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

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 predi...

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Main Author: Kai He
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mobile Information Systems
Online Access:http://dx.doi.org/10.1155/2021/2955215
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spelling doaj-b9b3a003112d439bac3e92bc782451b22021-06-21T02:25:16ZengHindawi LimitedMobile Information Systems1875-905X2021-01-01202110.1155/2021/2955215Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine LearningKai He0College of Sports Science and Technology of Wuhan Sports UniversityAs 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.http://dx.doi.org/10.1155/2021/2955215
collection DOAJ
language English
format Article
sources DOAJ
author Kai He
spellingShingle Kai He
Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine Learning
Mobile Information Systems
author_facet Kai He
author_sort Kai He
title Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine Learning
title_short Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine Learning
title_full Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine Learning
title_fullStr Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine Learning
title_full_unstemmed Prediction Model of Juvenile Football Players’ Sports Injury Based on Text Classification Technology of Machine Learning
title_sort prediction model of juvenile football players’ sports injury based on text classification technology of machine learning
publisher Hindawi Limited
series Mobile Information Systems
issn 1875-905X
publishDate 2021-01-01
description 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.
url http://dx.doi.org/10.1155/2021/2955215
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