工厂级生产率和美国人口普查制造业数据中缺失数据的代入

Kirk White, Jerome P. Reiter, Amil Petrin
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引用次数: 31

摘要

测量的工厂级生产率在行业内的差异很大。大量的文献致力于解释这些差异的原因和后果。在美国人口普查局的制造业数据中,该局使用已知会导致低估变异性和多元推断中潜在偏差的方法来估算缺失值。我们提出了一种基于分类和回归树序列的多重输入处理缺失数据的替代策略。我们使用我们的估算和统计局的估算来估计行业内的生产率分散。结果表明,产业内的生产率分散比以往的研究表明的要大。基于改进的估算,我们还估计了生产率与市场结构之间的关系,以及产出价格、资本和工厂退出概率(控制生产率)之间的关系。对于某些估计,我们发现的结果与基于人口普查局估算的结果有很大不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant-Level Productivity and Imputation of Missing Data in U.S. Census Manufacturing Data
Within-industry differences in measured plant-level productivity are large. A large literature has been devoted to explaining the causes and consequences of these differences. In the U.S. Census Bureau's manufacturing data, the Bureau imputes for missing values using methods known to result in underestimation of variability and potential bias in multivariate inferences. We present an alternative strategy for handling the missing data based on multiple imputation via sequences of classification and regression trees. We use our imputations and the Bureau's imputations to estimate within-industry productivity dispersions. The results suggest that there is more within-industry productivity dispersion than previous research has indicated. We also estimate relationships between productivity and market structure and between output prices, capital, and the probability of plant exit (controlling for productivity) based on the improved imputations. For some estimands, we find substantially different results than those based on the Census Bureau's imputations.
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