Minimax Multi-Task Learning and a Generalized Loss-Compositional Paradigm for MTL

Since its inception, the modus operandi of multi-task learning (MTL) has been to minimize the task-wise mean of the empirical risks. We introduce a generalized loss-compositional paradigm for MTL that includes a spectrum of formulations as a subfamily... (read more)

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