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Support vector frontiers: A new approach for estimating production functions through support vector machines

机译:支持向量前沿:通过支持向量机估算生产功能的新方法

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In microeconomics, a topic of interest is the estimation of production functions. By definition, a production function is a non-decreasing function that envelops all the observations (firms) from above in the input-output space, capturing the extreme behavior of the data. These characteristics are far from the usual ones assumed by machine learning techniques like Support Vector Regression (SVR) in Support Vector Machines, where the function to be estimated relates the response variable to the covariables in terms of the mean instead of the extremes and, additionally, they try to fit the data as much as possible, determining a function that increases and decreases following a data-driven process. In this paper, we introduce an adaptation of SVR, denominated Support Vector Frontiers (SVF), with the objective of estimating production functions. To do so and seeking meeting points between SVR and the standard non-parametric techniques for estimating production functions, mainly Free Disposal Hull (FDH) and Data Envelopment Analysis (DEA), an estimator is defined in this paper through a specific input transformation function. However, and in contrast to FDH and DEA, SVF overcomes the overfitting problems from using these techniques. Additionally, we show in this paper that standard FDH and DEA could be reinterpreted, in some sense, as Support Vector Regression techniques. Moreover, a new robust notion of efficiency is introduced, called epsilon-insensitive technical efficiency, directly inherited from Support Vector Machines. Finally, the performance of SVF is measured through several experiments using synthetic data, showing that the new approach considerably reduces the bias and mean squared error associated with the estimation of the true production function in comparison with standard FDH and DEA, although at the expense of a more computational burden. (C) 2021 The Author(s). Published by Elsevier Ltd.
机译:在微观经济学中,兴趣的主题是估计生产职能。根据定义,生产函数是一种非减少功能,它在输入输出空间中从上面封闭所有观察(公司),捕获数据的极端行为。这些特征远离由支持向量机器中的支持向量机器(SVR)等机器学习技术假设的通常,其中待估计的功能将响应变量与协变量相关的,而不是极端,而且另外,他们尝试尽可能地拟合数据,确定数据驱动过程后增加和减少的函数。在本文中,我们介绍了SVR,计值支持向量前沿(SVF)的适应,目的是估算生产功能。为此并寻求SVR和标准非参数化技术之间的满足点,用于估算生产功能,主要是自由处置船体(FDH)和数据包络分析(DEA),通过特定的输入变换函数在本文中定义了估算器。然而,与FDH和DEA相比,SVF克服了使用这些技术的过度拟合问题。此外,我们在本文中展示了标准的FDH和DEA可以在某种意义的情况下重新解释,因为支持向量回归技术。此外,引入了一种新的效率概念,称为epsilon不敏感的技术效率,直接从支持向量机继承。最后,通过使用合成数据的几个实验来测量SVF的性能,表明新方法可以显着降低与标准FDH和DEA相比估计真正生产函数的偏差和平均平方误差,尽管以牺牲为代价更加计算负担。 (c)2021提交人。 elsevier有限公司出版

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