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Contributed Talks 2
Quanquan Gu · Aaron Defazio · Jiajin Li
Two (15 min) contributed talks in this session.
Aaron Defazio, Parameter Free Dual Averaging: Optimizing Lipschitz Functions in a Single Pass
Jiajin Li, Nonsmooth Composite Nonconvex-Concave Minimax Optimization
Author Information
Quanquan Gu (UCLA)
Aaron Defazio (Facebook AI Research)
Jiajin Li (Stanford University)
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