Analyzing a Hybrid Approach of PCA-DEA in Two Different Modes | ||
Journal of Quality Engineering and Production Optimization | ||
مقاله 2، دوره 8، شماره 1، مرداد 2023، صفحه 13-32 اصل مقاله (942.31 K) | ||
نوع مقاله: Research Paper | ||
شناسه دیجیتال (DOI): 10.22070/jqepo.2022.16417.1240 | ||
نویسندگان | ||
Kiyana Salehi1؛ Ahmad Mehrabian* 1؛ Hossein Amoozad Khalili2؛ Mehrzad Navabakhsh3 | ||
1Department of Industrial Engineering, Aliabad Katoul Branch, Islamic Azad University, Aliabad Katoul, Iran | ||
2Department of Industrial Engineering, Sari Branch, Islamic Azad University, Sari, Iran | ||
3Department of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran | ||
چکیده | ||
The present work compared input- and output-based integrated principal component analysis-data envelopment analysis (PCA-DEA) approaches. The approach minimizing the number of decision-making units (DMUs) identified as efficient would be the superior one (as it facilitates DMU ranking). This approach would somewhat handle a major drawback of DEA– i.e., the emergence of an excessively high number of DMUs. The input and output-based approaches were independently implemented in MATLAB and were compared to identify the superior one. A number of numerical examples were carried out to demonstrate the performance of the superior approach. The results show that the second approach (the output-based approach) is superior to the first approach (the input-based approach). Therefore, it is better to divide the outputs by the inputs to create the PCA-DEA indices. In order to achieve better results in this way, this point (of dividing the outputs by the inputs) is not specific to this research alone and can be used in other research (in case study research). | ||
کلیدواژهها | ||
DEA؛ Efficient DMUs؛ Performance Evaluation؛ PCA | ||
مراجع | ||
Abbasi, M., Ghomashi, A., & Shahghobadi, S. (2022). Finding common weights in DEA using a compromise solution approach. International Journal of Data Envelopment Analysis,10(2),63-72.
Ahmadvand, A., Abtahy, Z., & Bashiri, M. (2011). Considering undesirable variables in PCA-DEA method: a case of road safety evaluation in Iran.Journal of Industrial Engineering International,7(15),43-50.
Amirteimoori, A.R., Despotis, D., & Kordrostami, S.(2014).Variables reduction in data envelopment analysis.Optimization,63(5),735-745.
Andersen, P., & Petersen, N.C. (1993). A Procedure for Ranking Efficient Units in Data Envelopment Analysis.Management Science,39(10),1261-1264.
Battess, G.E., & Coelli, T.J.(1995).A Model for Technical Inefficiency Effects in a Stochastic Frontier Production Function for Panel Data.Empirical Economics,20,325-332.
Charnes, A., Cooper, W., & Rhodes, E. (1978). Measuring the efficiency of decision making units.European Journal of Operational Research,2(6),429-444.
Choudhuri, P. K.(2014).Application of Multi-Criteria Decision Making (MCDM) Technique for Gradation of Jute Fibres.Journal of The Institution of Engineers (India): Series E,2(95),63-68.
Dong, F., Mitchell P.D., & Colquhoun, J.(2015).Measuring farm sustainability using data envelope analysis with principal components: The case of Wisconsin cranberry.Journal of Environmental Management,147(1),175-183.
Elhaik, E.(2022).Principal Component Analyses (PCA)-based findings in population genetic studies are highly biased and must be reevaluated.Sci Rep,12,146-152.
Firoozishahmirzadi, P.(2020).Ranking Efficient Decision Making Units in Data Envelopment Analysis based on Changing Reference Set.International Journal of Data Envelopment Analysis,8(1),21-26.
Ghalayini, A.M., Noble, J.S., & Crowe, T.J. (1997). An Integrated Dynamic performance Measurement system for Improving Manufacturing competitiveness. International Journal of Production Economics, (48),111-123.
Gibbons, R., & Murphy, K.(1990).Relative Performance Evaluation for Chief Executive Officers.ILR Review,43(3),30-51.
Golany, B., & Roll, Y. (1989). An application procedure for DEA. Omega – The International Journal of Management Science,17(3),237-250.
Han, X., Peng, J., Cui, A., & Zhao, F.(2020).Sparse Principal Component Analysis via Fractional Function Regularity.Mathematical Problems in Engineering,Special Issue,1-10.
Heidary, S., Zanburi, E., & Parvin, H. (2018).A Hybrid model based on neural network and Data Envelopment Analysis model for Evaluation of unit Performance.Iranian Journal of Optimization,10(2),101-112.
Hosseinzadeh Lotfi, F., Toloie Eshlaghy, A., Saleh, H., Nikoomaram, H., & Seyedhoseini, S.M.(2012).A new two-stage data envelopment analysis (DEA) model for evaluating the branch performance of banks).African Journal of Business Management,6(24),7230-7241.
Jafari, H., & Ehsanifar, M.(2020).Using interval arithmetic for providing a MADM approach.Journal of Fuzzy Extension and Applications,1(1),60-68.
Jafarigorzin, S., & Asadi Talooki, I. (2021). Malmquist Productivity Index Based on Means of Weights for Ranking of Decision Making Units in Data Envelopment Analysis. International Journal of Data Envelopment Analysis,9(2),1-8.
Kardıyen, F., & Örkcü, H. (2010). The Comparison of Principal Component Analysis and Data Envelopment Analysis in Ranking of Decision Making Units .Gazi University Journal of Science,19(2),127-133.
Li, p.(2001).Design of Performance Measurement Systems: a Stakeholder Analysis Framework The Academy of Management Review. Mississippi State April.
MendonçaPeixoto, M.G., AndreottiMusetti, M., & Mendonça, M.C.A.(2020). Performance management in hospital organizations from the perspective of Principal Component Analysis and Data Envelopment Analysis: the case of Federal University Hospitals in Brazil.Computers & Industrial Engineering,150,1-14.
Moazeni, H., Arbabshirani, B., & Hejazi, S. R. (2022). An integrated model of network Data Envelopment Analysis and principal component analysis approach to calculate the efficiency of industrial units (Case study: Stone Industry). Journal of Industrial and Systems Engineering,14(2),172-192.
Mohaghar, A., Fathi, M.R., & Jafarzadeh, A.H.(2013).A Supplier Selection Method Using AR- DEA and Fuzzy VIKOR. International Journal of Industrial Engineering: Theory, Applications and Practice,20(5),387-400.
Mohammadnazari, Z., Aghsami, A., & Rabbani, M.(2022).A hybrid novel approach for evaluation of resiliency and sustainability in construction environment using data envelopment analysis, principal component analysis, and mathematical formulation.Environ Dev Sustain,11,231-239.
Neely, A.D.(2005).Defining performance measurement: adding to the debate.Perspectives on Performance,4(2),14-15.
Omrani, H., Fahimi, P., & Emrouznejad, A. (2022). A common weight credibility data envelopment analysis model for evaluating decision making units with an application in airline performance. RAIRO -Oper.Res,56(2),911-930.
Omrani, H., Gharizadeh Beiragh, R., & Shafiei Kaleibari, S.(2015). Performance assessment of Iranian electricity distribution companies by an integrated cooperative game data envelopment analysis principal component analysis approach.International Journal of Electrical Power & Energy Systems,(64),617-625.
Premachandra, I.M. (2001).A note on DEA vs principal component analysis: An improvement to Joe Zhu's approach.European Journal of Operational Research,3(132), 553–560.
Rahimpour, K., Shirouyehzad, H., Asadpour, M., & Karbasian, M.(2020). A PCA-DEA method for organizational performance evaluation based on intellectual capital and employee loyalty: A case study.Journal of Modelling in Management,15(4),1479-1513.
Rakhshan, F., & Alirezaee, M. R. (2019). An ethics-based decomposition of Malmquist productivity index using data envelopment analysis. Journal of Industrial and Systems Engineering,12(4),1-17.
Razavi Hajiagha, S.H., Amoozad Mahdiraji, H., Hashemi, S.S., Garza-Reyes, J.A., & Joshi, R.(2022).Public Hospitals Performance Measurement through a Three-Staged Data Envelopment Analysis Approach: Evidence from an Emerging Economy.Cybernetics and Systems,53(8),1-27.
Rostamy-Malkhalifeh, M., Poudineh, E., & Payan, A. (2018). A Fully Fuzzy Method of Network Data Envelopment Analysis for Assessing Revenue Efficiency Based on Ranking Functions. Control and Optimization in Applied Mathematics,3(2),77-96.
Sadraei Javaheri, A., & Ostadzad, A.(2014). Estimating Efficiency of Thermal and Hydroelectric Power Plants in Iranian Provinces.Iranian Journal of Economic Studies,3(2),19-42.
Salehi, K., Mehrabian, A., Amoozad Khalili, H., & Navabakhsh, M. (2022). ANALYSIS OF SPECIFIC STATES IN NONPARAMETRIC DECISION-MAKING METHODS. International Journal of Industrial Engineering: Theory, Applications, and Practice,29(2),192-205.
Sarkar, S. (2015). Assessment of Cost Effectiveness of a Firm Using Multiple Cost Oriented DEA and Validation with MPSS based DEA.International Journal of Data Envelopment Analysis,3(1),593-607.
Saqafi, A., Osta, S., Amiri, M., & Barzideh, F. (2018). A Model for Performance Assessment of the Investment Companies with Data Envelopment Analysis Approach and Principal Component Segregation Method. Journal of Financial Accounting Research,10(1),75-94.
Shokrollahpour, E., Hosseinzadeh Lotfi, F., & Zandieh, M.(2016). An integrated data envelopment analysis-artificial neural network approach for benchmarking of bank branches. International Journal of Industrial Engineering,12,137-143.
Soltani, N., Yang, Z., & Lozano, S.(2022).Ranking decision making units based on the multi-directional efficiency measure.Journal of the Operational Research Society,73(9),1996-2008.
Soofizadeh, S., & Fallahnejad, R. (2022). A bargaining game model for performance evaluation in network DEA considering shared inputs in the presence of undesirable outputs. Journal of Mathematical Modeling,10(2),227-245.
Timothy, A.J., & Gerald R.F.(1993).Social Context of Performance Evaluation Decisions. The Academy of Management Journal,36(1),80-105.
Tsolas, L.E.,Charles, V., & Gherman, T.(2020).Supporting better practice benchmarking: A DEA-ANN approach to bank branch performance assessment.Expert Systems with Applications,160,1-26.
Vittorio, C., Federico, F., Valentina, L., & Manzini, R. (2008). Designing a Performance Measurement System for the Research Activities: A Reference Framework and an Empirical Study. Journal of Engineering and Technology Management,(25),213-225.
Wu, D.(2009).Supplier selection: A hybrid model using DEA, decision tree and neural network.Expert Systems with Applications,36 (5),9105–9112.
Xiao, Q.W., Tian, Z., & Ren, F.R.(2022). Efficiency assessment of electricity generation in China using meta-frontier data envelopment analysis: Cross-regional comparison based on different electricity generation energy sources.Energy Strategy Reviews,39,1-12.
Xiuli, G., Xuening, C., Deyi, X., & Zaifang, Z. (2010). An integrated approach for rating engineering characteristics’ final importance in product-service system development .Journal of Computers & Industrial Engineering,59,585-594.
Zanboori, E., Rostamy-Malkhalifeh, M., Jahanshahloo, G.R., Shoja, N.(2014).Calculating super efficiency of DMUs for ranking units in data envelopment analysis based on SBM model. Scientific World Journal,1-7. | ||
آمار تعداد مشاهده مقاله: 714 تعداد دریافت فایل اصل مقاله: 165 |