Subject Areas : Computer Engineering
Shahin Rajaei Qazlue 1 , Ahmad Mehrabian 2 , Kaveh Khalili-Damghani 3 , Mohammad Amirkhan 4
1 - Department of Industrial Engineering, Aliabad Katoul Branch, Islamic Azad University, Aliabad Katoul, Iran.
2 - Department of Industrial Engineering, Aliabad Katoul Branch, Islamic Azad University, Aliabad Katoul, Iran
3 - Department of Industrial Engineering, South Tehran Branch, Islamic Azad University, Tehran, Iran
4 - Department of Industrial Engineering, Aliabad Katoul Branch, Islamic Azad University, Aliabad Katoul, Iran.
Keywords:
Abstract :
- Charnes, A., Cooper, W. and Rods, E., 1978. Measuring the efficiency of decision-making units. European Journal of Operational Research, 2(6), pp.429-444.
- Helfland, S. and Levine, E., 2004. Farm size and the determinants of productive efficiency in the Brazilian Center-West. Agricultural Economics, 31(2-3), pp.241-249.
- Sueyoshi, T. and Sekitani, K., 2005. Returns to scale in dynamic DEA. European Journal of Operational Research, 161(2), pp.536-544.
- Cui, Q., Wei, Y. and Li, Y., 2016. Exploring the impacts of the EU ETS emission limits on airline performance via the Dynamic Environmental DEA approach. Applied Energy, 183, pp.984-994.
- Sueyoshi, T., Hasebe, T., Ito, F., Sakai, J. and Ozawa, W., 1998. DEA-Bilateral Performance Comparison: An Application to Japan Agricultural Co-operatives (Nokyo). Omega, 26(2), pp.233-248.
- Frija, A., Wossink, A., Buysse, J., Speelman, S. and Van Huylenbroeck, G., 2011. Irrigation pricing policies and its impact on agricultural inputs demand in Tunisia: A DEA-based methodology. Journal of Environmental Management, 92(9), pp.2109-2118.
- Toma, E., Dobre, C., Dona, I. and Cofas, E., 2015. DEA Applicability in Assessment of Agriculture Efficiency on Areas with Similar Geographically Patterns. Agriculture and Agricultural Science Procedia, 6, pp.704-711.
- Angulo-Meza, L., González-Aray, M., Iriarte, A., Rebolledo-Leiva, R. and Soares de Mello, J., 2017. A multi objective DEA model to assess the eco-efficiency of agricultural practices within the CF + DEA method. Computers and Electronics in Agriculture, 161, pp.151-161.
- Li, N., Jiang, Y., Mu, H. and Yu, Z., 2018. Efficiency evaluation and improvement potential for the Chinese agricultural sector at the provincial level based on data envelopment analysis (DEA). Energy, 164, pp.1145-1160.
- Chen, Y., Miao, J. and Zhu, Z., 2023. Measuring green total factor productivity of China's agricultural sector: A three-stage SBM-DEA model with non-point source pollution and CO2 emissions. Journal of Cleaner Production, 318, p.128543.
- Wu, H., Wang, B., Lu, M., Irfan, M., Miao, X., Luo, S., and Hao, Y., 2023. The strategy to achieve zero‑carbon inagricultural sector: Does digitalization matter under the background of COP26 targets? Energy Economics, 126, 106916.
- Hassan, W., Hao, G., Yasmeen, R., Yan, H., 2023. Role of China's agricultural water policy reforms and production technology heterogeneity on agriculture water usage efficiency and total factor productivity change. Agricultural Water Management, 287, 108429
- Chen, Y., Cook, W., Kao, C. and Zhu, J., 2013. Network DEA pitfalls: Divisional efficiency and frontier projection under general network structures. European Journal of Operational Research, 226(3), pp.507-515.
- Färe, R. and Grosskopf, S., 2000. Network DEA. Socio-Economic Planning Sciences, 34(1), pp.35-49.
- Yang, Z., 2006. A two-stage DEA model to evaluate the overall performance of Canadian life and health insurance companies. Mathematical and Computer Modelling, 43(7-8), pp.910-919.
- Yu, M. and Lin, E., 2008. Efficiency and effectiveness in railway performance using a multi-activity network DEA model. Omega, 36(6), pp.1005-1017.
- Yu, M. and Fan, C., 2009. Measuring the performance of multimode bus transit: A mixed structure network DEA model. Transportation Research Part E: Logistics and Transportation Review, 45(3), pp.501-515.
- Yang, W., Shao, Y., Qiao, H. and Wang, S., 2014. An Empirical Analysis on Regional Technical Efficiency of Chinese Steel Sector based on Network DEA Method. Procedia Computer Science, 31, pp.615-624.
- Zhang, W., Wu, X., and Shi, J., 2023. Cross efficiency model of network DEA and its application on low carbon efficiency evaluation of multimodal transport. Ocean & Coastal Management, 244, 106778.
- Meng, M., Pang, T., and Li, X., 2023. Assessing the total factor productivity of China’s thermal power industry using a network DEA approach with cross-efficiency. Energy Reports, 9, 5196–5205.
- Khalili-Damghani, K. and Shahmir, Z., 2015. Uncertain network data envelopment analysis with undesirable outputs to evaluate the efficiency of electricity power production and distribution processes. Computers & Industrial Engineering, 88, pp.131-150.
- Keskin, N., 2023. An illustration of dynamic network DEA in commercial banking including robustness tests. Omega, 55, pp.141-150.
- Liu, Q., Shang, J., Wang, J., Niu, W., and Qiao, W., 2023. Evaluation and prediction of the safety management efficiency of coal enterprises based on a DEA-BP neural network. Resources Policy, 83, 103611.
- Gao, X., Ye, Y., Su, W., and Chen, L., 2023. Assessing the comprehensive importance of power grid nodes based on DEA. International Journal of Critical Infrastructure Protection, 42, 100614.
- Tone, K. and Tsutsui, M., 2010. Dynamic DEA: A slacks-based measure approach☆. Omega, 38(3-4), pp.145-156.
- Khalili-Damghani, K., Tavana, M., Santos-Arteaga, F. and Mohtasham, S., 2015. A dynamic multi-stage data envelopment analysis model with application to energy consumption in the cotton industry. Energy Economics, 51, pp.320-328.
- Chen, L. and Wang, K., 2022. spatial spillover effect of low-carbon city pilot scheme on green efficiency in China's cities: Evidence from a quasi-natural experiment. Energy Economics, 110, p.106018.
- Wang, Z., Zhang, Z. and Johny, N., 2023. Measurement of innovation resource allocation enterprises. Kybernetes, 49(3), pp.835-851.
- Gan, L., Wan, X., Ma, Y., and Lev, B., 2023. Efficiency evaluation for urban industrial metabolism through the methodologies of emerge analysis and dynamic network stochastic block model. Sustainable Cities and Society, 90, 104396.
- Tone, K. and efficiency in civil–military integration Tsutsui, M., 2014. Dynamic DEA with network structure: A slacks-based measure approach. Omega, 42(1), pp.124-131.
- Kao, H., Wu, D. and Huang, C., 2017. Evaluation of cloud service industry with dynamic and network DEA models. Applied Mathematics and Computation, 315, pp.188-202.
- Tavana, M., Khalili-Damghani, K., Santos Arteaga, F. and Hosseini, A., 2019. A fuzzy multi-objective multi-period network DEA model for efficiency measurement in oil refineries. Computers & Industrial Engineering, 135, pp.143-155.
- Yu, A., Shi, Y., You, J. and Zhu, J., 2021. Innovation performance evaluation for high-tech companies using a dynamic network data envelopment analysis approach. European Journal of Operational Research, 292(1), pp.199-212.
- Gazori-Nishabori, A., Khalili-Damghani, K. and Hafezalkotob, A., 2022. A Nash bargaining game data envelopment analysis model for measuring efficiency of dynamic multi-period network structures. Journal of Modelling in Management
- Luo, K., Liu, Y., Chen, P. and Zeng, M., 2023. Assessing the impact of digital economy on green development efficiency in the Yangtze River Economic Belt. Energy Economics, p.1061