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首页> 外文期刊>Journal of Econometrics >A panel quantile approach to attrition bias in Big Data: Evidence from a randomized experiment
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A panel quantile approach to attrition bias in Big Data: Evidence from a randomized experiment

机译:大数据中的磨损偏差面板定位方法:来自随机实验的证据

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This paper introduces a quantile regression estimator for panel data models with individual heterogeneity and attrition. The method is motivated by the fact that attrition bias is often encountered in Big Data applications. For example, many users sign-up for the latest program but few remain active users several months later, making the evaluation of such interventions inherently very challenging. Building on earlier work by Hausman and Wise (1979), we provide a simple identification strategy that leads to a two-step estimation procedure. In the first step, the coefficients of interest in the selection equation are consistently estimated using parametric or nonparametric methods. In the second step, standard panel quantile methods are employed on a subset of weighted observations. The estimator is computationally easy to implement in Big Data applications with a large number of subjects. We investigate the conditions under which the parameter estimator is asymptotically Gaussian and we carry out a series of Monte Carlo simulations to investigate the finite sample properties of the estimator. Lastly, using a simulation exercise, we apply the method to the evaluation of a recent Time-of-Day electricity pricing experiment inspired by the work of Aigner and Hausman (1980). (C) 2018 Elsevier B.V. All rights reserved.
机译:本文介绍了具有单个异质性和磨损的面板数据模型的量级回归估计。该方法的激励是在大数据应用中经常遇到的磨损偏差。例如,许多用户在最新的程序注册,但几个月后,很少有活跃的用户,并对此类干预措施进行评估本质上非常具有挑战性。在Hausman和Wise(1979)之前建立早期的工作,我们提供了一个简单的识别策略,导致两步估计程序。在第一步中,使用参数或非参数方法一致地估计选择方程中感兴趣的系数。在第二步中,在加权观测的子集上使用标准面板定量方法。估算器在具有大量对象的大数据应用中实现易于实现。我们调查参数估计器是渐近高斯的条件,我们执行了一系列蒙特卡罗模拟,以研究估计器的有限样本特性。最后,使用模拟练习,我们将该方法应用于评估最近的一时间电力定价实验,这是由Aigner和Hausman(1980)的工作的启发。 (c)2018 Elsevier B.v.保留所有权利。

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