Abstract
Objective: In the competition of athletic training, it is imperative to use various physiological and biochemical indicators to study the changes they can bear. Methods: In this paper, national tennis players’physiological and biochemical indicators are taken as samples, and Artificial Neural Network (ANN) in data mining algorithm is used to classify and predict the sample data. Based on this, to solve the BP neural network’s failure in easily falling into a local minimum, the ant colony optimization (ACO) algorithm was introduced to train the changes in the neural network. Finally, the improved BP neural network technology of the ant colony optimization algorithm is used in the model to analyze the physiological changes in tennis players. Results: The research results show that the model successfully predicted the physiological change in athletes and could provide coaches with a basis for decision-making. Conclusions: The physiological change in athletes is combined with the neural network algorithm to establish a connection between the two, which provides an effective and reliable method for detecting the physical function of sports transportation with unique guidance in athletes’ training and competition. Level of evidence II; Therapeutic studies-investigation of treatment results.
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CITATION STYLE
Tan, X., & Song, M. (2022). CHARACTERISTICS OF PHYSIOLOGICAL CHANGES IN ATHLETE TRAINING BASED ON THE DATA MINING ALGORITHM. Revista Brasileira de Medicina Do Esporte, 28(5), 386–389. https://doi.org/10.1590/1517-8692202228052021_0533
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