On the accuracy of bootstrap confidence intervals for efficiency levels in stochastic frontier models with panel data

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作者
Myungsup Kim
Yangseon Kim
Peter Schmidt
机构
[1] University of North Texas,Department of Economics
[2] Research and Economic Analysis Division,Department of Economics
[3] DBEDT State of Hawaii,undefined
[4] Michigan State University,undefined
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Stochastic frontier; Bootstrap; Efficiency; C15; C23; D24;
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摘要
We study the construction of confidence intervals for efficiency levels of individual firms in stochastic frontier models with panel data. The focus is on bootstrapping and related methods. We start with a survey of various versions of the bootstrap. We also propose a simple parametric alternative in which one acts as if the␣identity of the best firm is known. Monte Carlo simulations indicate that the parametric method works better than the␣percentile bootstrap, but not as well as bootstrap methods that make bias corrections. All of these methods are valid␣only for large time-series sample size (T), and correspondingly none of the methods yields very accurate confidence intervals except when T is large enough that the identity of the best firm is clear. We also present empirical results for two well-known data sets.
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页码:165 / 181
页数:16
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