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Meta-path Based Neighbors for Behavioral Target Generalization in Sequential Recommendation
Journal article
Chen, Junyang, Gong, Zhiguo, Li, Yuanman, Zhang, Huanjian, Yu, Hongyong, Zhu, Junzhang, Fan, Ge, Wu, Xiao Ming, Wu, Kaishun. Meta-path Based Neighbors for Behavioral Target Generalization in Sequential Recommendation[J]. IEEE Transactions on Network Science and Engineering, 2022, 9(3), 1658-1667.
Authors:
Chen, Junyang
;
Gong, Zhiguo
;
Li, Yuanman
;
Zhang, Huanjian
;
Yu, Hongyong
; et al.
Favorite
|
TC[WOS]:
15
TC[Scopus]:
19
IF:
6.7
/
6.0
|
Submit date:2022/05/17
Behavioral Target Generalization
Sequential Recommendation
Ctr Prediction
Recommender Systems
A novel hybrid deep recommendation system to differentiate user’s preference and item’s attractiveness
Journal article
Zhang, X., Liu, H., Chen, X. Y., Zhong, J., Wang, D.. A novel hybrid deep recommendation system to differentiate user’s preference and item’s attractiveness[J]. Information Sciences (Impact factor: 5.910, Q1), 2020, 519, 306-316.
Authors:
Zhang, X.
;
Liu, H.
;
Chen, X. Y.
;
Zhong, J.
;
Wang, D.
Favorite
|
TC[WOS]:
33
TC[Scopus]:
49
IF:
0
/
0
|
Submit date:2022/08/29
Probabilistic Matrix Factorization
Deep Learning
Recommendation Systems
A novel hybrid deep recommendation system to differentiate user's preference and item's attractiveness
Journal article
Zhang, Xiaofeng, Liu, Huijie, Chen, Xiaoyun, Zhong, Jingbin, Wang, Di. A novel hybrid deep recommendation system to differentiate user's preference and item's attractiveness[J]. Information Sciences, 2020, 519, 306-316.
Authors:
Zhang, Xiaofeng
;
Liu, Huijie
;
Chen, Xiaoyun
;
Zhong, Jingbin
;
Wang, Di
Favorite
|
TC[WOS]:
33
TC[Scopus]:
49
IF:
0
/
0
|
Submit date:2021/12/06
Probabilistic Matrix Factorization
Deep Learning
Recommendation Systems
Towards Personalized Learning Through Class Contextual Factors-Based Exercise Recommendation
Conference paper
Huo, Yujia, Xiao, Jiang, Ni, Lionel M.. Towards Personalized Learning Through Class Contextual Factors-Based Exercise Recommendation[C], 2019, 85-92.
Authors:
Huo, Yujia
;
Xiao, Jiang
;
Ni, Lionel M.
Favorite
|
TC[WOS]:
9
TC[Scopus]:
12
|
Submit date:2022/04/15
Attribute-based Recommendation
Learning Remediation
Performance Prediction
Personalized Learning
Q-matrix
Recommender Systems