建立更好的基准:预测购物者营销对销售的影响

P. Corbett, N. Keeley, Gabriella Belmarez, F. W. Blickle, Oliver Schaer
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引用次数: 0

摘要

拥有广泛产品组合和多种零售渠道的公司往往难以量化营销计划的销售影响,因为潜在影响销售的因素很多。建立这样的促销模型所必需的数据量和复杂的建模带来了挑战,特别是对于在许多零售商中执行各种促销活动的公司。这一挑战可能会阻碍有关营销支出的数据驱动决策的努力。我们的研究研究了来自一家全国性包装消费品(CPG)制造商的营销计划数据,以及来自其零售合作伙伴之一的相关产品销售数据。我们建立了两个独立的模型,以衡量品牌层面的营销计划所带来的增量销售。研究结果表明,在一定条件下,组织可以通过适度的数据输入实现有用的促销销售模型。应用这种方法,组织可以深入了解其营销支出的销售影响,特别是如果他们合并合作伙伴数据,限制数据流和功能,并合并计划策略。我们的模型既可以用于描述性分析,也可以用于预测性分析,从而使CPG公司能够根据对未来销售的预测来改进决策。
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Building a Better Benchmark: Predicting Effects of Shopper Marketing on Sales
Companies with wide product portfolios and multiple retail channels often have difficulty quantifying the sales impact of marketing programs due to the large number of factors that potentially influence sales. The amount of data and complex modeling necessary to get such a promotional model off the ground creates a challenge, especially for firms executing a wide variety of promotions across many retailers. This challenge can stunt any efforts to make data-driven decisions regarding marketing spending. Our work explores marketing program data from a national consumer packaged goods (CPG) manufacturer and related product sales data from one of its retail partners. We build two separate models that provide a measure of incremental sales attributable to marketing programs at the brand level. The findings show that under certain conditions, organizations can achieve a useful promotional sales model with modest data inputs. Applying this approach, organizations can gain insights into the sales impact of their marketing spending, especially if they incorporate partner data, limit data streams and features, and incorporate program tactics. Our models can be used for descriptive as well as predictive analysis, thus allowing a CPG company to improve decision making that relies on forecasts of future sales.
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