Benchmarking with uncertain data: a simulation study comparing alternative methods

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Standard

Benchmarking with uncertain data : a simulation study comparing alternative methods . / Hougaard, Jens Leth; Kerstens, Pieter Jan T; Nielsen, Kurt.

Department of Food and Resource Economics, University of Copenhagen, 2019.

Research output: Working paperResearch

Harvard

Hougaard, JL, Kerstens, PJT & Nielsen, K 2019 'Benchmarking with uncertain data: a simulation study comparing alternative methods ' Department of Food and Resource Economics, University of Copenhagen. <https://econpapers.repec.org/RePEc:foi:wpaper:2019_05>

APA

Hougaard, J. L., Kerstens, P. J. T., & Nielsen, K. (2019). Benchmarking with uncertain data: a simulation study comparing alternative methods . Department of Food and Resource Economics, University of Copenhagen. IFRO Working Paper No. 2019/05 https://econpapers.repec.org/RePEc:foi:wpaper:2019_05

Vancouver

Hougaard JL, Kerstens PJT, Nielsen K. Benchmarking with uncertain data: a simulation study comparing alternative methods . Department of Food and Resource Economics, University of Copenhagen. 2019.

Author

Hougaard, Jens Leth ; Kerstens, Pieter Jan T ; Nielsen, Kurt. / Benchmarking with uncertain data : a simulation study comparing alternative methods . Department of Food and Resource Economics, University of Copenhagen, 2019. (IFRO Working Paper; No. 2019/05).

Bibtex

@techreport{2e07756757de4a4c97ca4223ba75942a,
title = "Benchmarking with uncertain data: a simulation study comparing alternative methods ",
abstract = "We consider efficiency measurement methods in the presence of uncertain input and output data, and without the (empirically problematic) assumption of convexity of the production technology. In particular, we perform a simulation study in order to contrast two well-established methods, IDEA and Fuzzy DEA, with a recently suggested extension of Fuzzy DEA in the literature (dubbed the HB method). We demonstrate that the HB method has important advantages over the conventional methods, resulting in more accurate efficiency estimates and narrower bounds for the efficiency scores of individual Decision Making Units (DMUs): thereby providing more informative results that may lead to more effective decisions. The price is computational complexity. Although we show how to significantly speed up computational time compared to the original suggestion, the HB method remains the most computationally heavy method among those considered. This may limit the use of the method in cases where efficiency estimates have to be computed on the fly, as in interactive decision support systems based on large data sets.",
author = "Hougaard, {Jens Leth} and Kerstens, {Pieter Jan T} and Kurt Nielsen",
year = "2019",
language = "English",
series = "IFRO Working Paper",
publisher = "Department of Food and Resource Economics, University of Copenhagen",
number = "2019/05",
type = "WorkingPaper",
institution = "Department of Food and Resource Economics, University of Copenhagen",

}

RIS

TY - UNPB

T1 - Benchmarking with uncertain data

T2 - a simulation study comparing alternative methods

AU - Hougaard, Jens Leth

AU - Kerstens, Pieter Jan T

AU - Nielsen, Kurt

PY - 2019

Y1 - 2019

N2 - We consider efficiency measurement methods in the presence of uncertain input and output data, and without the (empirically problematic) assumption of convexity of the production technology. In particular, we perform a simulation study in order to contrast two well-established methods, IDEA and Fuzzy DEA, with a recently suggested extension of Fuzzy DEA in the literature (dubbed the HB method). We demonstrate that the HB method has important advantages over the conventional methods, resulting in more accurate efficiency estimates and narrower bounds for the efficiency scores of individual Decision Making Units (DMUs): thereby providing more informative results that may lead to more effective decisions. The price is computational complexity. Although we show how to significantly speed up computational time compared to the original suggestion, the HB method remains the most computationally heavy method among those considered. This may limit the use of the method in cases where efficiency estimates have to be computed on the fly, as in interactive decision support systems based on large data sets.

AB - We consider efficiency measurement methods in the presence of uncertain input and output data, and without the (empirically problematic) assumption of convexity of the production technology. In particular, we perform a simulation study in order to contrast two well-established methods, IDEA and Fuzzy DEA, with a recently suggested extension of Fuzzy DEA in the literature (dubbed the HB method). We demonstrate that the HB method has important advantages over the conventional methods, resulting in more accurate efficiency estimates and narrower bounds for the efficiency scores of individual Decision Making Units (DMUs): thereby providing more informative results that may lead to more effective decisions. The price is computational complexity. Although we show how to significantly speed up computational time compared to the original suggestion, the HB method remains the most computationally heavy method among those considered. This may limit the use of the method in cases where efficiency estimates have to be computed on the fly, as in interactive decision support systems based on large data sets.

M3 - Working paper

T3 - IFRO Working Paper

BT - Benchmarking with uncertain data

PB - Department of Food and Resource Economics, University of Copenhagen

ER -

ID: 227132902