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Search Results (33)

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Keywords = Malmquist Productivity Index (MPI)

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13 pages, 1411 KiB  
Article
Assessing Road Safety in Morocco’s Regions from 2014 to 2022: A DEA-MPI Benchmarking Analysis
by Zoubida Chorfi and Ibtissam El Khalai
Future Transp. 2024, 4(3), 1046-1058; https://doi.org/10.3390/futuretransp4030050 - 12 Sep 2024
Viewed by 229
Abstract
Assessing road safety performance in various regions of a country is crucial for improving overall road safety conditions and reducing the global mortality rate. This study employs the data-envelopment-analysis-based Malmquist productivity index (DEA-MPI) to comprehensively assess the progress of road safety performance in [...] Read more.
Assessing road safety performance in various regions of a country is crucial for improving overall road safety conditions and reducing the global mortality rate. This study employs the data-envelopment-analysis-based Malmquist productivity index (DEA-MPI) to comprehensively assess the progress of road safety performance in different regions of Morocco over time. Using a dataset spanning from 2014 to 2022, which contains data on road accidents, fatalities, injuries, the number of vehicles, and road traffic, this article evaluates the efficiency evolution across Morocco’s twelve regions. The study results show that the improvement of Morocco’s road safety performance during the studied period is unsatisfying and far from reaching the objectives of the current road safety strategy, which aims to reduce the number of fatalities by 50% by 2026. Moreover, the Malmquist productivity index (MPI) approach, which decomposes total factor productivity change into efficiency and technical changes, revealed that neither component shows a consistent trend throughout the studied period. This indicates that performance progress over time is insufficient and falls short of expectations, underscoring the immediate need for both technical and managerial improvements to address the current road safety challenges effectively. Full article
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<p>The evolution of road safety accidents, fatalities and injuries from 2014 to 2022.</p>
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<p>Data for the DEA-MPI methodology.</p>
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<p>Average road safety performance scores for Moroccan regions during the period (2014–2022).</p>
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<p>Average road safety performance scores by year for the 12 Moroccan regions (2014–2022).</p>
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<p>The variations in road fatalities and Tfpch along with its components (Effch and Techch) from 2014 to 2022.</p>
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15 pages, 322 KiB  
Article
The Impact of Port Total Factor Productivity on Carbon Dioxide Emissions in Port Cities: Evidence from the Yangtze River Ports
by Xingong Ding and Yong-Jae Choi
Appl. Sci. 2024, 14(6), 2406; https://doi.org/10.3390/app14062406 - 13 Mar 2024
Viewed by 912
Abstract
This paper investigates the relationship between port productivity and carbon dioxide (CO2) emissions in port cities. The study initially employs the global Malmquist productivity index (MPI) to measure productivity growth in 16 major inland ports along the Yangtze River, obtaining data [...] Read more.
This paper investigates the relationship between port productivity and carbon dioxide (CO2) emissions in port cities. The study initially employs the global Malmquist productivity index (MPI) to measure productivity growth in 16 major inland ports along the Yangtze River, obtaining data on the ports’ total factor productivity (TFP). Through an analysis using the panel data model with two-way fixed effects, we find a positive correlation between the improvement of port TFP and the increase in CO2 emissions in port cities. Further panel quantile regression analysis reveals the heterogeneity of this impact, especially in cities with medium and higher CO2 emissions, where the positive effects of TFP on carbon emissions are particularly significant. The study also indicates a threshold effect of port size in the relationship between TFP and CO2 emissions: in smaller ports, the impact of TFP improvement on CO2 emissions is less significant; however, once the port size exceeds a certain threshold, the growth in TFP significantly promotes an increase in CO2 emissions. These findings provide theoretical justification and decision-making references for policymakers to adopt effective measures to mitigate the growth of CO2 emissions while promoting the efficiency of port production. Full article
21 pages, 856 KiB  
Article
Nash Bargaining Game Enhanced Global Malmquist Productivity Index for Cross-Productivity Index
by Reza Fallahnejad, Mohammad Reza Mozaffari, Peter Fernandes Wanke and Yong Tan
Games 2024, 15(1), 3; https://doi.org/10.3390/g15010003 - 24 Jan 2024
Viewed by 1672
Abstract
The Global Malmquist Productivity Index (GMPI) stands as an evolution of the Malmquist Productivity Index (MPI), emphasizing global technology to incorporate all-time versions of Decision-Making Units (DMUs). This paper introduces a novel approach, integrating the Nash Bargaining Game model with GMPI to establish [...] Read more.
The Global Malmquist Productivity Index (GMPI) stands as an evolution of the Malmquist Productivity Index (MPI), emphasizing global technology to incorporate all-time versions of Decision-Making Units (DMUs). This paper introduces a novel approach, integrating the Nash Bargaining Game model with GMPI to establish a Cross-Productivity Index. Our primary objective is to develop a comprehensive framework utilizing the Nash Bargaining Game model to derive equitable common weights for different time versions of DMUs. These weights serve as a fundamental component for cross-evaluation based on GMPI, facilitating a holistic assessment of DMU performance over varying time periods. The proposed index is designed with essential properties: feasibility, non-arbitrariness concerning the base time period, technological consistency across periods, and weight uniformity for GMPI calculations between two-time versions of a unit. This research amalgamates cross-evaluation and global technology while employing geometric averages to derive a conclusive cross-productivity index. The core motivation behind this methodology is to establish a reliable and fair means of evaluating DMU performance, integrating insights from Nash Bargaining Game principles and GMPI. This paper elucidates the rationale behind merging the Nash Bargaining Game model with GMPI and outlines the objectives to provide a comprehensive Cross-Productivity Index, aiming to enhance the robustness and reliability of productivity assessments across varied time frames. Full article
(This article belongs to the Section Applied Game Theory)
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<p>Two-time technology comparison for numerical example DMUs.</p>
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<p>Global technology for numerical example data.</p>
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<p>Cross-GMPI matrix radar diagram of the proposed method for the numerical example.</p>
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28 pages, 1336 KiB  
Review
The Application of Data Envelopment Analysis to Emergency Departments and Management of Emergency Conditions: A Narrative Review
by Mirpouya Mirmozaffari and Noreen Kamal
Healthcare 2023, 11(18), 2541; https://doi.org/10.3390/healthcare11182541 - 14 Sep 2023
Cited by 14 | Viewed by 2306
Abstract
The healthcare industry is one application for data envelopment analysis (DEA) that can have significant benefits for standardizing health service delivery. This narrative review focuses on the application of DEA in emergency departments (EDs) and the management of emergency conditions such as acute [...] Read more.
The healthcare industry is one application for data envelopment analysis (DEA) that can have significant benefits for standardizing health service delivery. This narrative review focuses on the application of DEA in emergency departments (EDs) and the management of emergency conditions such as acute ischemic stroke and acute myocardial infarction (AMI). This includes benchmarking the proportion of patients that receive treatment for these emergency conditions. The most frequent primary areas of study motivating work in DEA, EDs and management of emergency conditions including acute management of stroke are sorted into five distinct clusters in this study: (1) using basic DEA models for efficiency analysis in EDs, i.e., applying variable return to scale (VRS), or constant return to scale (CRS) to ED operations; (2) combining advanced and basic DEA approaches in EDs, i.e., applying super-efficiency with basic DEA or advanced DEA approaches such as additive model (ADD) and slack-based measurement (SBM) to clarify the dynamic aspects of ED efficiency throughout the duration of a first-aid program for AMI or heart attack; (3) applying DEA time series models in EDs like the early use of thrombolysis and percutaneous coronary intervention (PCI) in AMI treatment, and endovascular thrombectomy (EVT) in acute ischemic stroke treatment, i.e., using window analysis and Malmquist productivity index (MPI) to benchmark the performance of EDs over time; (4) integrating other approaches with DEA in EDs, i.e., combining simulations, machine learning (ML), multi-criteria decision analysis (MCDM) by DEA to reduce patient waiting times, and futile transfers; and (5) applying various DEA models for the management of acute ischemic stroke, i.e., using DEA to increase the number of eligible acute ischemic stroke patients receiving EVT and other medical ischemic stroke treatment in the form of thrombolysis (alteplase and now Tenecteplase). We thoroughly assess the methodological basis of the papers, offering detailed explanations regarding the applied models, selected inputs and outputs, and all relevant methodologies. In conclusion, we explore several ways to enhance DEA’s status, transforming it from a mere technical application into a strong methodology that can be utilized by healthcare managers and decision-makers. Full article
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<p>Basic DEA models: (<b>a</b>) input-oriented CCR dual model; (<b>b</b>) output-oriented CCR dual model; (<b>c</b>) input-oriented BCC dual model; (<b>d</b>) output-oriented BCC dual model; (<b>e</b>) visual representation of technical efficiency and its breakdown from various sources in a graphical format including PTE, TE, and scale SE; and (<b>f</b>) Frontier lines considering input- and output-oriented visualization [<a href="#B35-healthcare-11-02541" class="html-bibr">35</a>].</p>
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<p>Additive DEA models: additive primal model and dual additive model.</p>
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<p>SBM DEA models: (<b>a</b>) input-oriented SBM; (<b>b</b>) output-oriented SBM; (<b>c</b>) non-oriented SBM; and (<b>d</b>) non-oriented SBM linear applying the Charnes–Cooper transformation [<a href="#B51-healthcare-11-02541" class="html-bibr">51</a>].</p>
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15 pages, 2793 KiB  
Article
Urbanization Paradox of Environmental Policies in Korean Local Governments
by Yongrok Choi, Hyoungsuk Lee, Hojin Jeong and Jahira Debbarma
Land 2023, 12(2), 436; https://doi.org/10.3390/land12020436 - 7 Feb 2023
Cited by 3 | Viewed by 1888
Abstract
Many developing countries have been experiencing the problems of urbanization, particularly regarding carbon emission and polluted air emission mitigation. Is it possible to simultaneously achieve these two different clean and green economic strategies? This study analyzes this paradoxical issue of air pollution in [...] Read more.
Many developing countries have been experiencing the problems of urbanization, particularly regarding carbon emission and polluted air emission mitigation. Is it possible to simultaneously achieve these two different clean and green economic strategies? This study analyzes this paradoxical issue of air pollution in terms of PM2.5 efficiency. To evaluate the performance of regulatory policies on air pollution and to find out the governance factors, this paper adopts the stepwise approach. In the first stage, we evaluate the cross-sectional PM2.5 efficiency of 16 Korean municipalities for the period between 2012 and 2017 and determine whether this performance is sustainable using the Malmquist Productivity Index (MPI). We concluded that most local governments lack sustainable governance on regulation policies for clean air. Using the Tobit model in the second stage, this study showed that regional economic development (GRDP) and an patent for clean air technology innovation are the most important strategic factors that promote sustainability in regulation policy performance. Full article
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<p>Air pollution (PM10) trend (Ton) [<a href="#B1-land-12-00436" class="html-bibr">1</a>].</p>
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<p>Air pollution trend (PM<sub>2.5</sub>) in local governments (Ton) [<a href="#B1-land-12-00436" class="html-bibr">1</a>].</p>
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<p>Map of 17 local governments in South Korea.</p>
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<p>National PM<sub>2.5</sub> efficiency’s trend, 2012–2017.</p>
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<p>Productivity trend in local governments in 2012–2017.</p>
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14 pages, 1589 KiB  
Article
Efficiency and Productivity Differences in Healthcare Systems: The Case of the European Union
by Roman Lacko, Zuzana Hajduová, Tomáš Bakalár and Henrieta Pavolová
Int. J. Environ. Res. Public Health 2023, 20(1), 178; https://doi.org/10.3390/ijerph20010178 - 22 Dec 2022
Cited by 6 | Viewed by 2229
Abstract
This study aims to identify significant differences between the countries of the European Union, follow the course of achievement of the convergence objectives, assess developments against specific common characteristics of the countries, and propose possible measures that could improve the state of health [...] Read more.
This study aims to identify significant differences between the countries of the European Union, follow the course of achievement of the convergence objectives, assess developments against specific common characteristics of the countries, and propose possible measures that could improve the state of health in the EU as a whole by implementing standard cohesion policies. To compare efficiency and productivity among the states of the European Union, we used data envelopment analysis (DEA) and the Malmquist productivity index (MPI). On the basis of our findings, even countries that joined the EU later achieve high technical efficiency values. However, it should be noted that it is in these countries that technical efficiency values tend to decline. The values of the Malmquist productivity index broadly indicate stagnation in western countries and productivity decline in central and eastern European countries. This decline is mainly due to a negative shift in the technological frontier in these countries. Full article
(This article belongs to the Section Health Economics)
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<p>Results of DEA window efficiency measurement—CRS model, selected countries.</p>
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<p>Results of DEA window efficiency measurement—CRS model, selected countries.</p>
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<p>Results of DEA window efficiency measurement—VRS model, selected countries.</p>
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<p>Results of DEA WINDOW efficiency measurement—VRS model, selected countries.</p>
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<p>Changes in productivity between the years 2019 and 2013.</p>
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<p>Cluster dendrogram of technical efficiency change (EffCh) between the years 2019 and 2013.</p>
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<p>Cluster dendrogram of change of the efficiency of technology (TechCh) between years 2019 and 2013.</p>
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24 pages, 3239 KiB  
Article
A Study of Performance Evaluation for Textile and Garment Enterprises
by Chia-Nan Wang, Phuong-Thuy Thi Nguyen, Yen-Hui Wang and Thanh-Tuan Dang
Processes 2022, 10(11), 2381; https://doi.org/10.3390/pr10112381 - 13 Nov 2022
Cited by 1 | Viewed by 4276
Abstract
Vietnam’s textile and garment enterprises make an important contribution to the country with the second largest export turnover. The existence and development of textile and garment enterprises have a significant influence on the socioeconomic development of Vietnam. Currently, Vietnam’s textile and garment industry [...] Read more.
Vietnam’s textile and garment enterprises make an important contribution to the country with the second largest export turnover. The existence and development of textile and garment enterprises have a significant influence on the socioeconomic development of Vietnam. Currently, Vietnam’s textile and garment industry is facing difficulties caused by the COVID-19 pandemic, along with competition from foreign direct investment (FDI) enterprises. Therefore, it is imperative for managers to assess competitiveness by measuring their past and current performance indicators. This study assesses the performance of Vietnam’s 10 textile and garment enterprises from 2017 to 2020 by combining the DEA–Malmquist productivity index (MPI) and epsilon-based measure (EBM) model. The proposed model considered three inputs (total assets, cost of goods sold, and liabilities) and two outputs (total revenue and gross profit). In addition to showing the best-performing companies from certain aspects during the period (2017–2020), the results show that the EBM method combined with the Malmquist model in the field can be successfully applied. This study is a reference for companies in the textile and garment industry to identify their position to improve their operational efficiency and overcome their weaknesses. Full article
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<p>The ranking of exported commodities/commodity groups.</p>
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<p>Imported fabric in Vietnam in 2019.</p>
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<p>Research framework.</p>
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<p>Selection of inputs and outputs.</p>
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<p>The technical efficiency change (catch-up) of DMUs (2017–2020).</p>
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<p>Technological change (frontier-shift) of DMUs (2017–2020).</p>
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<p>The Malmquist productivity index of DMUs (2017–2020).</p>
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<p>Ranking of 10 textile and garment companies.</p>
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<p>The average Malmquist indices of decision-making units (DMUs) for the period 2017–2020.</p>
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19 pages, 2351 KiB  
Article
Assessment and Decomposition of Regional Land Use Efficiency of the Service Sector in China
by Mingzhi Zhang, Hongyu Liu, Yangyue Su, Xiangyu Zhou, Zhaocheng Li and Chao Chen
Land 2022, 11(11), 1911; https://doi.org/10.3390/land11111911 - 27 Oct 2022
Cited by 1 | Viewed by 1533
Abstract
High land use efficiency is the key to improving total factor productivity, and also an important force behind achieving sustained economic growth. Existing studies have mainly focused on the land use efficiency of the industry sector. Yet, the issue of land use efficiency [...] Read more.
High land use efficiency is the key to improving total factor productivity, and also an important force behind achieving sustained economic growth. Existing studies have mainly focused on the land use efficiency of the industry sector. Yet, the issue of land use efficiency of the service sector (SLUE) has been largely overlooked. This study examines regional differences and efficiency decomposition by using a slack based model (SBM) of undesirable output, and the Malmquist productivity index (MPI) under a data envelopment analysis framework. The results reveal that: (1) In China, the land use efficiency of the service sector is unbalanced, showing an inverted growth law of “low in developed areas and high in backward areas”. (2) The land use efficiency of the service sector can be decomposed into technical progress, pure technical efficiency, and scale efficiency. From the decomposition results, the growth rate of pure technical efficiency presents a trend of “low in the east and high in the west”; the scale efficiency also falls into the situation of weak group growth. Technological progress has maintained steady improvement. (3) The coordinated improvement of land use efficiency of the service sector needs to focus on resolving the “beggar-thy-neighbor” issue caused by existing large regional differences. In this article, the puzzle of land use efficiency differences in the service industry is well solved, and thus provides valuable enlightenment for the benign growth of service industries in countries and regions around the world. Full article
(This article belongs to the Special Issue Impacts of Land Use Pattern in Metropolitan Area)
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<p>Visual distribution map of four regions in China.</p>
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<p>Spatial and temporal distribution and evolution trend of SLUE in China.</p>
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<p>Distribution of SLUE density by region.</p>
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<p>Spatial differences and contribution rates in SLUE in China. (<b>a</b>) Variation trend in the Theil index in China; (<b>b</b>) Contribution rates of <math display="inline"><semantics> <mrow> <msub> <mi>T</mi> <mi>w</mi> </msub> </mrow> </semantics></math> and <math display="inline"><semantics> <mrow> <msub> <mi>T</mi> <mi>b</mi> </msub> </mrow> </semantics></math>; (<b>c</b>) Contribution rates of regional differences.</p>
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<p>Drivers of SLUE growth by region.</p>
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14 pages, 366 KiB  
Article
Productivity Change in European Banks in the Post-Crisis Period
by Suzana Laporšek, Aleš Trunk and Igor Stubelj
Systems 2022, 10(5), 186; https://doi.org/10.3390/systems10050186 - 13 Oct 2022
Cited by 2 | Viewed by 1541
Abstract
The paper analyses the productivity change of a balanced panel of 1915 European banks during the 2013–2018 post-crisis period. To study productivity changes, the paper applies the non-parametric output-oriented Data Envelopment Analysis (DEA) approach and the Malmquist productivity index (MPI). The total productivity [...] Read more.
The paper analyses the productivity change of a balanced panel of 1915 European banks during the 2013–2018 post-crisis period. To study productivity changes, the paper applies the non-parametric output-oriented Data Envelopment Analysis (DEA) approach and the Malmquist productivity index (MPI). The total productivity change estimated by the MPI is further decomposed into technical efficiency change and technological change. The overall MPI estimates show a modest increase in the productivity of banks in half of the EU countries. Further decomposition of the MPI indicates that the productivity growth was mainly a result of technological improvement, which was particularly high among the new EU member states, whereas there was a significant drop in technical efficiency. The productivity growth was higher among banks in the non-euro area and among savings banks. The practical implications drawn from the paper are that European banks should further develop their business models to rationalize the costs and increase their operational efficiency and stimulate the adoption of fintech solutions and technological development so as to enhance their productivity. Full article
(This article belongs to the Section Systems Practice in Social Science)
21 pages, 1211 KiB  
Article
Joined Efficiency and Productivity Evaluation of Tunisian Commercial Seaports Using DEA-Based Approaches
by Mohsen Ben Mabrouk, Manel Elmsalmi, Awad M. Aljuaid, Wafik Hachicha and Sami Hammami
J. Mar. Sci. Eng. 2022, 10(5), 626; https://doi.org/10.3390/jmse10050626 - 4 May 2022
Cited by 6 | Viewed by 2528
Abstract
Seaports are important infrastructures to support international trade. Therefore, it is vital that port efficiency and productivity are continuously evaluated and improved. In this context, the objective of this article is to evaluate both the technical efficiency and the change in productivity of [...] Read more.
Seaports are important infrastructures to support international trade. Therefore, it is vital that port efficiency and productivity are continuously evaluated and improved. In this context, the objective of this article is to evaluate both the technical efficiency and the change in productivity of the six most important Tunisian commercial seaports, Bizerte, Rades, Sousse, Sfax, Gabes, and Zarzis, over a period of twelve years from 2005 to 2016. To achieve this objective, the data envelopment analysis (DEA) method is applied. The first output-oriented DEA application is about efficiency evaluation, which, for each seaport, allows the estimation of overall technical efficiency, pure technical efficiency, and scale efficiency. The second application concerns the evolution of the productivity of Tunisian seaports during the study period using the Malmquist DEA-based productivity index. The productivity analysis is performed according to the year (period) and according to each studied seaport. The first output-oriented DEA method provides that the overall technical efficiency in the above-mentioned ports is 69.4% while the pure technical efficiency is 83.3%. Furthermore, the average scale efficiency is about 82.6%, which implies that the decreasing type of returns to scale dominates in this study. Regarding the second DEA application for productivity evolution, the obtained results from the data analysis revealed that it fell by 6.7%, mainly due to the degradation of the technological change (8.3%). The results obtained provide useful basic criteria for establishing efficiency improvement strategies for each studied seaport. Full article
(This article belongs to the Special Issue Decision Support Systems and Tools in Coastal Areas)
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<p>Flowchart of the proposed approach.</p>
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<p>Overall technical efficiency (DEA-CCR) of the Tunisian ports (2005–2016).</p>
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<p>Pure technical efficiency (DEA-BCC) of the Tunisian ports (2005–2016).</p>
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<p>Scale efficiency of Tunisian ports (2005–2016).</p>
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<p>Evolution of the overall factor productivity index and its components.</p>
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14 pages, 282 KiB  
Article
Efficiency and Productivity of Local Educational Administration in Korea Using the Malmquist Productivity Index
by Moonyoung Eom, Hyungchul Yoo and Jisung Yoo
Mathematics 2022, 10(9), 1449; https://doi.org/10.3390/math10091449 - 26 Apr 2022
Cited by 3 | Viewed by 2433
Abstract
As local governments around the world struggle to finance and deliver quality education under fiscal constraints, pressures mount to increase efficiency and productivity in order to obtain more output from the same or fewer resources. Focusing on the case of Korea, this study [...] Read more.
As local governments around the world struggle to finance and deliver quality education under fiscal constraints, pressures mount to increase efficiency and productivity in order to obtain more output from the same or fewer resources. Focusing on the case of Korea, this study investigates the productivity of outputs in local offices of education (OEs) through the analysis of personnel and financial factors by year (2012–2016). Overall, the results indicate the efficient operation of the OEs in Korea. The Malmquist productivity index (MPI) mean decreased from 2012 to 2014, increased from 2014 to 2015, and decreased from 2015 to 2016. The rate of chronological change in each OE’s MPI showed the same pattern of change in the distribution ratio of school expenditures. Finally, the MPI had the same pattern as the Technical Change Index. Policy implications are provided. Full article
27 pages, 4194 KiB  
Article
Technology Prediction for Acquiring a Must-Have Mobile Device for Military Communication Infrastructure
by Sungil Kim, Byungki Jung, Dongyun Han and Choonjoo Lee
Appl. Sci. 2022, 12(6), 3207; https://doi.org/10.3390/app12063207 - 21 Mar 2022
Viewed by 2159
Abstract
The smartphone is a must-have mobile device for the military forces to accomplish critical missions and protect critical infrastructures. This paper explores the applicability of a technology prediction methodology to manage technological obsolescence while pursuing the acquisition of advanced commercial technology for military [...] Read more.
The smartphone is a must-have mobile device for the military forces to accomplish critical missions and protect critical infrastructures. This paper explores the applicability of a technology prediction methodology to manage technological obsolescence while pursuing the acquisition of advanced commercial technology for military use. It reviews the Technology Forecasting using Data Envelopment Analysis (TFDEA) methodology and applies an author-written Stata program for smartphone technology forecasting using TFDEA. We analyzed smartphone launch data from 2005 to 2020 to predict the adoption of smartphone technology and discuss the pace of technological change. The study identifies that the market is undergoing reorganization as new smartphone models expand the market and increase their technical performance. The average rate of technological change, the efficiency change, and the technology change were 1.079, 1.004, and 1.011 each, respectively, which means that the technology progressed over the period. When dividing before and after 2017, technological change and efficiency change generally regressed except for Huawei, Xiaomi, and Oppo. This means that Chinese smartphones are expanding the global market in all directions and the technology is reaching maturity and market competition is accelerating. Full article
(This article belongs to the Section Civil Engineering)
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<p>Desired defense production frontier.</p>
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<p>Mean efficiency and technology changes for the period of 2013–2020: (<b>a</b>) MPI; (<b>b</b>) Global MPI.</p>
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<p>Mean efficiency and technology changes for the period of 2013–2020: (<b>a</b>) MPI; (<b>b</b>) Global MPI.</p>
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<p>Comparison of productivity changes by period using global MPI: (<b>a</b>) transition of technology change and efficiency change. The figure is displayed in the form of “Company name year, efficiency change, technological change”. For example, “Samsung1317, 1.0, 1.1” means “Samsung’s average efficiency change from 2013 to 2017 is 1.0, and technological change is 1.1”; (<b>b</b>) productivity change for the period of 2013–2017 and 2017–2020; (<b>c</b>) technology change for the period of 2013–2017 and 2017–2020; (<b>d</b>) efficiency change for the period of 2013–2017 and 2017–2020.</p>
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<p>Comparison of productivity changes by period using global MPI: (<b>a</b>) transition of technology change and efficiency change. The figure is displayed in the form of “Company name year, efficiency change, technological change”. For example, “Samsung1317, 1.0, 1.1” means “Samsung’s average efficiency change from 2013 to 2017 is 1.0, and technological change is 1.1”; (<b>b</b>) productivity change for the period of 2013–2017 and 2017–2020; (<b>c</b>) technology change for the period of 2013–2017 and 2017–2020; (<b>d</b>) efficiency change for the period of 2013–2017 and 2017–2020.</p>
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<p>Dynamics of efficiency and technology changes: (<b>a</b>) Xiaomi; (<b>b</b>) Oppo; (<b>c</b>) Vivo; (<b>d</b>) Huawei; (<b>e</b>) Samsung; (<b>f</b>) Apple; (<b>g</b>) Motorola; (<b>h</b>) Sony; (<b>i</b>) LG.</p>
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<p>Dynamics of efficiency and technology changes: (<b>a</b>) Xiaomi; (<b>b</b>) Oppo; (<b>c</b>) Vivo; (<b>d</b>) Huawei; (<b>e</b>) Samsung; (<b>f</b>) Apple; (<b>g</b>) Motorola; (<b>h</b>) Sony; (<b>i</b>) LG.</p>
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<p>Dynamics of efficiency and technology changes: (<b>a</b>) Xiaomi; (<b>b</b>) Oppo; (<b>c</b>) Vivo; (<b>d</b>) Huawei; (<b>e</b>) Samsung; (<b>f</b>) Apple; (<b>g</b>) Motorola; (<b>h</b>) Sony; (<b>i</b>) LG.</p>
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<p>Dynamics of efficiency and technology changes: (<b>a</b>) Xiaomi; (<b>b</b>) Oppo; (<b>c</b>) Vivo; (<b>d</b>) Huawei; (<b>e</b>) Samsung; (<b>f</b>) Apple; (<b>g</b>) Motorola; (<b>h</b>) Sony; (<b>i</b>) LG.</p>
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15 pages, 809 KiB  
Article
Eco-Efficiency for the G18: Trends and Future Outlook
by Perry Sadorsky
Sustainability 2021, 13(20), 11196; https://doi.org/10.3390/su132011196 - 11 Oct 2021
Cited by 5 | Viewed by 2017
Abstract
Eco-efficiency is an important ecological indicator for tracking the progress of how countries’ environmental-adjusted economic activity changes over time. The objective of this research is to calculate country-level eco-efficiency for a group of 18 major countries (G18) that are part of the G20. [...] Read more.
Eco-efficiency is an important ecological indicator for tracking the progress of how countries’ environmental-adjusted economic activity changes over time. The objective of this research is to calculate country-level eco-efficiency for a group of 18 major countries (G18) that are part of the G20. First, the data envelope analysis (DEA) method is used to calculate eco-efficiency scores. Second, the Malmquist productivity index (MPI) is used to examine how eco-efficiency changes over time. Eco-efficiency is forecast to the year 2040 using automated forecasting methods under a business-as-usual (BAU) scenario. Over the period 1997 to 2040, eco-efficiency varies widely between these countries with some countries reporting positive growth in eco-efficiency and other countries reporting negative growth. Eco-efficiency leaders over the period 1997 to 2019 and 2019 to 2040 include Australia, Brazil, France, Germany, Great Britain, Italy, Japan, Russia, and the United States. Laggards include Canada, China, India, and Indonesia. These laggard countries recorded negative growth rates in eco-efficiency over the period 1997 to 2019 and 2019 to 2040. Negative eco-efficiency growth points to a worsening of environmental sustainability. Large variations in eco-efficiency between countries make it more difficult to negotiate international agreements on energy efficiency and climate change. For the G18 countries, the average annual change in MPI over the period 1997 to 2019 was 0.5%, while the forecasted average annual change over the period 2019 to 2040 was a 0.1% decrease. For the G18 countries, there has been little change in eco-efficiency. The G18 are an important group of developed and developing countries that need to show leadership when it comes to increasing eco-efficiency. Full article
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<p>GDP per unit of CO<sub>2</sub> emissions for the G7 countries.</p>
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<p>GDP per unit of CO<sub>2</sub> emissions for the BRICS countries.</p>
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<p>GDP per unit of CO<sub>2</sub> emissions for the other countries.</p>
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12 pages, 796 KiB  
Article
Efficiency of Wood-Processing Enterprises—Evaluation Based on DEA and MPI: A Comparison between Slovakia and Bulgaria for the Period 2014–2018
by Stanislava Krišťáková, Nikolay Neykov, Petar Antov, Mariana Sedliačiková, Roman Reh, Aureliu-Florin Halalisan and Iveta Hajdúchová
Forests 2021, 12(8), 1026; https://doi.org/10.3390/f12081026 - 2 Aug 2021
Cited by 22 | Viewed by 3848
Abstract
The ongoing transition to a low-carbon, sustainable forest-based economy, and the adoption of circular bioeconomy principles in the wood-processing industry is associated with the optimization of natural resources, application of environmentally sustainable production technologies, adoption of technological and organizational innovations, and increased economic [...] Read more.
The ongoing transition to a low-carbon, sustainable forest-based economy, and the adoption of circular bioeconomy principles in the wood-processing industry is associated with the optimization of natural resources, application of environmentally sustainable production technologies, adoption of technological and organizational innovations, and increased economic efficiency and competitiveness. The implementation of all these measures can help to reach the biggest challenge of our time in the fight against climate change in a cost-effective and competitive way. The aim of this study was to estimate the technical efficiency of wood-processing companies in the Slovak Republic and the Republic of Bulgaria by applying data envelopment analysis (DEA) and the Malmquist productivity index (MPI), and to reveal some factors for efficiency improvements. The economic efficiency evaluation based on official data was performed using selected indices of four wood-processing companies in each country in the period 2014–2018. The study implemented an output-oriented DEA model with constant returns to scale as a nonparametric linear approach for measuring the efficiency of production decision-making units (DMUs). The results obtained revealed that the studied Slovak companies were more efficient with better management in terms of machinery planning and overhead utilization. Markedly, the Bulgarian companies achieved better materials management and current planning quality. Increased economic efficiency of wood-processing enterprises in both countries can be realized through investments in innovative technological improvements, and enhanced research and development activities. Full article
(This article belongs to the Special Issue Circular Bioeconomy in Forest-Based Sector: Governance and Policy)
15 pages, 790 KiB  
Article
Economic Efficiency of Forest Enterprises—Empirical Study Based on Data Envelopment Analysis
by Nikolay Neykov, Stanislava Krišťáková, Iveta Hajdúchová, Mariana Sedliačiková, Petar Antov and Blanka Giertliová
Forests 2021, 12(4), 462; https://doi.org/10.3390/f12040462 - 10 Apr 2021
Cited by 34 | Viewed by 3416
Abstract
Countries are forced to develop bio-based economic strategies to promote efficient use of renewable natural resources. The transition towards a sustainable forest bio-based economy is associated with resource efficiency optimization, adoption of innovative bio-based approaches in terms of technological improvements and cost effectiveness, [...] Read more.
Countries are forced to develop bio-based economic strategies to promote efficient use of renewable natural resources. The transition towards a sustainable forest bio-based economy is associated with resource efficiency optimization, adoption of innovative bio-based approaches in terms of technological improvements and cost effectiveness, and an opportunity to reach multiple societal challenges. This paper is focused on a comparative analysis of the forestry sector in the Republic of Bulgaria and the Slovak Republic by estimating the economic efficiency of four Bulgarian state-owned forest enterprises and four Slovak forest enterprises. The evaluation of economic efficiency was carried out using selected indicators of the studied enterprises over a period of five years. A data envelopment analysis (DEA) approach was used as a non-parametric linear technique for measuring the relative efficiency of a set of production decision-making units (DMUs). The Malmquist productivity index (MPI) was used to assess the pure efficiency changes (PEC) and technological changes (TCs) of the studied forest enterprises. Data for 2014–2018 were processed. The results obtained for the economic efficiency study outlined the major factors affecting the differences in efficiency scores. The long-term sustainability and increased economic efficiency of forest enterprises in both countries can be achieved by improvements in forest management and investments in research and development activities. Full article
(This article belongs to the Special Issue Circular Bioeconomy in Forest-Based Sector: Governance and Policy)
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