Telecommunications Science ›› 2022, Vol. 38 ›› Issue (10): 89-97.doi: 10.11959/j.issn.1000-0801.2022266
• Research and Development • Previous Articles Next Articles
Nan JIN1, Ruiqin WANG1,2, Yuecong LU1
Revised:
2022-09-28
Online:
2022-10-20
Published:
2022-10-01
Supported by:
CLC Number:
Nan JIN, Ruiqin WANG, Yuecong LU. Ebbinghaus forgetting curve and attention mechanism based recommendation algorithm[J]. Telecommunications Science, 2022, 38(10): 89-97.
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模型 | FilmTrust | MovieLens 100K | MovieLens 1M | MovieLens Last | |||||||
MAE | RMSE | MAE | RMSE | MAE | RMSE | MAE | RMSE | ||||
ItemCF | 0.657 3 | 0.882 4 | 0.749 1 | 0.969 7 | 0.731 3 | 0.955 6 | 0.818 1 | 1.041 3 | |||
PMF | 0.640 5 | 0.823 1 | 0.753 2 | 0.933 5 | 0.735 6 | 0.897 1 | 0.685 4 | 0.894 2 | |||
MLP | 0.648 2 | 0.824 2 | 0.725 0 | 0.929 6 | 0.692 8 | 0.880 0 | 0.667 2 | 0.871 9 | |||
SVD | 0.634 6 | 0.822 8 | 0.746 7 | 0.922 3 | 0.721 8 | 0.907 5 | 0.665 2 | 0.852 3 | |||
GCN | 0.631 7 | 0.815 7 | 0.700 3 | 0.896 2 | 0.689 2 | 0.862 2 | 0.651 6 | 0.848 0 | |||
NeuMF | 0.632 6 | 0.810 6 | 0.712 3 | 0.906 2 | 0.687 6 | 0.859 3 | 0.650 2 | 0.849 8 | |||
DeepCF | 0.632 0 | 0.817 4 | 0.698 0 | 0.895 0 | 0.668 8 | 0.852 4 | 0.647 6 | 0.842 5 | |||
TAMMF | 0.622 0 | 0.803 0 | 0.697 2 | 0.893 3 | 0.667 1 | 0.846 9 | 0.644 7 | 0.838 8 | |||
TAMMF+ | 0.614 3 | 0.798 8 | 0.694 9 | 0.888 9 | 0.662 8 | 0.845 6 | 0.631 8 | 0.832 2 |
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数据集 | 性能 | size=32 | size=64 | size=128 | size=256 |
FilmTrust | RMSE | 0.812 6 | 0.807 6 | 0.798 8 | 0.802 6 |
MAE | 0.623 3 | 0.619 3 | 0.614 3 | 0.617 3 | |
ML-100K | RMSE | 0.906 1 | 0.896 1 | 0.888 9 | 0.894 9 |
MAE | 0.708 1 | 0.698 9 | 0.694 9 | 0.698 2 | |
ML-Last | RMSE | 0.846 1 | 0.836 4 | 0.832 2 | 0.834 4 |
MAE | 0.656 3 | 0.636 1 | 0.631 8 | 0.639 1 | |
ML-1M | RMSE | 0.853 4 | 0.843 4 | 0.845 6 | 0.848 4 |
MAE | 0.681 0 | 0.669 0 | 0.662 8 | 0.666 0 |
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