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arxiv: 2301.11487 · v1 · pith:HSFJIAQCnew · submitted 2023-01-27 · 💻 cs.LG

Projected Subnetworks Scale Adaptation

classification 💻 cs.LG
keywords tasksfew-shotmodelsperformanceseenzerolargeprevious
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Large models support great zero-shot and few-shot capabilities. However, updating these models on new tasks can break performance on previous seen tasks and their zero/few-shot unseen tasks. Our work explores how to update zero/few-shot learners such that they can maintain performance on seen/unseen tasks of previous tasks as well as new tasks. By manipulating the parameter updates of a gradient-based meta learner as the projected task-specific subnetworks, we show improvements for large models to retain seen and zero/few shot task performance in online settings.

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