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Parameter-Efficient Transfer Learning on Vision Transformers

Some exploration of Parameter-Efficient Transfer Learning in vision.

  • Revisiting the Parameter Efficiency of Adapters from the Perspective of Precision Redundancy

    • [ICCV 2023] Arxiv link Github link
  • FacT: Factor-Tuning for Lightweight Adaptation on Vision Transformer

    • [AAAI 2023 Oral] Arxiv link Github link
  • Convolutional Bypasses Are Better Vision Transformer Adapters

    • [Tech Report 2022] Arxiv link Github link

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[ICCV 2023 & AAAI 2023] Binary Adapters & FacT, [Tech report] Convpass

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