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Probabilistic versus random-utility models of state dependence: an empirical comparison

机译:状态依赖的概率模型与随机效用模型:实证比较

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Brand choice models estimated on scanner panel data typically show that a household's brand choice process is characterized by state dependence, i.e. a household's brand choices are serially correlated over time. Two approaches have been employed by marketing researchers to estimate state dependence effects using brand choice data. The first approach is based on probability models―such as Markov Chains and Linear Learning Models―that directly allow a household's brand choice probabilities to be temporally correlated. The second approach is based on random utility models―such as the Multinomial Probit with serially correlated error terms―that allow a household's latent utilities for brands to be temporally correlated, and then derive the household's brand choice probabilities as the first-order conditions for the household's utility-maximization problem. The random utility approach has acquired prominence in recent years given the increasing influence of economic models, and hence a utility-based view of consumer decision-making, in marketing. However, the first approach has served a fruitful role for over four decades in terms of accurately tracking and predicting brand choices. In this study, we explicitly compare a probabilistic model versus a random utility model of state dependence both in terms of their ability to explain and predict observed brand choices of households, and in terms of the marketing mix elasticities that they yield. We estimate both models using scanner panel data on households' purchases in four different categories of packaged goods. Using either model, we quantify significant state dependence effects along two dimensions. Interestingly, despite the differences in their mathematical foundations, we find both models to be remarkably similar in terms of predicting observed brand choices and in terms of the their recovery of marketing-mix elasticities.
机译:根据扫描仪面板数据估算的品牌选择模型通常表明,一个家庭的品牌选择过程具有状态依赖性,即,一个家庭的品牌选择随时间而连续相关。市场研究人员已采用两种方法来使用品牌选择数据来估计状态依赖效应。第一种方法基于概率模型(例如马尔可夫链和线性学习模型),这些模型直接允许家庭的品牌选择概率与时间相关。第二种方法是基于随机效用模型(例如具有序列相关误差项的多项式概率),该模型允许一个家庭的品牌潜在效用在时间上相关,然后得出该家庭的品牌选择概率作为该变量的一阶条件。家庭的效用最大化问题。近年来,由于经济模型的影响力日益增强,因此随机效用方法在市场上日益受到重视,因此,基于效用的消费者决策观也越来越多。然而,在准确跟踪和预测品牌选择方面,第一种方法在过去的四十年中一直发挥了卓有成效的作用。在这项研究中,我们明确地比较了概率模型与状态依赖的随机效用模型,既有关于他们解释和预测观察到的家庭品牌选择的能力,也有关于它们产生的营销组合弹性的。我们使用扫描仪面板数据估算住户在四种不同包装商品中的购买量,从而得出两种模型。无论使用哪种模型,我们都可以在两个维度上量化重要的状态依赖效应。有趣的是,尽管它们的数学基础有所不同,但我们发现这两种模型在预测观察到的品牌选择方面以及在市场营销弹性恢复方面都非常相似。

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