Graph Contrastive Learning with Augmentations
Graph Contrastive Learning with Augmentations Yuning You1*, Tianlong Chen2*, Yongduo Sui3, Ting Chen4, Zhangyang Wang2, Yang Shen1 1Texas A&M University, 2University of Texas at Austin, 3University of Science and Technology of China, 4Google Research, Brain Team {yuning.you,yshen}@tamu.edu, {tianlong.chen,atlaswang}@utexas.edu …
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