A Gaussian Process Model of Cross-Category Dynamics in Brand Choice

Ryan Dew, Yuhao Fan
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Abstract

Understanding individual customers’ sensitivities to prices, promotions, brand, and other aspects of the marketing mix is fundamental to a wide swath of marketing problems, including targeting and pricing. Companies that operate across many product categories have a unique opportunity, insofar as they can use purchasing data from one category to augment their insights in another. Such cross-category insights are especially crucial in situations where purchasing data may be rich in one category, and scarce in another. An important aspect of how consumers behave across categories is dynamics: preferences are not stable over time, and changes in individual-level preference parameters in one category may be indicative of changes in other categories, especially if those changes are driven by external factors. Yet, despite the rich history of modeling cross-category preferences, the marketing literature lacks a framework that flexibly accounts for correlated dynamics, or the cross-category interlinkages of individual-level sensitivity dynamics. In this work, we propose such a framework, leveraging individual-level, latent, multi-output Gaussian processes to build a non-parametric Bayesian choice model that allows information sharing of preference parameters across customers, time, and categories. We apply our model to grocery purchase data, and show that our model detects interesting dynamics of customers’ price sensitivities across multiple categories. Managerially, we show that capturing correlated dynamics yields substantial predictive gains, relative to benchmarks. Moreover, we find that capturing correlated dynamics can have implications for understanding changes in consumers preferences over time, and developing targeted marketing strategies based on those dynamics.
品牌选择跨品类动态的高斯过程模型
了解个人客户对价格、促销、品牌和其他营销组合方面的敏感性,是解决包括目标和定价在内的一系列营销问题的基础。经营多个产品类别的公司有一个独特的机会,因为他们可以使用一个类别的购买数据来增强他们对另一个类别的见解。这种跨品类的洞察在一个品类的采购数据丰富而另一个品类的采购数据稀缺的情况下尤为重要。消费者跨类别行为的一个重要方面是动态的:偏好不会随着时间的推移而稳定,一个类别的个人偏好参数的变化可能预示着其他类别的变化,特别是如果这些变化是由外部因素驱动的。然而,尽管有丰富的跨品类偏好建模历史,营销文献缺乏一个框架,灵活地解释相关动态,或跨品类的相互联系的个人层面的敏感性动态。在这项工作中,我们提出了这样一个框架,利用个人层面的、潜在的、多输出的高斯过程来构建一个非参数贝叶斯选择模型,该模型允许跨客户、时间和类别的偏好参数信息共享。我们将我们的模型应用于杂货购买数据,并表明我们的模型检测到客户对多个类别的价格敏感性的有趣动态。在管理上,我们表明,相对于基准,捕获相关动态会产生实质性的预测收益。此外,我们还发现,捕捉相关动态有助于理解消费者偏好随时间的变化,并根据这些动态制定有针对性的营销策略。
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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