Research on the optimisation of music education curriculum content and implementation path based on big data analysis
e
05 feb 2025
INFORMAZIONI SU QUESTO ARTICOLO
Pubblicato online: 05 feb 2025
Ricevuto: 27 set 2024
Accettato: 06 gen 2025
DOI: https://doi.org/10.2478/amns-2025-0067
Parole chiave
© 2025 Menghan Li et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
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Results of recommended performance indicators for each model
Model | Pre@20 | Recall@20 | NDCG@20 | MRR | AUC |
---|---|---|---|---|---|
MF | 0.11521 | 0.10156 | 0.02516 | 0.01408 | 0.50423 |
HERec | 0.14722 | 0.13489 | 0.05069 | 0.03023 | 0.62355 |
NGCF | 0.18836 | 0.15266 | 0.58996 | 0.04815 | 0.65882 |
ACKRec | 0.19156 | 0.16189 | 0.06251 | 0.05047 | 0.67321 |
MOOCIR | 0.19554 | 0.16205 | 0.06322 | 0.06381 | 0.68011 |
HFCNqh | 0.02131 | 0.18732 | 0.07182 | 0.06852 | 0.72342 |
HFCNqk | 0.19983 | 0.17956 | 0.07134 | 0.06433 | 0.69834 |
HFCNqb | 0.02015 | 0.18090 | 0.07560 | 0.06385 | 0.70705 |
Node2vec | |||||
Improvement (%) | 10.23% | 5.96% | 14.89% | 9.05% | 4.14% |
Partitioning results based on learner interaction data
Data set | Groups | Number of users | Number of courses | Users-courses | Density (%) |
---|---|---|---|---|---|
MOOC music course content recommended data set | (0, 5] | 25510 | 596 | 82694 | 0.61% |
(5, 15] | 4583 | 575 | 34566 | 1.55% | |
(15, 30] | 284 | 432 | 4315 | 4.56% | |
(30, 100] | 42 | 401 | 1675 | 11.05% |