Representation learning with collaborative autoencoder for personalized recommendation

Expert Systems with Applications - Tập 186 - Trang 115825 - 2021
Yi Zhu1,2,3, Xindong Wu2,3,4, Jipeng Qiang1, Yunhao Yuan1, Yun Li1
1School of Information Engineering, Yangzhou University, Yangzhou, China
2Key Laboratory of Knowledge Engineering with Big Data (Hefei University of Technology), Ministry of Education, China
3School of Computer Science and Information Engineering, Hefei University of Technology, Hefei, China
4Mininglamp Academy of Sciences, Mininglamp Technology, Beijing, China

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