Journal of Electronic Science and Technology, Volume. 22, Issue 2, 100262(2024)
Enhancing personalized exercise recommendation with student and exercise portraits
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Wei-Wei Gao, Hui-Fang Ma, Yan Zhao, Jing Wang, Quan-Hong Tian. Enhancing personalized exercise recommendation with student and exercise portraits[J]. Journal of Electronic Science and Technology, 2024, 22(2): 100262
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Received: Jul. 3, 2023
Accepted: May. 31, 2024
Published Online: Aug. 8, 2024
The Author Email: Ma Hui-Fang (mahuifang@yeah.net)