- Amir, E., & Livne, G. (2005). Accounting, Valuation and Duration of Football Player Contracts. Journal of Business Finance & Accounting, 32(3&4), 549-586.
- Bazargan, A. (2015). Introduction to Qualitative and Mixed Research Methods, Common Approaches in Behavioral Sciences. Tehran, Iran: Didar Publication. [Persian]
- Brandes, L., & Franck, E. (2012). Social preferences or personal career concerns? Field evidence on positive and negative reciprocity in the workplace. Journal of Economic Psychology, 33(5), 925-939.
- Brandes, L., Franck, E., & Nüesch, S. (2008). Local heroes and superstars: an empiri- cal analysis of star attraction in German soccer. Journal of Sports Economics, 9(3), 226-286.
- Bryson, A., Frick, B., & Simmons, R. (2012). The returns to scarce talent: footedness and player remuneration in European soccer. Journal of Sports Economics, 14(6), 606-628.
- Carmichael, F., Forrest, D., & Simmons, R. (1999). The labor market in association football: who gets transferred and for how much? Bulletin of Economic Research, 51(2), 125-150.
- Dey, P. k., Banerjee, A., Ghosh, D., N., & Mondal, A., Ch. (2014). AHP-Neural Network Based Player Price Estimation in IPL. International Journal of Hybrid Information Technology, 7(3), 15-24.
- Franck, E., & Nüesch, S. (2011). The effect of wage dispersion on team outcome and the way team outcome is produced. Applied Economics, 43(23), 3037-3049.
- Frick, B. (2007). The football players’ labor market: empirical evidence from the ma- jor European leagues. Scottish Journal of Political Economy, 54(3), 422-446.
- Frick, B. (2011). Performance, salaries, and contract length: empirical evidence from German soccer. International Journal of Sport Finance, 6(2), 87-118.
- Fry, T. R. L., Galanos, G., & Posso, A. (2014). Let’s get Messi? Top-scorer productivity in the European Champions League. Scottish Journal of Political Economy, 61(3), 261-279.
- Garcia-del-Barrio, P., & Pujol, F. (2007). Hidden monopsony rents in winner-take-all markets–Sport and economic contribution of Spanish soccer players. Managerial and Decision Economics, 28(1), 57-70.
- Gerrard, B., & Dobson, S. (2000). Testing for monopoly rents in the market for playing talent–Evidence from English professional football. Journal of Economic Studies, 27(3), 142-164.
- He, M., Cachucho, R., & Knobbe, A. (2015). Football player’s performance and market value. In Proceedings of the 2nd workshop of sports analytics. Paper presented at the European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML PKDD), Retrieved March 14, 2017, from https://dtai.cs. kuleuven.be/events/MLSA15/papers/mlsa15_ submission _ 8.pdf.
- Herm, S., Callsen-Bracker, H.-M., & Kreis, H. (2014). When the crowd evaluates soccer players’ market values: accuracy and evaluation attributes of an online community. Sport Management Review, 17(4), 484-492.
- Izadyar, M., Memari, Z., & Mousavi, M. H. (2016). Pricing Equation for Iranian Premier League Football Players. Journal of Economic Research (Tahghighat-e-Eghtesadi), 51(1), 25-40. [Persian]
- Keefer, Q. A. W. (2017). The sunk-cost fallacy in the national football league. Journal of Sports Economics, 18(3), 282-297.
- KeLin Du, M., & Swamy, N. S. (2013). Neural Networks and Statistical Learning. Springer Science & Business Media.
- Kiefer, S. (2014). The impact of the Euro 2012 on popularity and market value of football players. International Journal of Sport Finance, 9(2), 95-110.
- Lantz, B. (2013). Machine Learning with R: learn how to use R to apply powerful machine learning methods and gain an insight into real-world applications. Birmingham- Mumbai: Packt Publishing.
- Lee, M., Pitts, B., & Quartman, J. (2019). Research Methods in Sport Management. (H. Asadi & A. A. Asefi, Trans. 2 ed.). Tehran: University of Tehran Press.
- Lehmann, E. E., & Schulze, G. G. (2008). What does it take to be a star? The role of performance and the media for German soccer players. Applied Economics Quarterly, 54(1), 59-70.
- Lucifora, C., & Simmons, R. (2003). Superstar effects in sport: evidence from Italian soccer. Journal of Sports Economics, 4(1), 35-55.
- Maier, H. R., Jain, A., Dandy, G. C., & Sudheer, K. P. (2010). Methods used for the development of neural networks for the prediction of water resorce variables in river system: current status and future directions. Environ Softw, 25(8), 891-909.
- Medcalfe, S. (2008). English league transfer prices: is there a racial dimension? A re-examination with new data. Applied Economics Letters, 15(11), 865-867.
- Müller, O., Simons, A., & Weinmann, M. (2017). Beyond crowd judgments: Data-driven estimation of market value in association football. European Journal of Operational Research, 263, 611-624. doi:10.1016/j.ejor.2017.05.005.
- Polti, R. (2005). The football players’ trade as a global commodity chain. Transactional networks from Africa to Europe. The Workshop on Social Networks of Traders and Managers in Africa.
- Razavi, S., & tolson, B. A. (2011). A new formulation for feed forward neural networks. Neural Netw IEEE Trans, 22(10), 1855-1598.
- Rosca, V. (2012). The Financial Contribution of International Footballer Trading to the Romanian Football League and to the National Economy. Theoretical and Applied Economics, 4(569), 145-166.
- Ruijg, J., & van Ophem, H. (2014). Determinants of football transfers. In. Department of Economics & Econometrics: Amsterdam School of Economics.
- Schmeh, K. (2005). Titel, Tore, Transaktionen: Ein Blick hinter die Kulissen des Football- Business. Heidelberg: Redline Wirtschaft.
- Seddon, P. B. (2001). IT Evaluation Revisited: Plus a Change. Proceedings of Eight European. Paper presented at the Conference on Information Technology (ECITE), Oxford, United Kingdom.
- Soltan Hosseini, M., Zebardast, M. A., Nasr Esfahani, D., Amoo Zadeh, Z., & S., H. Z. (2017). Principles of Sports Marketing. Esfahan. Isfahan, Iran: Sana Gostar Publishing. [Persian]
- Tunaru, R. S., & Viney, H. P. (2010). Valuations of Soccer Players from Statistical Performance Data. Journal of Quantitative Analysis in Sports, 6(2), 1-21. doi:10.2202/1559-0410.1238
- Tunaru, R., Clark, E., & Viney, H. (2005). An option pricing framework for valuation of football players. Review of Financial Economics, 14, 281-295. doi:10.1016/j.rfe.2004.11.002
- Yaldo, L., & Shamir, L. (2017). Computational Estimation of Football Player Wages. International Journal of Computer Science in Sport, 16(1), 18-38. doi:10.1515/ijcss-2017-0002.
- Zareian, H., Elahi, A., Sajadi, S. N., Ghazi Zahedi, A. (2015). Games in Rio de Janeiro Using Intelligent Method of Multilayer Perception Networks (MLP). Strategic Studies on Youth and Sport. 14(30): 37-54. [Persian]
- Zhu, F., Lakhani, K. R., Schmidt, S. L., & Herman, K. (2015). TSG Hoffenheim: football in the age of analytics. Harvard Business School Case. Retrieved from http:// www.hbs.edu/ faculty/ Pages/ item.aspx?num=49569.
|