A heterogeneous information network learning model with neighborhood-level structural representation for predicting lncRNA-miRNA interactions
Bo-Wei Zhao(Zhejiang University), Lun Hu(Chinese Academy of Sciences), Pengwei Hu(Logistics University of People's Armed Police Force), Xin Luo(Chinese Academy of Sciences), Dongxu Li(Chinese Academy of Sciences), Guodong Li(Chinese Academy of Sciences), Yue Yang(Wuhan University of Technology), Xiaorui Su(Chinese Academy of Sciences)
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