Using non-parametric methods in econometric production analysis

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Using non-parametric methods in econometric production analysis. / Czekaj, Tomasz Gerard; Henningsen, Arne.

Symposium i anvendt statistik : 23.-25. januar 2012. red. / Peter Linde. Copenhagen Business School & Danmarks Statistik, 2012. s. 61-71.

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskning

Harvard

Czekaj, TG & Henningsen, A 2012, Using non-parametric methods in econometric production analysis. i P Linde (red.), Symposium i anvendt statistik : 23.-25. januar 2012. Copenhagen Business School & Danmarks Statistik, s. 61-71, Symposium i Anvendt Statistik 2012, Copenhagen, Danmark, 23/01/2012. <https://www.dst.dk/da/statistik/publikationer/vispub.aspx?cid=09948>

APA

Czekaj, T. G., & Henningsen, A. (2012). Using non-parametric methods in econometric production analysis. I P. Linde (red.), Symposium i anvendt statistik : 23.-25. januar 2012 (s. 61-71). Copenhagen Business School & Danmarks Statistik. https://www.dst.dk/da/statistik/publikationer/vispub.aspx?cid=09948

Vancouver

Czekaj TG, Henningsen A. Using non-parametric methods in econometric production analysis. I Linde P, red., Symposium i anvendt statistik : 23.-25. januar 2012. Copenhagen Business School & Danmarks Statistik. 2012. s. 61-71

Author

Czekaj, Tomasz Gerard ; Henningsen, Arne. / Using non-parametric methods in econometric production analysis. Symposium i anvendt statistik : 23.-25. januar 2012. red. / Peter Linde. Copenhagen Business School & Danmarks Statistik, 2012. s. 61-71

Bibtex

@inproceedings{11819a642f884994b48a77f32a1e107f,
title = "Using non-parametric methods in econometric production analysis",
abstract = "Econometric estimation of production functions is one of the most common methods in applied economic production analysis. These studies usually apply parametric estimation techniques, which obligate the researcher to specify a functional form of the production function of which the Cobb-Douglas and the Translog functional forms are most widely used. However, the specification of a functional form for the production function involves the risk of specifying a functional form that is not similar to the ``true'' relationship between the inputs and the output. This misspecification can result in biased parameter estimates, but also in biased measures which are derived from the parameters, such as elasticities. Therefore, we propose to use non-parametric econometric methods. First, these can be applied to verify the functional form used in parametric production analysis. Second, they can be directly used to estimate production functions without the specification of a functional form. Therefore, they avoid possible misspecification errors due to the use of an unsuitable functional form.In this paper, we use parametric and non-parametric methods to identify the optimal size of Polish crop farms by investigating the relationship between the elasticity of scale and the farm size. We use a balanced panel data set of 371~specialised crop farms for the years 2004-2007. A non-parametric specification test shows that neither the Cobb-Douglas function nor the Translog function are consistent with the {"}true{"} relationship between the inputs and the output in our data set. We solve this problem by using non-parametric regression. This approach delivers reasonable results, which are on average not too dissimilar from the results of the parametric estimations. However, many individual results are considerably different so that general conclusions based on the non-parametric estimation deviate from the conclusions based on the Translog model.",
author = "Czekaj, {Tomasz Gerard} and Arne Henningsen",
year = "2012",
language = "English",
isbn = "978-87-501-1975-3",
pages = "61--71",
editor = "Peter Linde",
booktitle = "Symposium i anvendt statistik",
publisher = "Copenhagen Business School & Danmarks Statistik",
note = "Symposium i Anvendt Statistik 2012 ; Conference date: 23-01-2012 Through 25-01-2012",

}

RIS

TY - GEN

T1 - Using non-parametric methods in econometric production analysis

AU - Czekaj, Tomasz Gerard

AU - Henningsen, Arne

PY - 2012

Y1 - 2012

N2 - Econometric estimation of production functions is one of the most common methods in applied economic production analysis. These studies usually apply parametric estimation techniques, which obligate the researcher to specify a functional form of the production function of which the Cobb-Douglas and the Translog functional forms are most widely used. However, the specification of a functional form for the production function involves the risk of specifying a functional form that is not similar to the ``true'' relationship between the inputs and the output. This misspecification can result in biased parameter estimates, but also in biased measures which are derived from the parameters, such as elasticities. Therefore, we propose to use non-parametric econometric methods. First, these can be applied to verify the functional form used in parametric production analysis. Second, they can be directly used to estimate production functions without the specification of a functional form. Therefore, they avoid possible misspecification errors due to the use of an unsuitable functional form.In this paper, we use parametric and non-parametric methods to identify the optimal size of Polish crop farms by investigating the relationship between the elasticity of scale and the farm size. We use a balanced panel data set of 371~specialised crop farms for the years 2004-2007. A non-parametric specification test shows that neither the Cobb-Douglas function nor the Translog function are consistent with the "true" relationship between the inputs and the output in our data set. We solve this problem by using non-parametric regression. This approach delivers reasonable results, which are on average not too dissimilar from the results of the parametric estimations. However, many individual results are considerably different so that general conclusions based on the non-parametric estimation deviate from the conclusions based on the Translog model.

AB - Econometric estimation of production functions is one of the most common methods in applied economic production analysis. These studies usually apply parametric estimation techniques, which obligate the researcher to specify a functional form of the production function of which the Cobb-Douglas and the Translog functional forms are most widely used. However, the specification of a functional form for the production function involves the risk of specifying a functional form that is not similar to the ``true'' relationship between the inputs and the output. This misspecification can result in biased parameter estimates, but also in biased measures which are derived from the parameters, such as elasticities. Therefore, we propose to use non-parametric econometric methods. First, these can be applied to verify the functional form used in parametric production analysis. Second, they can be directly used to estimate production functions without the specification of a functional form. Therefore, they avoid possible misspecification errors due to the use of an unsuitable functional form.In this paper, we use parametric and non-parametric methods to identify the optimal size of Polish crop farms by investigating the relationship between the elasticity of scale and the farm size. We use a balanced panel data set of 371~specialised crop farms for the years 2004-2007. A non-parametric specification test shows that neither the Cobb-Douglas function nor the Translog function are consistent with the "true" relationship between the inputs and the output in our data set. We solve this problem by using non-parametric regression. This approach delivers reasonable results, which are on average not too dissimilar from the results of the parametric estimations. However, many individual results are considerably different so that general conclusions based on the non-parametric estimation deviate from the conclusions based on the Translog model.

M3 - Article in proceedings

SN - 978-87-501-1975-3

SP - 61

EP - 71

BT - Symposium i anvendt statistik

A2 - Linde, Peter

PB - Copenhagen Business School & Danmarks Statistik

T2 - Symposium i Anvendt Statistik 2012

Y2 - 23 January 2012 through 25 January 2012

ER -

ID: 37389705