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Physical Health Data Analysis of Youth Sports Based on Cloud Computing and Gait Perception

  
27. Feb. 2025

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COVER HERUNTERLADEN

Figure 1.

Overall architecture of cloud computing.
Overall architecture of cloud computing.

Figure 2.

Workflow of random forest algorithm.
Workflow of random forest algorithm.

Figure 3.

Cloud computing framework of physical health data for youth sports
Cloud computing framework of physical health data for youth sports

Figure 4.

Improved sampling method.
Improved sampling method.

Figure 5.

Block diagram of feature merging process
Block diagram of feature merging process

Figure 6.

Analysis process of adolescents’ physical health data
Analysis process of adolescents’ physical health data

Figure 7.

Sorting of influencing factors of physical health data of competitive youth sports analyzed by improved random forest algorithm.
Sorting of influencing factors of physical health data of competitive youth sports analyzed by improved random forest algorithm.

Figure 8.

Sorting of influencing factors of physical health data of wrestling youth sports analyzed by improved random forest algorithm.
Sorting of influencing factors of physical health data of wrestling youth sports analyzed by improved random forest algorithm.

Figure 9

Sorting of influencing factors of physical health data of skill youth sports analyzed by improved random forest algorithm
Sorting of influencing factors of physical health data of skill youth sports analyzed by improved random forest algorithm

Comparison of Performance Indexes of Random Forest Algorithm Before and After Improvement

Algorithm Training time Precision Recall F1 value Accuracy
Random forest 128.26s 85.26% 85.47% 85.61% 86.74%
Improved random forest 110.14s 99.81% 99.56% 99.15% 99.92%

Data examples

Serial number Height (cm) Weight (kg) 50m dash time (s) Mean grip strength (kg)
1 153.23 48.26 8.9 20.36
2 156.78 51.29 9.1 21.05
3 161.29 55.30 8.7 22.68

Comparison of Performance Indexes of Random Forest Algorithm Before and After Improvement of Decision Tree Feature Splitting Method

Decision tree feature splitting method Training time Precision Recall F1 value Accuracy
CART 126.33s 84.33% 85.28% 84.31% 83.28%
ID3 128.26s 85.26% 85.47% 85.61% 86.74%
Multiple splitting method 58.36s 90.11% 90.26% 90.55% 90.27%

Comparison of Performance Indexes of Different Methods

Algorithm Training time Precision Recall F1 value Accuracy
Logistic regression 155.37s 76.14% 76.22% 76.41% 75.08%
LightGBM 50.28s 91.23% 91.62% 92.27% 92.39%
Improved random forest 110.14s 99.81% 99.56% 99.15% 99.92%

Analysis Results of Different Algorithms on Physical Health Data of Different Categories of Youth Sports

Category Accuracy Logistic regression LightGBM Improved random forest
Competitive football Top1 76.23% 90.12% 98.88%
Top3 78.33% 92.63% 98.92%
Top5 79.33% 93.18% 99.99%
Wrestling Top1 76.17% 90.05% 98.81%
Top3 78.29% 92.36% 99.23%
Top5 79.65% 93.07% 99.91%
Sports acrobatics Top1 74.32% 90.91% 98.23%
Top3 76.48% 92.76% 99.24%
Top5 78.91% 93.66% 99.78%

Comparison of Various Performance Indexes of Random Forest Algorithm Before and After Improvement of Sampling Mode

Sampling mode Training time Precision Recall F1 value Accuracy
Bootstrap 128.26s 85.26% 85.47% 85.61% 86.74%
Improved random forests 142.39s 98.23% 98.14% 98.06% 98.41%
Sprache:
Englisch
Zeitrahmen der Veröffentlichung:
1 Hefte pro Jahr
Fachgebiete der Zeitschrift:
Biologie, Biologie, andere, Mathematik, Angewandte Mathematik, Mathematik, Allgemeines, Physik, Physik, andere