Dynamic Selection and Distributional Bounds on Search Costs in Dynamic Unit-Demand Models

Jason R. Blevins, Garrett T. Senney
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引用次数: 5

Abstract

This paper develops a dynamic model of consumer search that, despite placing very little structure on the dynamic problem faced by consumers, allows us to exploit intertemporal variation in within-period price and search cost distributions to estimate the population distribution from which consumers' search costs are initially drawn. We show that static approaches to estimating this distribution generally suffer from a dynamic sample selection bias because forward-looking consumers with unit demand for a good may delay their purchase in a way that depends on their individual search cost. We analyze identification of the population search cost distribution using only price data and develop estimable nonparametric upper and lower bounds on the distribution function and a nonlinear least squares estimator for parametric models. We also consider the additional identifying power of weak assumptions such as monotonicity of purchase probabilities in search costs. We apply our estimators to analyze the online market for two widely used econometrics textbooks. Our results suggest that static estimates of the search cost distribution are biased upwards, in a distributional sense, relative to the true population distribution. In a small-scale simulation study, we show that this is typical in a dynamic setting where consumers with high search costs are more likely to delay purchase than those with lower search costs.
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动态单位需求模型中搜索成本的动态选择和分布边界
本文开发了一个消费者搜索的动态模型,尽管在消费者面临的动态问题上没有多少结构,但它允许我们利用期间内价格和搜索成本分布的跨期变化来估计消费者搜索成本最初得出的人口分布。我们表明,估计这种分布的静态方法通常会受到动态样本选择偏差的影响,因为对商品有单位需求的前瞻性消费者可能会以一种取决于其个人搜索成本的方式延迟购买。我们分析了仅使用价格数据的人口搜索成本分布的识别,并建立了分布函数的可估计非参数上下界和参数模型的非线性最小二乘估计。我们还考虑了弱假设的额外识别能力,例如搜索成本中购买概率的单调性。我们运用我们的估计量来分析两本被广泛使用的计量经济学教科书的在线市场。我们的结果表明,相对于真实的人口分布,静态估计的搜索成本分布在分布意义上是向上偏倚的。在一个小规模的模拟研究中,我们发现这在动态环境中是典型的,在动态环境中,高搜索成本的消费者比低搜索成本的消费者更有可能推迟购买。
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