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Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine Learning

机译:基于机器学习文本分类技术的少年足球运动员运动损伤预测模型

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As the level of soccer in our country has improved rapidly, the level of skill has gradually improved, and the requirements for training of athletes have increased. Due to changes in athlete training methods, it has been decided that athletes must bear a great risk of sports injuries. Accurate prediction of injuries is very important for the development of youth soccer. Based on this, this paper proposes a text classification algorithm based on machine learning and builds a sports injury prediction model that can accurately predict athlete injuries, reduce athlete injuries during training, and be effective. We put forward various sports suitable for young athletes, and put forward some measures to prevent and alleviate athletes’ injuries. This article selects 48 football players from a college of physical education of a university for testing. The athletes participating in the experiment use professional equipment to collect exercise volume and exercise load data, and real-time records of each athlete's physical fitness data within half a year, through the athlete's exercise volume, exercise load, body metabolism, and physical indicators to predict their sports injury. Experiments show that from the degree of injury, it can be seen that the severe injury is the least, with 5 cases of muscle injury, 2 cases of fascia ligament injury, and 1 case of joint injury. There were 25 cases of mild injuries, accounting for 41.0% of the total. This is because the athlete’s sports injury prediction model has better prediction capabilities, allowing athlete coaches and therapists to optimize training courses, ultimately preventing injuries, improving training levels, and reducing rehabilitation costs.
机译:随着我国足球水平迅速提升,技能水平逐渐改善,运动员培训的要求增加了。由于运动员培训方法的变化,已经决定运动员必须承担有巨大的体育伤害风险。对青年足球的发展非常重要预测。基于此,本文提出了一种基于机器学习的文本分类算法,并建立了一种可以准确预测运动员伤害的运动损伤预测模型,减少训练期间的运动员受伤,并有效。我们提出了适合年轻运动员的各种运动,并提出了一些措施,以防止和缓解运动员的伤害。本文从大学体育学院选择48名足球运动员进行测试。参加实验的运动员使用专业设备来收集运动量和运动负荷数据,并在半年内每年的实时记录,通过运动员的运动量,运动负荷,身体新陈代谢和物理指标预测他们的运动伤害。实验表明,从伤害程度,可以看出,严重损伤是最少的,用5例肌肉损伤,2例筋膜韧带损伤,1例接合损伤。有25例轻度伤害,占总数的41.0%。这是因为运动员的体育损伤预测模型具有更好的预测能力,允许运动员的教练和治疗师优化培训课程,最终造成伤害,提高培训水平,降低康复成本。

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