A Monte Carlo study on multiple output stochastic frontiers: a comparison of two approaches

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A Monte Carlo study on multiple output stochastic frontiers : a comparison of two approaches. / Henningsen, Geraldine; Henningsen, Arne; Jensen, Uwe.

I: Journal of Productivity Analysis, Bind 44, Nr. 3, 2015, s. 309-320.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Henningsen, G, Henningsen, A & Jensen, U 2015, 'A Monte Carlo study on multiple output stochastic frontiers: a comparison of two approaches', Journal of Productivity Analysis, bind 44, nr. 3, s. 309-320. https://doi.org/10.1007/s11123-014-0416-9

APA

Henningsen, G., Henningsen, A., & Jensen, U. (2015). A Monte Carlo study on multiple output stochastic frontiers: a comparison of two approaches. Journal of Productivity Analysis, 44(3), 309-320. https://doi.org/10.1007/s11123-014-0416-9

Vancouver

Henningsen G, Henningsen A, Jensen U. A Monte Carlo study on multiple output stochastic frontiers: a comparison of two approaches. Journal of Productivity Analysis. 2015;44(3):309-320. https://doi.org/10.1007/s11123-014-0416-9

Author

Henningsen, Geraldine ; Henningsen, Arne ; Jensen, Uwe. / A Monte Carlo study on multiple output stochastic frontiers : a comparison of two approaches. I: Journal of Productivity Analysis. 2015 ; Bind 44, Nr. 3. s. 309-320.

Bibtex

@article{4b6bdfd727eb4fc6ae9745eaf6737182,
title = "A Monte Carlo study on multiple output stochastic frontiers: a comparison of two approaches",
abstract = "In the estimation of multiple output technologies in a primal approach, the main question is how to handle the multiple outputs. Often, an output distance function is used, where the classical approach is to exploit its homogeneity property by selecting one output quantity as the dependent variable, dividing all other output quantities by the selected output quantity, and using these ratios as regressors (OD). Another approach is the stochastic ray production frontier (SR), which transforms the output quantities into their Euclidean distance as the dependent variable and their polar coordinates as directional components as regressors. A number of studies have compared these specifications using real world data and have found significant differences in the inefficiency estimates. However, in order to get to the bottom of these differences, we apply a Monte-Carlo simulation. We test the robustness of both specifications for the case of a Translog output distance function with respect to different common statistical problems as well as problems arising as a consequence of zero values in the output quantities. Although our results show clear reactions to some statistical misspecifications, on average none of the approaches is clearly superior. However, considerable differences are found between the estimates at single replications. Taking average efficiencies from both approaches gives clearly better efficiency estimates than taking just the OD or the SR. In the case of zero values in the output quantities, the SR clearly outperforms the OD with observations with zero output quantities omitted and the OD with zero values replaced by a small positive number.",
author = "Geraldine Henningsen and Arne Henningsen and Uwe Jensen",
year = "2015",
doi = "10.1007/s11123-014-0416-9",
language = "English",
volume = "44",
pages = "309--320",
journal = "Journal of Productivity Analysis",
issn = "0895-562X",
publisher = "Springer",
number = "3",

}

RIS

TY - JOUR

T1 - A Monte Carlo study on multiple output stochastic frontiers

T2 - a comparison of two approaches

AU - Henningsen, Geraldine

AU - Henningsen, Arne

AU - Jensen, Uwe

PY - 2015

Y1 - 2015

N2 - In the estimation of multiple output technologies in a primal approach, the main question is how to handle the multiple outputs. Often, an output distance function is used, where the classical approach is to exploit its homogeneity property by selecting one output quantity as the dependent variable, dividing all other output quantities by the selected output quantity, and using these ratios as regressors (OD). Another approach is the stochastic ray production frontier (SR), which transforms the output quantities into their Euclidean distance as the dependent variable and their polar coordinates as directional components as regressors. A number of studies have compared these specifications using real world data and have found significant differences in the inefficiency estimates. However, in order to get to the bottom of these differences, we apply a Monte-Carlo simulation. We test the robustness of both specifications for the case of a Translog output distance function with respect to different common statistical problems as well as problems arising as a consequence of zero values in the output quantities. Although our results show clear reactions to some statistical misspecifications, on average none of the approaches is clearly superior. However, considerable differences are found between the estimates at single replications. Taking average efficiencies from both approaches gives clearly better efficiency estimates than taking just the OD or the SR. In the case of zero values in the output quantities, the SR clearly outperforms the OD with observations with zero output quantities omitted and the OD with zero values replaced by a small positive number.

AB - In the estimation of multiple output technologies in a primal approach, the main question is how to handle the multiple outputs. Often, an output distance function is used, where the classical approach is to exploit its homogeneity property by selecting one output quantity as the dependent variable, dividing all other output quantities by the selected output quantity, and using these ratios as regressors (OD). Another approach is the stochastic ray production frontier (SR), which transforms the output quantities into their Euclidean distance as the dependent variable and their polar coordinates as directional components as regressors. A number of studies have compared these specifications using real world data and have found significant differences in the inefficiency estimates. However, in order to get to the bottom of these differences, we apply a Monte-Carlo simulation. We test the robustness of both specifications for the case of a Translog output distance function with respect to different common statistical problems as well as problems arising as a consequence of zero values in the output quantities. Although our results show clear reactions to some statistical misspecifications, on average none of the approaches is clearly superior. However, considerable differences are found between the estimates at single replications. Taking average efficiencies from both approaches gives clearly better efficiency estimates than taking just the OD or the SR. In the case of zero values in the output quantities, the SR clearly outperforms the OD with observations with zero output quantities omitted and the OD with zero values replaced by a small positive number.

U2 - 10.1007/s11123-014-0416-9

DO - 10.1007/s11123-014-0416-9

M3 - Journal article

VL - 44

SP - 309

EP - 320

JO - Journal of Productivity Analysis

JF - Journal of Productivity Analysis

SN - 0895-562X

IS - 3

ER -

ID: 146334121