On the Distributional Assumptions in the StoNED model
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Date
2015-09-17Metadata
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Abstract
In a recent paper Johnson and Kuosmanen (2011) propose a new, semi-parametric,
general cost-frontier model, the stochastic nonparametric envelopment of data (StoNED).
The model is semi-parametric in the sense that the cost function is estimated nonparametrically,
while the functional form of the distribution for the error term is
parametrically specified. A common assumption for this distribution is that it is a
convolution of a truncated normal distribution, representing inefficiency, and a normal
distribution, representing noise. This parametric form has the drawback that a negative
skewness implies a negative expected inefficiency. It can thus never capture a negatively
skewed distribution with a positive expectation. In this paper we investigate this
assumption and its consequences for an analysis of inefficiency. Furthermore, we
propose a solution to the problem and investigate its performance by means of a Monte
Carlo simulation.