A HYBRID RECOMMENDATION MODEL FOR ONLINE LEARNING, 453-459.

Xiaolu Hu, Tingyao Jiang, and Min Wang

References

  1. [1] N. Manouselis and C. Costopoulou, Analysis and classificationof multi-criteria recommender systems, World Wide Web,10(4), 2007, 415–441.
  2. [2] J. Shu, X. Shen, H. Liu, B. Yi, and Z. Zhang, A content-basedrecommendation algorithm for learning resources, MultimediaSystems, 24(2), 2018, 163–173.
  3. [3] C.D. Wang, Z.H. Deng, J.H. Lai, and P.S. Yu, Serendipitousrecommendation in E-commerce using innovator-based collab-orative filtering, IEEE Transactions on Cybernetics, 49(7),2018, 2678–2692.458
  4. [4] S. Renckes, H. Polat, and Y. Oysal, A new hybrid recommen-dation algorithm with privacy, Expert Systems, 29(1), 2012,39–55.
  5. [5] A. Zhu and Y. Chen, A machine-learning-based algo-rithm for detecting a moving object, International Jour-nal of Robotics and Automation, 31(5), 2016, doi:10.2316/Journal.206.2016.5.206-4698.
  6. [6] Z. Gai, D. Liu, F. Chang, and N. Li, Abnormal crowd behaviourdetection based on deep learning and sparse representation,International Journal of Robotics and Automation, 35(4),2020, doi:10.2316/J.2020.206-0325.
  7. [7] S. Rendle, Factorization machines, Proc. 10th IEEE Interna-tional Conf. on Data Mining, Sydney, AU, 2010, 995–1000.
  8. [8] H. Cheng, L. Koc, J. Harsen, T. Shaked, et al., Wide & deeplearning for recommender systems, Proc. 1st Workshop onDeep Learning for Recommender Systems, Boston, US, 2016,7–10.
  9. [9] H. Guo, R. Tang, Y. Ye, Z. Li, and X. He, DeepFM: Afactorization-machine based neural network for CTR predic-tion, Proc. 26th International Joint Conf. on Artificial Intel-ligence, Melbourne, AU, 2017, 1725–1731.
  10. [10] J. Lian, X. Zhou, F. Zhang, Z. Chen, X. Xie, and G. Sun,xDeepFM: Combining explicit and implicit feature interactionsfor recommender systems, Proc. 24th ACM SIGKDD Inter-national Conference on Knowledge Discovery & Data Mining,London, UK, 2018, 1754–1763.
  11. [11] G. Zhou, N. Mou, Y. Fan, Q. Pi, and K. Gai, Deep interestevolution network for click-through rate prediction, Proc. 33rdAAAI Conf. on Artificial Intelligence, Honolulu, US, 33, 2019,5941–5948.
  12. [12] S. Baher and L. Lobo, Best Combination of machine learningalgorithms for course recommendation system in e-learning,International Journal of Computer Applications, 41(6), 2013,1–10.
  13. [13] X. Shen, B. Yi, Z. Zhang, J. Shu, and L. Hai, Automaticrecommendation technology for learning resources with convo-lutional neural network, Proc. 2016 International Symposiumon Educational Technology, Beijing, CN, 2016, 30–34.
  14. [14] Y. Zhou, C. Huang, Q. Hu, J. Zhu, and Y Tang, Personalizedlearning full-path recommendation model based on LSTMneural networks, Information Sciences, 444, 2018, 135–152.
  15. [15] S. Bhaskaran and B. Santhi, An efficient personalized trustbased hybrid recommendation (TBHR) strategy for e-learningsystem in cloud computing, Cluster Computing, 22(6), 2019,1137–1149.
  16. [16] W. Xu and Y. Zhou, Course video recommendation withmultimodal information in online learning platforms: A deeplearning framework, British Journal of Educational Technology,51(5), 2020, 1734–1747.
  17. [17] J. Liu, H. Zhang, and Z. Liu, Research on online learningresource recommendation method based on Wide & Deep andElmo model, Journal of Physics: Conference Series, 1437(1),2020, 1–7.
  18. [18] L. Bottou, Stochastic gradient descent tricks, in G. Montavon(ed.), Neural networks: Tricks of the trade, 2 (Springer, 2012),412–436.
  19. [19] Y. Ding and X. Li, Time weight collaborative filtering, Proc.14th ACM International Conf. on Information and KnowledgeManagement, Bremen, DE, 2005, 485–492.
  20. [20] S. Rendle, Factorization machines with libFM, ACM Trans-actions on Intelligent Systems and Technology, 3(3), 2012,1–22.

Important Links:

Go Back