Measurement of returns-to-scale using interval data envelopment analysis models

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Measurement of returns-to-scale using interval data envelopment analysis models. / Hatami-Marbini, Adel; Beigi, Zahra Ghelej; Hougaard, Jens Leth; Gholami, Kobra.

In: Computers & Industrial Engineering, Vol. 117, 2018, p. 94-107.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Hatami-Marbini, A, Beigi, ZG, Hougaard, JL & Gholami, K 2018, 'Measurement of returns-to-scale using interval data envelopment analysis models', Computers & Industrial Engineering, vol. 117, pp. 94-107. https://doi.org/10.1016/j.cie.2017.12.023

APA

Hatami-Marbini, A., Beigi, Z. G., Hougaard, J. L., & Gholami, K. (2018). Measurement of returns-to-scale using interval data envelopment analysis models. Computers & Industrial Engineering, 117, 94-107. https://doi.org/10.1016/j.cie.2017.12.023

Vancouver

Hatami-Marbini A, Beigi ZG, Hougaard JL, Gholami K. Measurement of returns-to-scale using interval data envelopment analysis models. Computers & Industrial Engineering. 2018;117:94-107. https://doi.org/10.1016/j.cie.2017.12.023

Author

Hatami-Marbini, Adel ; Beigi, Zahra Ghelej ; Hougaard, Jens Leth ; Gholami, Kobra. / Measurement of returns-to-scale using interval data envelopment analysis models. In: Computers & Industrial Engineering. 2018 ; Vol. 117. pp. 94-107.

Bibtex

@article{2980c007bfcb4bf7bf2be911c2dc40cd,
title = "Measurement of returns-to-scale using interval data envelopment analysis models",
abstract = "The economic concept of Returns-to-Scale (RTS) has been intensively studied in the context of Data Envelopment Analysis (DEA). The conventional DEA models that are used for RTS classification require well-defined and accurate data whereas in reality observations gathered from production systems may be characterized by intervals. For instance, the heat losses of the combined production of heat and power (CHP) systems may be within a certain range, hinging on a wide variety of factors such as external temperature and real-time energy demand. Enriching the current literature independently tackling the two problems; interval data and RTS estimation; we develop an overarching evaluation process for estimating RTS of Decision Making Units (DMUs) in Imprecise DEA (IDEA) where the input and output data lie within bounded intervals. In the presence of interval data, we introduce six types of RTS involving increasing, decreasing, constant, non-increasing, non-decreasing and variable RTS. The situation for non-increasing (non-decreasing) RTS is then divided into two partitions; constant or decreasing (constant or increasing) RTS using sensitivity analysis. Additionally, the situation for variable RTS is split into three partitions consisting of constant, decreasing and increasing RTS using sensitivity analysis. Besides, we present the stability region of an observation while preserving its current RTS classification using the optimal values of a set of proposed DEA-based models. The applicability and efficacy of the developed approach is finally studied through two numerical examples and a case study.",
keywords = "Data envelopment analysis, Interval data, Returns-to-scale",
author = "Adel Hatami-Marbini and Beigi, {Zahra Ghelej} and Hougaard, {Jens Leth} and Kobra Gholami",
year = "2018",
doi = "10.1016/j.cie.2017.12.023",
language = "English",
volume = "117",
pages = "94--107",
journal = "Computers & Industrial Engineering",
issn = "0360-8352",
publisher = "Pergamon Press",

}

RIS

TY - JOUR

T1 - Measurement of returns-to-scale using interval data envelopment analysis models

AU - Hatami-Marbini, Adel

AU - Beigi, Zahra Ghelej

AU - Hougaard, Jens Leth

AU - Gholami, Kobra

PY - 2018

Y1 - 2018

N2 - The economic concept of Returns-to-Scale (RTS) has been intensively studied in the context of Data Envelopment Analysis (DEA). The conventional DEA models that are used for RTS classification require well-defined and accurate data whereas in reality observations gathered from production systems may be characterized by intervals. For instance, the heat losses of the combined production of heat and power (CHP) systems may be within a certain range, hinging on a wide variety of factors such as external temperature and real-time energy demand. Enriching the current literature independently tackling the two problems; interval data and RTS estimation; we develop an overarching evaluation process for estimating RTS of Decision Making Units (DMUs) in Imprecise DEA (IDEA) where the input and output data lie within bounded intervals. In the presence of interval data, we introduce six types of RTS involving increasing, decreasing, constant, non-increasing, non-decreasing and variable RTS. The situation for non-increasing (non-decreasing) RTS is then divided into two partitions; constant or decreasing (constant or increasing) RTS using sensitivity analysis. Additionally, the situation for variable RTS is split into three partitions consisting of constant, decreasing and increasing RTS using sensitivity analysis. Besides, we present the stability region of an observation while preserving its current RTS classification using the optimal values of a set of proposed DEA-based models. The applicability and efficacy of the developed approach is finally studied through two numerical examples and a case study.

AB - The economic concept of Returns-to-Scale (RTS) has been intensively studied in the context of Data Envelopment Analysis (DEA). The conventional DEA models that are used for RTS classification require well-defined and accurate data whereas in reality observations gathered from production systems may be characterized by intervals. For instance, the heat losses of the combined production of heat and power (CHP) systems may be within a certain range, hinging on a wide variety of factors such as external temperature and real-time energy demand. Enriching the current literature independently tackling the two problems; interval data and RTS estimation; we develop an overarching evaluation process for estimating RTS of Decision Making Units (DMUs) in Imprecise DEA (IDEA) where the input and output data lie within bounded intervals. In the presence of interval data, we introduce six types of RTS involving increasing, decreasing, constant, non-increasing, non-decreasing and variable RTS. The situation for non-increasing (non-decreasing) RTS is then divided into two partitions; constant or decreasing (constant or increasing) RTS using sensitivity analysis. Additionally, the situation for variable RTS is split into three partitions consisting of constant, decreasing and increasing RTS using sensitivity analysis. Besides, we present the stability region of an observation while preserving its current RTS classification using the optimal values of a set of proposed DEA-based models. The applicability and efficacy of the developed approach is finally studied through two numerical examples and a case study.

KW - Data envelopment analysis

KW - Interval data

KW - Returns-to-scale

U2 - 10.1016/j.cie.2017.12.023

DO - 10.1016/j.cie.2017.12.023

M3 - Journal article

VL - 117

SP - 94

EP - 107

JO - Computers & Industrial Engineering

JF - Computers & Industrial Engineering

SN - 0360-8352

ER -

ID: 188873226