Soft-Labeled Contrastive Pre-training for Function-level Code Representation
Xiaonan Li(University of Science and Technology Beijing), Nan Duan(Microsoft Research Asia (China)), Xipeng Qiu(Shanghai Artificial Intelligence Laboratory), Weizhu Chen(Microsoft (Finland)), Daxin Jiang(Jiangsu University), Daya Guo(Sun Yat-sen University), Yun Lin(Kaohsiung Veterans General Hospital), Yelong Shen(Microsoft Research (United Kingdom)), Yeyun Gong(Microsoft Research (United Kingdom))
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