Pinto, Claudio (2025): Combining machine learning techniques with NDEA methodology: the use of R.F. and A.N.N.
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Abstract
The objective of the present work is to combine NDEA approach with machine learning techniques and neural networks. At this end we exploit the models proposed in Pinto, 2024. The integration process involves the application of a machine learning technique upstream of the resolution of NDEA models and the application of an artificial neural network downstream the resolution of a NDEA models. In particular here we propose the application of a Random Forest algorithm in regression models to adjust data on: 1) input and output, 2) resource allocation preferences among sub-processes, 3) cost budgets, revenue targets and profit targets, from the influence of internal and external factors in order to improve the calculation of optimal weights. Downstream of the resolution of NDEA models, the use of several artificial neural network models is to prosed to optimise the calculation of the economic quantities of interest derived from optimal NDEA solutions. The approach enhances the discrimination power and robustness of optimal NDEA weights as well as the robustness of the calculation of formulas of the economic quatities.
| Item Type: | MPRA Paper |
|---|---|
| Original Title: | Combining machine learning techniques with NDEA methodology: the use of R.F. and A.N.N. |
| English Title: | Combining machine learning techniques with NDEA methodology: the use of R.F. and A.N.N. |
| Language: | English |
| Keywords: | Network Data Envelopment Analisys, Random Forest Regression, Artificial Neural Network, external factors |
| Subjects: | C - Mathematical and Quantitative Methods > C4 - Econometric and Statistical Methods: Special Topics > C45 - Neural Networks and Related Topics C - Mathematical and Quantitative Methods > C5 - Econometric Modeling > C53 - Forecasting and Prediction Methods ; Simulation Methods C - Mathematical and Quantitative Methods > C6 - Mathematical Methods ; Programming Models ; Mathematical and Simulation Modeling > C61 - Optimization Techniques ; Programming Models ; Dynamic Analysis L - Industrial Organization > L2 - Firm Objectives, Organization, and Behavior > L20 - General |
| Item ID: | 126539 |
| Depositing User: | Ph.D. Claudio Pinto |
| Date Deposited: | 27 Oct 2025 08:53 |
| Last Modified: | 27 Oct 2025 08:53 |
| References: | Agarwal, S. (2016). DEA-neural networks approach to assess the performance of public transport sector of India. Opsearch, 2(53), pp. 248–258. doi:https://doi.org/10.1007/s12597-015-0229-2 Aggarwal, C. (2018). Neural Networks and Deep Learning. A textbook. Springer International Publishing AG, part of Springer Nature. doi:https://doi.org/10.1007/978-3-319-94463-0 Athanassopoulos, A., & Curram, S. (1996). A comparison of data envelopment analysis and artificial neural networks as tools for assessing the efficiency of decision-making units. J. Oper. Res. Soc., 47, p. 1000–1016. doi:https://doi.org/10.1057/jors.1996.127 Breiman, L. (2001). Random Forests. Machine Learning, 45, pp. 5–32. doi: https://doi.org/10.1023/A:1010933404324 Castelli, L., & Pesenti, R. (2014). Network, Shared Flow and Multi-level DEA Models: A Critical Review. In W. C. Zhu, Data Envelopment Analysis, International Series in Operations Research & Management Science (Vol. 208, pp. 329–366). New York: Springer Science+Business Media. Castelli, L., Pesenti, R., & Ukovich, W. (2001). DEA-like models for efficiency evaluations of specialised and interdependent units. European Journal of Operational Research, 132(2), pp. 274–286.https://doi.org/10.1016/S0377-2217(00)00151-X Castelli, L., Pesenti, R., & Ukovich, W. (2010). A classification of DEA models when the internal structure of the Decision Making Units is considered. Annals of Operations Research, 173, p. 207–235.https://doi.org/10.1007/s10479-008-0414-2 Çelebi, D., & Bayraktar, D. (2008). An integrated neural network and data envelopment analysis for supplier evaluation under incomplete information. Expert Syst. Appl., 35(4), pp. 1698–1710. doi:https://doi.org/10.1016/j.eswa.2007.08.107 Cook, W. &. (2008). Data Envelopment Analysis A Handbook on the Modelling of Internal Structures and Networks. New York: Springer. doi:doi:10.1007/978-1-4899-8068-7 Cooper, W. S. (2011). Data Envelopment Analysis: History, Models, and Interpretations. In L. S. In W. Cooper, Handbook on Data Envelopment Analysis (International Series in Operations Research & Management Science ed.,) (Vol. 164). Boston, MA: Springer. doi:doi:10.1007/978-1-4419-6151-8_1 Duras, T., Javed, F., Månsson, K., Sjölander, P., & Söderberg, M. (2023). Using machine learning to select variables in data envelopment analysis: Simulations and application using electricity distribution data. Energy Economics, 120. doi:https://doi.org/10.1016/j.eneco.2023.106621 Emrouznejad, A., & Shale, E. (2009). A combined neural network and DEA for measuring efficiency of large scale datasets. Comput. Ind. Eng., 56, p. 249–254. doi:https://doi.org/10.1016/j.cie.2008.05.012 Fare, R. &. (1994). Cost and Revenue Constrained Production. New York Berlin Heidelberg London Paris Tokyo Hong Kong Barcelona Budapest: Springer-Verlag. doi: doi:10.1007/978-1-4612-2626-0 Färe, R., & Grosskopf, S. (1998). Shadow pricing of good and bad commodities. American Journal of Agricultural Economics, 80(3), p. 584-90 (7 pages). doi:10.2307/1244563 Färe, R., Grosskopf, S., & Lovell, C. (1988). Scale Elasticity and Scale Efficiency. Journal of Institutional and Theoretical Economics (JITE), 144( 4 ), p. 721-729. Retrieved from http://www.jstor.org/stable/40751123 Färe, R., Grosskopf, S., & Margaritis, D. (2022). Shadow Pricing in Production Economics. In S. C. Kumbhakar, Handbook of Production Economics (pp. 953-983). Singapore: Springer Nature Singapore. doi:https://doi.org/10.1007/978-981-10-3455-8 Forsund, F. (2015). Economic perspectives on DEA. (D. o. University of Oslo, Ed.) Memorandum(No. 10/2015). Fukuyama, H. (2000). Returns to scale and scale elasticity in data envelopment. European Journal of Operational Research 125, 93.DOI:10.1016/S0377-2217(99)00200-3 Fukuyama, H. (2003). Scale characterisations in a DEA directional technology distance function framework. European Journal of Operational Research, 144, pp. 108–127. https://doi.org/10.1016/S0377-2217(01)00389-7 Fukuyamaa, H., & Weber, W. (2008). Japanese banking inefficiency and shadow pricing. Mathematical and Computer Modelling, 48, pp. 1854–1867. doi:doi:10.1016/j.mcm.2008.03.004 Ghatak, A. (2017). Machine Learning with R. Singapore: Springer Nature. doi:10.1007/978-981-10-6808-9 Guerrero, N., Aparicio, J., & Valero-Carreras, D. (2022). Combining Data Envelopment Analysis and Machine Learning. Mathematics, 10(99). doi:https://doi.org/10.3390/math10060909 Kao, C. (2014). Network Data Envelopment Analysis. Foundation and Extensions (Vol. 240)). Springer. Kuhn, M., & Johnson, K. (2013). Applied Predictive Modelling. New York Heidelberg Dordrecht London: Springer. doi:10.1007/978-1-4614-6849-3 Kwon, H. (2017). Exploring the predictive potential of artificial neural networks in conjunction with DEA in railroad performance modelling. Int. J. Prod. Econ., 183, p. 159–170. doi:https://doi.org/10.1016/j.ijpe.2016.10.022 Liu, H., Chen, T., Chiu, Y., & Kuo, F. (2013). A comparison of three-stage DEA and artificial neural network on the operational efficiency of semi-conductor firms in Taiwan. Mod. Econ, 4, pp. 20–31. doi:10.4236/me.2013.41003 McCulloch, W. S., & Pitts, W. (1943). A Logical Calculus of the Ideas Immanent in Nervous Activity. Bulletin of Mathematical Biophysics, 5(4), p. 115-133. doi:DOI: https://doi.org/10.1007/BF02478259 Misiunas, N., Oztekin, A., & Chandra, K. (2016). DEANN: A healthcare analytic methodology of data envelopment analysis and artificial neural networks for the prediction of organ recipient functional status. Omega, 58, pp. 46–54. doi:https://doi.org/10.1016/j.omega.2015.03.010 Moragues, R., Aparicio, J., & Estev, M. (2023). An unsupervised learning-based generalisation of Data Envelopment Analysis. Operations Research Perspectives, 11. doi:https://doi.org/10.1016/j.orp.2023.100284 Moslemi, S. M. (2021). Integration of neural network and AP-NDEA model for performance evaluation of sustainable pharmaceutical supply chain. OPSEARCH., 59. doi:10.1007/s12597-021-00561-1. Pendharkar, P. (2011). A hybrid radial basis function and data envelopment analysis neural network for classification. Comput. Oper. Res., 38, pp. 256–266. doi:https://doi.org/10.1016/j.cor.2010.05.001 Pinto, C. (2020a). An NDEA Model as Policy Tool to Support Managerial Decisions. International Journal of Business Administration, 3(11). doi: DOI:10.5430/ijba.v11n3p21 Pinto, C. (2020b). Measure the Relative Efficiency of a Four-Stage Production Process with NDEA. International Journal of Business and Management, 15(10). doi:DOI:10.5539/ijbm.v15n10p35 Pinto, C. (2020c). Performance Management When Modelling Internal Structure of a Production Process. International Journal of Business and Management, 7 (15), p. 133-146. doi: DOI:10.5539/ijbm.v15n7p133 Pinto, C. (2024, 7 August). An axiomatic production model for circular directional indirect network technologies with undesirable output production and relational NDEA models. doi:https://doi.org/10.21203/rs.3.rs-4788363/v1 Rosenblatt, F. (1958). The Perceptron: A Probabilistic Model for Information Storage and Organisation in the Brain. Psychological Review, 65(6), p. 386-408. doi:DOI: https://doi.org/10.1037/h0042519 Samoilenko, S., & Osei-Bryson, K. (2010). Determining sources of relative inefficiency in heterogeneous samples: Methodology using Cluster Analysis, DEA and Neural Networks. Eur. J. Oper. Res., 205, pp. 479–487. doi:https://doi.org/10.1016/j.ejor.2010.02.017 Santin, D., Delgado, F., & Valino. (2004). The measurement of technical efficiency: A neural network approach. Appl. Econ., 36. doi:https://doi.org/10.1080/0003684042000217661 Sreekumar, S., & Mahapatra, S. (2011). Performance modelling of Indian business schools: A DEA-neural network approach. Benchmarking Int. J., 18, p. 221–239. doi:https://doi.org/10.1108/14635771111121685 Tosun, Ö. (2012). Using data envelopment analysis–neural network model to evaluate hospital efficiency. Int. J. Product. Qual. Manag., 9, pp. 245–257.https://doi.org/10.1504/IJPQM.2012.045194 Wang, S. (2003). Adaptive non-parametric efficiency frontier analysis: A neural-network-based model. Comput. Oper. Res., 30. doi:https://doi.org/10.1016/S0305-0548(01)00095-8 Wu, D., Yang, Z., & Liang, L. (2006). Using DEA-neural network approach to evaluate branch efficiency of a large Canadian bank. Expert Syst. Appl., 31, pp. 108–115. doi:https://doi.org/10.1016/j.eswa.2005.09.034 Zhang, Z., Xiao, Y., & Niu, H. (2022). DEA and Machine Learning for Performance Prediction. Mathematics, 10(1776.). doi:https://doi.org/ 10.3390/math10101776 Zhu, N., Zhu, C., & Emrouznejad, A. (2021). A combined machine learning algorithms and DEA method for measuring and predicting the efficiency of Chinese manufacturing listed companies. Journal of Management Science and Engineering, 6, pp. 435–448. doi:https://doi.org/10.1016/j.jmse.2020.10.001 |
| URI: | https://mpra.ub.uni-muenchen.de/id/eprint/126539 |

