An Intelligent Classification Method for Online Resource Data of College Language Teaching Based on Deep Reinforcement Learning
oraz
29 wrz 2025
O artykule
Data publikacji: 29 wrz 2025
Otrzymano: 28 gru 2024
Przyjęty: 17 kwi 2025
DOI: https://doi.org/10.2478/amns-2025-1134
Słowa kluczowe
© 2025 Jing Dong and Zhuyun Wang, published by Sciendo.
This work is licensed under the Creative Commons Attribution 4.0 International License.
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Evaluation for the college Chinese online teaching resource classification of DRML model
| Index | Evaluation score (percentage) | ||||||
|---|---|---|---|---|---|---|---|
| -2 | -1 | 0 | 1 | 2 | 1/2 | Mean | |
| Classification accuracy | 1.79% | 4.91% | 12.14% | 54.76% | 26.40% | 81.16% | 0.99 |
| Resource quality | 0.19% | 2.31% | 10.45% | 55.82% | 31.23% | 87.05% | 1.16 |
| Classification speed | 0.38% | 4.14% | 12.42% | 53.69% | 29.37% | 83.06% | 1.08 |
| Result clarity | 0.97% | 2.45% | 12.36% | 51.28% | 32.94% | 84.22% | 1.13 |
| Learning difficulty | 1.72% | 2.47% | 20.40% | 57.05% | 18.36% | 75.41% | 0.88 |
| Acquisition difficulty | 0.18% | 2.74% | 21.58% | 53.32% | 22.18% | 75.50% | 0.95 |
| Efficiency improvement | 1.32% | 2.07% | 15.79% | 57.07% | 23.75% | 80.82% | 1.00 |
| Tool efficiency | 1.64% | 4.80% | 16.60% | 46.04% | 30.92% | 76.96% | 1.00 |
| Adopt willingness | 1.18% | 3.27% | 11.36% | 47.99% | 36.20% | 84.19% | 1.15 |
| Using willingness | 0.39% | 1.87% | 11.89% | 54.68% | 31.17% | 85.85% | 1.14 |
Ablation experiment results (%)
| Dataset | P@k | Static | Dynamic | Difference |
|---|---|---|---|---|
| Eurlex-4k | P@1 | 85.46 | 89.63 | +4.17 |
| P@3 | 74.59 | 78.45 | +3.86 | |
| P@5 | 66.32 | 67.96 | +1.64 | |
| AmazonCat-13k | P@1 | 84.26 | 87.58 | +3.32 |
| P@3 | 73.94 | 75.68 | +1.74 | |
| P@5 | 67.06 | 69.33 | +2.27 | |
| Wiki10-31k | P@1 | 87.16 | 89.56 | +2.40 |
| P@3 | 76.49 | 80.02 | +3.53 | |
| P@5 | 69.28 | 70.63 | +1.35 |
Relationship between emotion, label semantic features and classification performance (%)
| Dataset | P@k | Emotion feature | Label semantic feature | Difference |
|---|---|---|---|---|
| Eurlex-4k | P@1 | 85.95 | 89.42 | +3.47 |
| P@3 | 76.42 | 79.12 | +2.70 | |
| P@5 | 66.37 | 68.15 | +1.78 | |
| AmazonCat-13k | P@1 | 94.86 | 98.43 | +3.57 |
| P@3 | 84.25 | 86.44 | +2.19 | |
| P@5 | 68.36 | 69.75 | +1.39 | |
| Wiki10-31k | P@1 | 89.45 | 91.64 | +2.19 |
| P@3 | 79.64 | 81.06 | +1.42 | |
| P@5 | 69.63 | 70.87 | +1.24 |
Comparison of classification accuracy of different methods (%)
| Method | miniImageNet | tieredImageNet | QHGIM |
|---|---|---|---|
| ProroNet | 69.48 | 75.46 | 73.52 |
| RelationNet | 70.56 | 75.08 | 70.63 |
| SimCLR | 81.03 | 80.12 | 76.28 |
| SimSiam | 81.89 | 83.44 | 78.49 |
| TPMN | 85.65 | 85.47 | 80.36 |
| RE-Net | 84.74 | 84.23 | 80.07 |
| ProroNet+Swin | 75.64 | 78.55 | 74.68 |
| BML | 77.42 | 84.64 | 83.59 |
| SUN | 85.79 | 87.09 | 83.66 |
| DRML | 88.96 | 90.41 | 89.73 |
Comparison experiment of DRML and other reference models (%)
| Algorithm | Eurlex-4k | AmazonCat-13k | Wiki10-31k | ||||||
|---|---|---|---|---|---|---|---|---|---|
| P@1 | P@3 | P@5 | P@1 | P@3 | P@5 | P@1 | P@3 | P@5 | |
| PfastreXML | 74.91 | 73.45 | 57.02 | 92.31 | 78.04 | 63.56 | 82.84 | 69.88 | 60.11 |
| DisMec | 83.90 | 72.02 | 61.15 | 97.46 | 81.12 | 67.48 | 85.79 | 74.92 | 64.88 |
| Parabel | 81.41 | 70.49 | 55.96 | 94.05 | 78.89 | 64.11 | 85.89 | 75.67 | 59.42 |
| SLEEC | 88.01 | 71.57 | 58.40 | 96.69 | 79.84 | 61.33 | 86.40 | 79.60 | 69.35 |
| XML-CNN | 83.18 | 65.77 | 54.59 | 91.73 | 82.04 | 66.88 | 87.02 | 75.89 | 61.37 |
| LAHA | 80.37 | 69.04 | 58.53 | 94.92 | 80.16 | 65.78 | 85.24 | 76.39 | 62.87 |
| AttentionXML | 81.86 | 77.95 | 62.62 | 95.13 | 85.16 | 66.60 | 85.94 | 79.63 | 60.45 |
| X-Transformer | 74.34 | 78.36 | 62.51 | 93.60 | 83.38 | 69.18 | 88.12 | 80.70 | 70.51 |
| APLC-XLNet | 81.14 | 68.85 | 58.15 | 97.25 | 79.49 | 69.54 | 84.75 | 77.78 | 64.17 |
| LightXML | 89.39 | 66.34 | 64.22 | 94.58 | 86.73 | 65.18 | 89.86 | 81.14 | 64.82 |
| DRML | 90.25 | 80.56 | 69.74 | 98.71 | 86.47 | 71.22 | 91.04 | 82.43 | 71.53 |
