MODERN MACHINE LEARNING APPROACH FOR VOLLEYBALL WINNING OUTCOME PREDICTION

Authors

  • Dr.T.Chellatamilan, Mr M.Ravichandran, Dr.K.Kamalakkannan Professor, Department of Computer Science and Engineering, Arunai Engineering College, Tiruvannamalai, India Associate Professor, Dept.of Information Technology, Arunai Engineering College, Tiruvannamalai, India Physical Education Director, Arunai Engineering College, Tiruvannamalai, India

Keywords:

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Abstract

In the field of sports analytics, the researchers are interested in doing analysis over the physical and technical performance indicators which supports the competitive sports games for deciding the winning strategies of games. The championship is being achieved through the match results of team skills and technical strategies. In this paper, we performed a simulation study to cluster the volleyball game. The Clustering approach also discovers the hidden interesting patterns of knowledge, activity and predicts the winning/loss outcome strategy of sports game based on the combination of different measures. The evaluation results of our experiment show that, it leads to high accuracy outcome prediction relatively.

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Published

2015-11-30