Vol.66, No.1, 2021, pp.691-706, doi:10.32604/cmc.2020.012542
Analysis of the Smart Player’s Impact on the Success of a Team Empowered with Machine Learning
  • Muhammad Adnan Khan1,*, Mubashar Habib1, Shazia Saqib1, Tahir Alyas1, Khalid Masood Khan1, Mohammed A. Al Ghamdi2, Sultan H. Almotiri2
1 Lahore Garrison University, Lahore, 54792, Pakistan
2 Computer Science Department, Umm Al-Qura University, Makkah City, 715, Saudi Arabia
* Corresponding Author: Muhammad Adnan Khan. Email: madnankhan@lgu.edu.pk
Received 03 July 2020; Accepted 03 August 2020; Issue published 30 October 2020
The innovation and development in data science have an impact in all trades of life. The commercialization of sport has encouraged players, coaches, and other concerns to use technology to be in better position than r their opponents. In the past, the focus was on improved training techniques for better physical performance. These days, sports analytics identify the patterns in the performance and highlight strengths and weaknesses of potential players. Sports analytics not only predict the performance of players in the near future but it also performs predictive modeling for a particular behavior of a player in the past. The impact of a smart player on the success of a team is always a big question mark before the start of a match. The fans always want to know performance analysis of these superstar players and they always are interested to get to know more about their favorite player and they always have high hopes from their favorite player. Machine learning (ML) based techniques help in predicting the performance of an individual player as well as for the whole team. The statistics are very vital and useful for management, fans, and expert analysis. In our proposed framework, the adaptive back propagation neural network (ABPNN) model is used for the prediction of a player’s performance. The data is collected from football websites, and the results are stored in the cloud for fast fetching of data. They can be retrieved anywhere in the world through cloud storage. The results are computed with 94% accuracy and the performance of the smart player is formulated for the success of a team.
Machine learning; adaptive feed forwarded neural network; adaptive back propagation neural network; cloud computing; fetching
Cite This Article
M. A. Khan, M. Habib, S. Saqib, T. Alyas, K. M. Khan et al., "Analysis of the smart player’s impact on the success of a team empowered with machine learning," Computers, Materials & Continua, vol. 66, no.1, pp. 691–706, 2021.
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