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Abstract
Wireless technologies provide a wide variety of unique characteristics geared toward various purposes and demands. It allows billions of people to use the Internet in the current information age and benefit from the modern digital economy and digital technology. Theoretical and practical implications of discussing how to apply the wireless communications network to the study of volleyball strategies have great significance. In line with the significance of data mining and wireless communication networks, we proposed a Markov-based model for the technical and tactic analysis of volleyball games along with the strategy to extract the key elements of winning volleyball games. The computerized solution to the problem of finding the key factors to make changes in volleyball games is mandatory and wireless communication has a pivotal role in this context. In data acquisition, the speed of retrieval increases by frequently searching for records to meet real-time requirements for location capturing. In data processing, due to the problem of data ambiguity caused by the rules of the game of volleyball, the solution is accepted to process data separately by setting a threshold for the rate of global change. This study shows that the proposed design emphasizes the order and efficiency of the project. Therefore, a Markov-style approach is adapted using data mining for technical and tactical analysis of volleyball matches and the results of our proposed approach outperform the existing techniques and approaches.
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Anhui Technical College of Industry and Economy, Hefei, 230051, China
Yizhi Chen & Kaiyan Ye
- Yizhi Chen
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- Kaiyan Ye
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Chen, Y., Ye, K. A wireless network based technical and tactical analysis of volleyball game based on data mining techniques.Wireless Netw29, 161–172 (2023). https://doi.org/10.1007/s11276-022-03100-y
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