Physical Health Data Analysis of Youth Sports Based on Cloud Computing and Gait Perception
27 lut 2025
O artykule
Data publikacji: 27 lut 2025
Otrzymano: 11 paź 2024
Przyjęty: 28 sty 2025
DOI: https://doi.org/10.2478/amns-2025-0100
Słowa kluczowe
© 2025 Ming Lei, published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
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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 |
---|---|---|---|---|
Top1 | 76.23% | 90.12% | 98.88% | |
Top3 | 78.33% | 92.63% | 98.92% | |
Top5 | 79.33% | 93.18% | 99.99% | |
76.17% | 90.05% | 98.81% | ||
Top3 | 78.29% | 92.36% | 99.23% | |
Top5 | 79.65% | 93.07% | 99.91% | |
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% |