English

PRANCE: Joint Token-Optimization and Structural Channel-Pruning for Adaptive ViT Inference

Computer Vision and Pattern Recognition 2024-07-09 v1

Abstract

We introduce PRANCE, a Vision Transformer compression framework that jointly optimizes the activated channels and reduces tokens, based on the characteristics of inputs. Specifically, PRANCE~ leverages adaptive token optimization strategies for a certain computational budget, aiming to accelerate ViTs' inference from a unified data and architectural perspective. However, the joint framework poses challenges to both architectural and decision-making aspects. Firstly, while ViTs inherently support variable-token inference, they do not facilitate dynamic computations for variable channels. To overcome this limitation, we propose a meta-network using weight-sharing techniques to support arbitrary channels of the Multi-head Self-Attention and Multi-layer Perceptron layers, serving as a foundational model for architectural decision-making. Second, simultaneously optimizing the structure of the meta-network and input data constitutes a combinatorial optimization problem with an extremely large decision space, reaching up to around 101410^{14}, making supervised learning infeasible. To this end, we design a lightweight selector employing Proximal Policy Optimization for efficient decision-making. Furthermore, we introduce a novel "Result-to-Go" training mechanism that models ViTs' inference process as a Markov decision process, significantly reducing action space and mitigating delayed-reward issues during training. Extensive experiments demonstrate the effectiveness of PRANCE~ in reducing FLOPs by approximately 50\%, retaining only about 10\% of tokens while achieving lossless Top-1 accuracy. Additionally, our framework is shown to be compatible with various token optimization techniques such as pruning, merging, and sequential pruning-merging strategies. The code is available at \href{https://github.com/ChildTang/PRANCE}{https://github.com/ChildTang/PRANCE}.

Keywords

Cite

@article{arxiv.2407.05010,
  title  = {PRANCE: Joint Token-Optimization and Structural Channel-Pruning for Adaptive ViT Inference},
  author = {Ye Li and Chen Tang and Yuan Meng and Jiajun Fan and Zenghao Chai and Xinzhu Ma and Zhi Wang and Wenwu Zhu},
  journal= {arXiv preprint arXiv:2407.05010},
  year   = {2024}
}
R2 v1 2026-06-28T17:31:10.117Z