About author:CHEN Xueqin, born in 1997,M. S. candidate. His researchinterests include personalized recommendation. TAO Tao, born in 1995,M. S. candidate. His research interestsinclude personalized recommendation. ZHANG Zhongwang, born in 1997,M. S. candidate. His researchinterests include personalized recommendation. WANG Yilei, born in 1979,Ph. D.,associate professor. Herresearch interests include text mining,data security,privacy protection.
Supported by:
Natural Science Foundation of Fujian Province(2018J01799)
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