Estimating production functions through additive models based on regression splines
本文提出一种基于多元自适应回归样条(MARS)的加性模型新方法,用于估计满足单调性和凹性等经典公理的生产函数,能克服DEA的过拟合问题,并通过交叉验证降低均方误差和偏差。
This paper introduces a new methodology for the estimation of production functions satisfying some classical production theory axioms, such as monotonicity and concavity, which is based upon the adaptation of an additive version of the machine learning technique known as Multivariate Adaptive Regression Splines (MARS). The new approach shares the piece-wise linear shape of the estimator associated with Data Envelopment Analysis (DEA). However, the new technique is able to surmount the overfitting problems associated with DEA by resorting to generalized cross-validation. In this paper, a computational experience was employed to measure how well the new approach performs, showing that it can reduce the mean squared error and bias of the estimator of the true production function in comparison with DEA and the more recent Corrected Concave Non-Parametric Least Squares (C2NLS) methodology. We also show that the success of the new approach depends on whether or not interactions among variables prevail and the degree of non-additivity of the true production function to be estimated.