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Heterogeneous Learning and the Targeting of Marketing Communication for New Products

机译:异构学习与新产品营销传播目标

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New product launches are often accompanied by extensive marketing communication campaigns. Firms' allocation decisions for these marketing communication expenditures have two dimensions-across consumers and over time. This allocation problem is different relative to the problem of allocation of resources for existing products. In the case of new products, consumers are uncertain about their quality and learn about the products through marketing communication. Furthermore, different consumers may have different rates of learning about product quality; i.e., there may be heterogeneous learning. Thus, consumer responsiveness to marketing communication could vary along two dimensions. For each consumer, this responsiveness would vary over time, as she learns about product quality. Across consumers, there would be differences in responsiveness in each time period. For optimal allocation of marketing communication across both consumers and time, firms would need estimates of how consumer responsiveness varies across consumers and over time. Past studies have typically focused on one of these two dimensions in which responsiveness varies. They have either looked at heterogeneity in responsiveness across agents or the variation in responsiveness over time. In the context of new products, past research has looked at how consumer learning about product quality causes responsiveness to vary over time. In this study, we build a model that allows for heterogeneous learning rates and obtain individual-level learning parameters for each consumer. We use a novel and rich panel data set that allows us to estimate these model parameters.rnTo obtain individual-level estimates of learning, we add a hierarchical Bayesian structure to the Bayesian learning model. We exploit the natural hierarchy in the Bayesian learning process to incorporate it in the hierarchical Bayesian model. We use data augmentation, coupled with the Metropolis-Hastings algorithm, to make inferences about individual-level parameters of learning. We conduct this analysis on a unique panel data set of physicians where we observe prescription decisions and detailing (i.e., sales-force effort) at the individual physician level for a new prescription drug category.rnOur results show that there is significant heterogeneity across physicians in their rates of learning about the quality of new drugs. We also find that there are asymmetries in the temporal evolution of responsiveness of physicians to detailing-physicians who are more responsive to detailing in early periods are less responsive later on and vice versa. These findings have interesting implications for the targeting of detailing across physicians and over time. We find that firms could increase their revenue if they took these temporal and cross-sectional differences in responsiveness into account while deciding on allocations of detailing.
机译:新产品发布通常伴随着广泛的营销传播活动。企业针对这些营销传播支出的分配决策具有两个维度:跨消费者,随着时间的推移。与现有产品的资源分配问题相比,此分配问题有所不同。对于新产品,消费者不确定其质量,并通过营销交流了解产品。此外,不同的消费者对产品质量的了解程度可能不同。即可能存在异类学习。因此,消费者对营销传播的响应可能会在两个维度上变化。对于每个消费者,随着她了解产品质量,这种响应能力会随着时间而变化。在整个消费者中,每个时间段的响应能力都会有所不同。为了在消费者和时间之间最佳地分配营销传播,公司需要估计消费者响应能力在不同消费者之间以及随时间变化的方式。过去的研究通常集中在响应性变化的这两个维度之一上。他们已经研究了跨代理的响应异质性或响应性随时间的变化。在新产品的背景下,过去的研究已经关注了消费者对产品质量的了解如何导致响应能力随时间变化。在这项研究中,我们建立了一个模型,该模型允许异类学习率并获得每个消费者的个人级别的学习参数。我们使用新颖且丰富的面板数据集,使我们能够估计这些模型参数。为了获得学习的个人级别估计,我们在贝叶斯学习模型中添加了分层贝叶斯结构。我们在贝叶斯学习过程中利用自然层次结构将其纳入层次贝叶斯模型中。我们将数据增强与Metropolis-Hastings算法结合使用,对学习的个人层面参数进行推断。我们在一组独特的医师数据集上进行此分析,在该数据集中,我们观察到针对新处方药类别的各个医师级别的处方决策和详细说明(即,销售人员的努力)。rn我们的结果表明,在不同医师之间存在明显的异质性他们对新药质量的了解率。我们还发现,医生对细部医师的反应性在时间上的演变存在不对称性,这些医师对早期细部反应较敏感,而后期对细部反应较慢,反之亦然。这些发现对于跨医生并随着时间的推移针对细节定位具有有趣的意义。我们发现,如果公司在决定细节分配时考虑到响应性的这些时间和横截面差异,则可以增加收入。

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