LASSO for Stochastic Frontier Models with Many Efficient Firms

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
W. Horrace, Hyunseok Jung, Yoonseok Lee
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引用次数: 3

Abstract

Abstract We apply the adaptive LASSO to select a set of maximally efficient firms in the panel fixed-effect stochastic frontier model. The adaptively weighted L 1 penalty with sign restrictions allows simultaneous selection of a group of maximally efficient firms and estimation of firm-level inefficiency parameters with a faster rate of convergence than least squares dummy variable estimators. Our estimator possesses the oracle property. We propose a tuning parameter selection criterion and an efficient optimization algorithm based on coordinate descent. We apply the method to estimate a group of efficient police officers who are best at detecting contraband in motor vehicle stops (i.e., search efficiency) in Syracuse, NY.
具有多个有效企业的随机前沿模型的LASSO
摘要我们应用自适应LASSO在面板固定效应随机前沿模型中选择一组最大有效企业。具有符号限制的自适应加权L1惩罚允许同时选择一组最大有效的企业,并以比最小二乘伪变量估计器更快的收敛速度估计企业级低效率参数。我们的估计量具有预言性质。提出了一种基于坐标下降的调谐参数选择准则和一种有效的优化算法。我们应用该方法来估计纽约州锡拉丘兹市一组最擅长在机动车停车场发现违禁品的高效警察(即搜索效率)。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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