Fallahpour A, Moghassem A (2012) Evaluating applicability of VIKOR method of multi-criteria decision making for parameters selection problem in rotor spinning. Fibers Polym 13:802–808
Kuo R, Hsu C, Chen Y (2015) Integration of fuzzy ANP and fuzzy TOPSIS for evaluating carbon performance of suppliers. Int J Environ Sci Technol 1–14. doi:10.1007/s13762-015-0819-9
Vahdani B, Iranmanesh S, Mousavi SM, Abdollahzade M (2012) A locally linear neuro-fuzzy model for supplier selection in cosmetics industry. Appl Math Model 36:4714–4727
Fallahpour A, Olugu EU, Musa SN, Khezrimotlagh D, Wong KY (2015) An integrated model for green supplier selection under fuzzy environment: application of data envelopment analysis and genetic programming approach. Neural Comput Appl 1–19. doi:10.1007/s00521-015-1890-3
Golmohammadi D (2011) Neural network application for fuzzy multi-criteria decision making problems. Int J Prod Econ 131:490–504
Güneri AF, Ertay T, YüCel A (2011) An approach based on ANFIS input selection and modeling for supplier selection problem. Expert Syst Appl 38:14907–14917
Golmohammadi D, Creese RC, Valian H, Kolassa J (2009) Supplier selection based on a neural network model using genetic algorithm. IEEE Trans Neural Netw 20:1504–1519
Azadeh A, Saberi M, Anvari M (2011) An integrated artificial neural network fuzzy C-means-normalization algorithm for performance assessment of decision-making units: the cases of auto industry and power plant. Comput Ind Eng 60:328–340
Kuo R, Hong S, Huang Y (2010) Integration of particle swarm optimization-based fuzzy neural network and artificial neural network for supplier selection. Appl Math Model 34:3976–3990
Özkan G, İnal M (2014) Comparison of neural network application for fuzzy and ANFIS approaches for multi-criteria decision making problems. Appl Soft Comput 24:232–238
Fallahpour A, Olugu EU, Musa SN, Khezrimotlagh D, Singh S (2014) Supplier selection under fuzzy environment: a hybrid model using KAM in DEA. In: Emrouznejad A, Banker R, Doraisamy SM, Arabi B (eds) Recent developments in data envelopment analysis and its applications, pp 342–348
Oztaysi B (2014) A decision model for information technology selection using AHP integrated TOPSIS-Grey: the case of content management systems. Knowl Based Syst 70:44–54
Deng X, Hu Y, Deng Y, Mahadevan S (2014) Supplier selection using AHP methodology extended by D numbers. Expert Syst Appl 41:156–167
Mikhailov L, Tsvetinov P (2004) Evaluation of services using a fuzzy analytic hierarchy process. Appl Soft Comput 5:23–33
Oltean M, Dumitrescu D (2002) Multi expression programming, unpublished. http://www.mep.cs.ubbcluj.ro/papers.htm
Hossein A, Alavi A, Mollahasani A, Hossein Gandomi J, Boluori Bazaz J (2012) Formulation of secant and reloading soil deformation moduli using multi expression programming. Eng Comput 29:173–197
Alavi AH, Gandomi AH, Sahab MG, Gandomi M (2010) Multi expression programming: a new approach to formulation of soil classification. Eng Comput 26:111–118
Çelebi D, Bayraktar D (2008) An integrated neural network and data envelopment analysis for supplier evaluation under incomplete information. Expert Syst Appl 35:1698–1710
Kuo RJ, Wang YC, Tien FC (2010) Integration of artificial neural network and MADA methods for green supplier selection. J Clean Prod 18:1161–1170
Lima FR, Junior L, Osiro LCR Carpinetti (2013) A fuzzy inference and categorization approach for supplier selection using compensatory and non-compensatory decision rules. Appl Soft Comput 13:4133–4147
Emrouznejad A, Shale E (2009) A combined neural network and DEA for measuring efficiency of large scale datasets. Comput Ind Eng 56:249–254
Smith GN (1986) Probability and statistics in civil engineering: an introduction. Collins, London
Mostafavi ES, Mostafavi SI, Jaafari A, Hosseinpour F (2013) A novel machine learning approach for estimation of electricity demand: an empirical evidence from Thailand. Energy Convers Manag 74:548–555