Sales forecasting is the prerequisite for a lot of managerial decisions such as production planning, material resource planning and budgeting in the supply chain. Promotions are one of the most important business strategies that are often used to boost sales. While promotions are attractive for generating demand, it is often difficult to forecast demand in their presence. In the past few decades, several quantitative models have been developed to forecast sales including statistical and machine learning models. However, these methods may not be adequate to account for all the internal and external factors that may impact sales. As a result, qualitative models have been adopted along with quantitative methods as consulting experts has been proven to improve forecast accuracy by providing contextual information. Such models are being used extensively to account for factors that can lead to a rapid change in sales, such as during promotions. In this paper, we aim to use Bayesian Networks to forecast promotional sales where a combination of factors such as price, type of promotions, and product location impacts sales. We choose to develop a BN model because BN models essentially have the capability to combine various qualitative and quantitative factors with causal forms, making it an attractive tool for sales forecasting during promotions. This can be used to adjust a company's promotional strategy in the context of this case study. We gather sales data for a particular product from a retailer that sells products in Australia. We develop a Bayesian Network for this product and validate our results by empirical analysis. This paper confirms that BNs can be effectively used to forecast sales, especially during promotions. In the end, we provide some research avenues for using BNs in forecasting sales.
翻译:销售预测是许多管理决策的先决条件,如生产规划、材料资源规划和供应链预算编制。促销是经常用来提高销售额的最重要商业战略之一。虽然促销对需求具有吸引力,但常常难以预测其存在的需求。在过去几十年,已经开发了若干定量模型来预测销售情况,包括统计和机器学习模式。然而,这些方法可能不足以说明可能影响销售的所有内部和外部因素。因此,在质量预测和定量方法的同时,也采用了定性模型,因为顾问专家已证明通过提供背景信息来提高预测准确性。这些模型被广泛用于说明可能导致销售迅速变化的因素,如促销期间等。在本论文中,我们的目标是利用贝叶网络预测促销销售情况,同时结合价格、促销类型和产品地点销售情况等因素。我们选择开发BN模型,因为BN模型基本上有能力将各种质量和定量因素与因果关系表结合起来,从而在促销过程中使其成为有吸引力的工具。这种模型被广泛用来说明哪些因素可以导致销售迅速变化。在促销过程中,例如促销期间。在本文中,我们可有效地利用B网络来调整公司销售销售情况,在销售结果中,我们用来为B销售结果。我们用来研究。我们用来在销售结果中,我们用来研究。我们用一个特定的促销产品进行。我们用来分析。我们用来研究。我们用来研究。我们用来研究。我们用一个特定的促销结果,用于在销售结果,用于在B 用于在销售结果。我们用来研究。