Estimation of Residual Equity in Hierarchical Branding Structures: A Nonparametric Approach on Aggregate Beer Category Data

Sudhir Voleti, Paul Nelson, Pulak Ghosh
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Abstract

Product offerings in many consumer packaged goods (CPG) categories come in a variety of complex branding structures built around some discernable branding hierarchy. We develop a nonparametric statistical method in the context of a market response model to estimate the residual equity of each hierarchical level in a typical CPG branding structure, consistent with certain economic restrictions on the equity values. Our proposed model uses readily accessible aggregate sales and product data and exploits structure inherent in the set of brand and product relations to estimate its effects on market response. We propose that established brands in mature categories must be value-enhancing and that this translates into bounds on the domain of possible brand equity values. Our model, based on a set of independent Dirichlet process priors, avoids the drawbacks inherent in alternative approaches such as fixed effects, parametric random effects and finite mixtures of continuous densities. We examine the value contribution at different levels of the branding structure and derive insights therein. We demonstrate a brand valuation procedure using a dollar metric transformation of the residual equity estimates obtained. Finally, we validate our brand valuation results with those from independent, external sources. We test our model using AC Nielsen data on aggregate beer sales in US grocery stores. We find substantial heterogeneity in residual equity at different hierarchical levels in the branding structure, substantial differences between residual equity and more aggregate notions of brand equity and external validation of our residual equity estimates in terms of agreement with intuition, theory and previous financial data based brand equity valuations.
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层次品牌结构中剩余权益的估计:啤酒品类汇总数据的非参数方法
许多包装消费品(CPG)类别的产品都有各种复杂的品牌结构,这些结构围绕着一些可辨别的品牌层次结构建立起来。在市场反应模型的背景下,我们开发了一种非参数统计方法来估计典型CPG品牌结构中每个层次的剩余权益,并符合对权益值的某些经济限制。我们提出的模型使用易于获取的总销售额和产品数据,并利用品牌和产品关系集合中固有的结构来估计其对市场反应的影响。我们建议,成熟品类中的成熟品牌必须是增值的,这转化为可能的品牌资产价值领域的界限。我们的模型基于一组独立的狄利克雷过程先验,避免了固定效应、参数随机效应和连续密度的有限混合等替代方法固有的缺点。我们考察了品牌结构不同层次的价值贡献,并从中得出见解。我们展示了一个品牌价值评估程序,使用获得的剩余权益估计的美元度量转换。最后,我们用独立的外部资源来验证我们的品牌估值结果。我们使用AC尼尔森的美国杂货店啤酒总销量数据来测试我们的模型。我们发现,在品牌结构的不同层次上,剩余权益存在实质性的异质性,剩余权益与品牌权益更集中的概念之间存在实质性差异,我们的剩余权益估计的外部验证与直觉、理论和先前基于品牌权益估值的财务数据一致。
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