实用且有效的模型可以帮助限制预测调整,以专注于突然的气候变化或动态市场活动等系统事件的影响。该模型经验验证使用来自两个澳大利亚公司的销售和促销数据。该模型也针对常用统计和机器学习预测模型进行了基准测试。讨论重点是彻底分析促销影响和基准结果。我们表明,与当前行业实践相比,拟议的模型可以成功提高预测准确性,避免差预测,这些行业实践严重依赖于所有类型的信息/事件中的因素。拟议的模型还通过减轻由于需求状态的变化导致的实际销售的极差差异的极度差异的产生,优于复杂的机器学习方法。

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