Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation

Data Envelopment Analysis (DEA) is a well -established non -parametric technique for performance measurement to assess the efficiency of Decision -Making Units (DMUs). However, its inability to predict the efficiency values of new DMUs without re -conducting the analysis on the entire dataset has le...

Full description

Bibliographic Details
Published in:MALAYSIAN JOURNAL OF FUNDAMENTAL AND APPLIED SCIENCES
Main Authors: Khoubrane, Yousef; Ramli, Noor Asiah; Khairi, Siti Shaliza Mohd
Format: Article
Language:English
Published: PENERBIT UTM PRESS 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001221789500014
author Khoubrane
Yousef; Ramli
Noor Asiah; Khairi
Siti Shaliza Mohd
spellingShingle Khoubrane
Yousef; Ramli
Noor Asiah; Khairi
Siti Shaliza Mohd
Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
Science & Technology - Other Topics
author_facet Khoubrane
Yousef; Ramli
Noor Asiah; Khairi
Siti Shaliza Mohd
author_sort Khoubrane
spelling Khoubrane, Yousef; Ramli, Noor Asiah; Khairi, Siti Shaliza Mohd
Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
MALAYSIAN JOURNAL OF FUNDAMENTAL AND APPLIED SCIENCES
English
Article
Data Envelopment Analysis (DEA) is a well -established non -parametric technique for performance measurement to assess the efficiency of Decision -Making Units (DMUs). However, its inability to predict the efficiency values of new DMUs without re -conducting the analysis on the entire dataset has led to the integration of Machine Learning (ML) in previous studies to address this limitation. Yet, such integration often lacks a thorough evaluation of ML's adaptability in replacing the current DEA process. This paper presents the results of an empirical study that employed eight ML models, two DEA variants, and a dataset of S&P500 companies. The findings demonstrated ML's remarkable precision in predicting efficiency values derived from a single DEA run and comparable performance in predicting the efficiency of new DMUs, thus eliminating the need for repeated DEA. This discovery highlights ML's robustness as a complementary tool for DEA in continuous efficiency estimation, rendering the practice of re -conducting DEA unnecessary. Notably, boosting models within the Ensemble Learning category consistently outperformed other models, highlighting their effectiveness in the context of DEA efficiency prediction. Particularly, CatBoost demonstrated its superiority as the top -performing model, followed by LightGBM in the second position in most cases. When extended to five enlarged datasets, it shows that the model exhibits superior R2 values in the CRS scenario.
PENERBIT UTM PRESS
2289-5981
2289-599X
2024
20
2
10.11113/mjfas.v20n2.3310
Science & Technology - Other Topics
gold
WOS:001221789500014
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001221789500014
title Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
title_short Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
title_full Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
title_fullStr Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
title_full_unstemmed Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
title_sort Performance Measurement: Machine Learning as a Complement to DEA for Continuous Efficiency Estimation
container_title MALAYSIAN JOURNAL OF FUNDAMENTAL AND APPLIED SCIENCES
language English
format Article
description Data Envelopment Analysis (DEA) is a well -established non -parametric technique for performance measurement to assess the efficiency of Decision -Making Units (DMUs). However, its inability to predict the efficiency values of new DMUs without re -conducting the analysis on the entire dataset has led to the integration of Machine Learning (ML) in previous studies to address this limitation. Yet, such integration often lacks a thorough evaluation of ML's adaptability in replacing the current DEA process. This paper presents the results of an empirical study that employed eight ML models, two DEA variants, and a dataset of S&P500 companies. The findings demonstrated ML's remarkable precision in predicting efficiency values derived from a single DEA run and comparable performance in predicting the efficiency of new DMUs, thus eliminating the need for repeated DEA. This discovery highlights ML's robustness as a complementary tool for DEA in continuous efficiency estimation, rendering the practice of re -conducting DEA unnecessary. Notably, boosting models within the Ensemble Learning category consistently outperformed other models, highlighting their effectiveness in the context of DEA efficiency prediction. Particularly, CatBoost demonstrated its superiority as the top -performing model, followed by LightGBM in the second position in most cases. When extended to five enlarged datasets, it shows that the model exhibits superior R2 values in the CRS scenario.
publisher PENERBIT UTM PRESS
issn 2289-5981
2289-599X
publishDate 2024
container_volume 20
container_issue 2
doi_str_mv 10.11113/mjfas.v20n2.3310
topic Science & Technology - Other Topics
topic_facet Science & Technology - Other Topics
accesstype gold
id WOS:001221789500014
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001221789500014
record_format wos
collection Web of Science (WoS)
_version_ 1809679004114878464