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Incorporating causal modeling into data envelopment analysis for performance evaluation

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Incorporating causal modeling into data envelopment analysis for performance evaluation. / Fukuyama, Hirofumi; Tsionas, Mike; Tan, Yong.
In: Annals of Operations Research, Vol. 342, No. 3, 01.11.2024, p. 1865-1904.

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Fukuyama, H, Tsionas, M & Tan, Y 2024, 'Incorporating causal modeling into data envelopment analysis for performance evaluation', Annals of Operations Research, vol. 342, no. 3, pp. 1865-1904. https://doi.org/10.1007/s10479-023-05486-0

APA

Vancouver

Fukuyama H, Tsionas M, Tan Y. Incorporating causal modeling into data envelopment analysis for performance evaluation. Annals of Operations Research. 2024 Nov 1;342(3):1865-1904. Epub 2023 Aug 24. doi: 10.1007/s10479-023-05486-0

Author

Fukuyama, Hirofumi ; Tsionas, Mike ; Tan, Yong. / Incorporating causal modeling into data envelopment analysis for performance evaluation. In: Annals of Operations Research. 2024 ; Vol. 342, No. 3. pp. 1865-1904.

Bibtex

@article{cd5d7d3dbebc409c84572f80a0444777,
title = "Incorporating causal modeling into data envelopment analysis for performance evaluation",
abstract = "The risk factors in banking have been considered an undesirable carryover variable by the literature. Methodologically, we consider the risk factor using loan loss reserves as a desirable carryover input with dynamic characteristics, which provides a new framework in the dynamic network Data Envelopment Analysis (DEA) modelling. We substantiate our formulation and results using novel techniques for causal modelling to ensure that our dynamic network model admits a causal interpretation. Finally, we empirically examine the impact of risk from various economic sectors on efficiency. Our results show that the inefficiencies were volatile in Chinese banking over the period 2013–2020, and we further find that the state-owned banks experienced the highest levels of inefficiency and volatility. The findings report that credit risk derived from the agricultural sector and the Water Conservancy, Environment and Public Facilities management sector decreases bank efficiency, while credit risk derived from the wholesale and retail sector improves bank efficiency. The results of our innovative causal modelling show that our pioneering modelling on the role of loan loss reserves is valid. In addition, from an empirical perspective, our second-stage analysis regarding the impact of risk derived from different economic sectors on bank efficiency can be applied to other banking systems worldwide because of our successful validation from causal modelling. Our attempt to incorporate causal inference into DEA can be generalized to future studies of using DEA for performance evaluation.",
keywords = "Chinese banks, Data envelopment analysis, Causal modelling, Dynamic inefficiency, Two-stage network",
author = "Hirofumi Fukuyama and Mike Tsionas and Yong Tan",
year = "2024",
month = nov,
day = "1",
doi = "10.1007/s10479-023-05486-0",
language = "English",
volume = "342",
pages = "1865--1904",
journal = "Annals of Operations Research",
issn = "0254-5330",
publisher = "Springer",
number = "3",

}

RIS

TY - JOUR

T1 - Incorporating causal modeling into data envelopment analysis for performance evaluation

AU - Fukuyama, Hirofumi

AU - Tsionas, Mike

AU - Tan, Yong

PY - 2024/11/1

Y1 - 2024/11/1

N2 - The risk factors in banking have been considered an undesirable carryover variable by the literature. Methodologically, we consider the risk factor using loan loss reserves as a desirable carryover input with dynamic characteristics, which provides a new framework in the dynamic network Data Envelopment Analysis (DEA) modelling. We substantiate our formulation and results using novel techniques for causal modelling to ensure that our dynamic network model admits a causal interpretation. Finally, we empirically examine the impact of risk from various economic sectors on efficiency. Our results show that the inefficiencies were volatile in Chinese banking over the period 2013–2020, and we further find that the state-owned banks experienced the highest levels of inefficiency and volatility. The findings report that credit risk derived from the agricultural sector and the Water Conservancy, Environment and Public Facilities management sector decreases bank efficiency, while credit risk derived from the wholesale and retail sector improves bank efficiency. The results of our innovative causal modelling show that our pioneering modelling on the role of loan loss reserves is valid. In addition, from an empirical perspective, our second-stage analysis regarding the impact of risk derived from different economic sectors on bank efficiency can be applied to other banking systems worldwide because of our successful validation from causal modelling. Our attempt to incorporate causal inference into DEA can be generalized to future studies of using DEA for performance evaluation.

AB - The risk factors in banking have been considered an undesirable carryover variable by the literature. Methodologically, we consider the risk factor using loan loss reserves as a desirable carryover input with dynamic characteristics, which provides a new framework in the dynamic network Data Envelopment Analysis (DEA) modelling. We substantiate our formulation and results using novel techniques for causal modelling to ensure that our dynamic network model admits a causal interpretation. Finally, we empirically examine the impact of risk from various economic sectors on efficiency. Our results show that the inefficiencies were volatile in Chinese banking over the period 2013–2020, and we further find that the state-owned banks experienced the highest levels of inefficiency and volatility. The findings report that credit risk derived from the agricultural sector and the Water Conservancy, Environment and Public Facilities management sector decreases bank efficiency, while credit risk derived from the wholesale and retail sector improves bank efficiency. The results of our innovative causal modelling show that our pioneering modelling on the role of loan loss reserves is valid. In addition, from an empirical perspective, our second-stage analysis regarding the impact of risk derived from different economic sectors on bank efficiency can be applied to other banking systems worldwide because of our successful validation from causal modelling. Our attempt to incorporate causal inference into DEA can be generalized to future studies of using DEA for performance evaluation.

KW - Chinese banks

KW - Data envelopment analysis

KW - Causal modelling

KW - Dynamic inefficiency

KW - Two-stage network

U2 - 10.1007/s10479-023-05486-0

DO - 10.1007/s10479-023-05486-0

M3 - Journal article

VL - 342

SP - 1865

EP - 1904

JO - Annals of Operations Research

JF - Annals of Operations Research

SN - 0254-5330

IS - 3

ER -