Summary of Mixture Of Experts Based Multi-task Supervise Learning From Crowds, by Tao Han et al.
Mixture of Experts based Multi-task Supervise Learning from Crowdsby Tao Han, Huaixuan Shi, Xinyi Ding,…
Mixture of Experts based Multi-task Supervise Learning from Crowdsby Tao Han, Huaixuan Shi, Xinyi Ding,…
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Pareto Low-Rank Adapters: Efficient Multi-Task Learning with Preferencesby Nikolaos Dimitriadis, Pascal Frossard, Francois FleuretFirst submitted…
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Regret Analysis of Multi-task Representation Learning for Linear-Quadratic Adaptive Controlby Bruce D. Lee, Leonardo F.…
DMTG: One-Shot Differentiable Multi-Task Groupingby Yuan Gao, Shuguo Jiang, Moran Li, Jin-Gang Yu, Gui-Song XiaFirst…