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Pruning Self-Attentions Into Convolutional Layers in Single Path.

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    Single-Path Vision Transformer pruning (SPViT) efficiently compresses Vision Transformers (ViTs) by integrating convolutional and self-attention operations. This method reduces computational costs while enhancing performance on computer vision tasks.

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    Area of Science:

    • Computer Vision
    • Deep Learning
    • Model Compression

    Background:

    • Vision Transformers (ViTs) excel in computer vision but suffer from high computational demands and limited local pattern modeling.
    • Multi-head self-attention (MSA) layers in ViTs contribute to these challenges.
    • Existing compression methods often struggle to balance efficiency and performance.

    Purpose of the Study:

    • To develop an efficient and automatic method for compressing pre-trained ViTs.
    • To address the computational and inductive bias issues in ViTs.
    • To introduce locality into compact ViT models.

    Main Methods:

    • Introduced Single-Path Vision Transformer pruning (SPViT), a novel weight-sharing scheme between MSA and convolutional operations.
    • Utilized learnable binary gates to select operations within MSA layers and control Feed-Forward Network (FFN) layer expansion ratios.
    • Created a unified search space for automated pruning and optimization of ViT architectures.

    Main Results:

    • SPViT achieved state-of-the-art (SOTA) results on ImageNet-1k for model pruning.
    • Demonstrated significant FLOPs reduction (e.g., 52.0% for DeiT-B) while simultaneously improving top-1 accuracy by 0.6%.
    • Successfully compressed ViTs, adding proper locality and reducing computational complexity.

    Conclusions:

    • SPViT offers an effective solution for compressing Vision Transformers, enhancing efficiency and performance.
    • The proposed method provides a flexible and automated approach to prune ViTs.
    • SPViT sets a new benchmark for pruning Vision Transformers, balancing computational reduction with accuracy gains.