4.2 Article

INFERENCES FROM CROSS-SECTIONAL, STOCHASTIC FRONTIER MODELS

Journal

ECONOMETRIC REVIEWS
Volume 29, Issue 1, Pages 62-98

Publisher

TAYLOR & FRANCIS INC
DOI: 10.1080/07474930903324523

Keywords

Bagging; Bootstrap; Efficiency; Inference; Stochastic frontier

Funding

  1. Belgian Government [P5/24, P6/03]
  2. Clemson University Research Foundation

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Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) models are based on percentiles of the estimated distribution of the one-sided error term, conditional on the composite error. When used as prediction intervals, coverage is poor when the signal-to-noise ratio is low, but improves slowly as sample size increases. We show that prediction intervals estimated by bagging yield much better coverages than the conventional approach, even with low signal-to-noise ratios. We also present a bootstrap method that gives confidence interval estimates for (conditional) expectations of efficiency, and which have good coverage properties that improve with sample size. In addition, researchers who estimate PSF models typically reject models, samples, or both when residuals have skewness in the wrong direction, i.e., in a direction that would seem to indicate absence of inefficiency. We show that correctly specified models can generate samples with wrongly skewed residuals, even when the variance of the inefficiency process is nonzero. Both our bagging and bootstrap methods provide useful information about inefficiency and model parameters irrespective of whether residuals have skewness in the desired direction.

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