Leveraging Comparables for New Product Sales Forecasting

Lennart Baardman, Igor Levin, G. Perakis, Divya Singhvi
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引用次数: 34

Abstract

Many firms regularly introduce new products. Before the launch of any new product, firms need to make various operational decisions, which are guided by the sales forecast. The new product sales forecasting problem is challenging when compared to forecasting sales of existing products. For existing products, historical sales data gives an indicator of future sales, but this data is not available for a new product. We propose a novel sales forecasting model that is estimated with data of comparable products introduced in the past. We formulate the problem of clustering products and fitting forecasting models to these clusters simultaneously. Inherently, the model has a large number of parameters, which can lead to an overly complex model. Hence, we add regularization to the model so that it can estimate sparse models. This problem is computationally hard, and as a result, we develop a scalable algorithm that produces a forecasting model with good analytical guarantees on the prediction error. In close collaboration with our industry partner Johnson & Johnson Consumer Companies Inc., a major fast moving consumer goods manufacturer, we test our approach on real datasets, after which we check the robustness of our results with data from a large fast fashion retailer. We show that, compared to several widely used forecasting methods, our approach improves MAPE and WMAPE by 20-60% across various product segments compared to several widely used forecasting methods. Additionally, for the consumer goods manufacturer, we develop a fast and easy-to-use Excel tool that aids managers with forecasting and making decisions before a new product launch.
利用可比性进行新产品销售预测
许多公司定期推出新产品。在推出任何新产品之前,公司都需要在销售预测的指导下做出各种经营决策。与现有产品的销售预测相比,新产品的销售预测问题具有挑战性。对于现有产品,历史销售数据提供了未来销售的指标,但对于新产品,此数据不可用。我们提出了一种新的销售预测模型,该模型是用过去引入的可比产品的数据来估计的。我们提出了聚类产品的问题,并同时对这些聚类拟合预测模型。从本质上讲,模型具有大量参数,这可能导致模型过于复杂。因此,我们在模型中加入正则化,使其能够估计稀疏模型。这个问题的计算难度很大,因此,我们开发了一种可扩展的算法,该算法产生的预测模型对预测误差有很好的分析保证。我们与我们的行业合作伙伴强生消费品公司(一家主要的快速消费品制造商)密切合作,在真实数据集上测试了我们的方法,之后我们用一家大型快速时尚零售商的数据检查了我们结果的稳健性。研究表明,与几种广泛使用的预测方法相比,我们的方法在各种产品细分领域的MAPE和WMAPE提高了20-60%。此外,我们为消费品制造商开发了一个快速易用的Excel工具,帮助经理在新产品发布之前进行预测和决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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