CVAILGROOct 21, 2025

C-SWAP: Explainability-Aware Structured Pruning for Efficient Neural Networks Compression

arXiv:2510.18636v1h-index: 2Has Code
Originality Incremental advance
AI Analysis

This work addresses the problem of efficient model compression for deployment in computer vision, offering an incremental improvement over existing one-shot pruning methods.

The paper tackles the performance drop in one-shot structured pruning for neural network compression by introducing a causal-aware pruning approach that leverages explainable deep learning, achieving substantial model size reductions with minimal performance impact without fine-tuning.

Neural network compression has gained increasing attention in recent years, particularly in computer vision applications, where the need for model reduction is crucial for overcoming deployment constraints. Pruning is a widely used technique that prompts sparsity in model structures, e.g. weights, neurons, and layers, reducing size and inference costs. Structured pruning is especially important as it allows for the removal of entire structures, which further accelerates inference time and reduces memory overhead. However, it can be computationally expensive, requiring iterative retraining and optimization. To overcome this problem, recent methods considered one-shot setting, which applies pruning directly at post-training. Unfortunately, they often lead to a considerable drop in performance. In this paper, we focus on this issue by proposing a novel one-shot pruning framework that relies on explainable deep learning. First, we introduce a causal-aware pruning approach that leverages cause-effect relations between model predictions and structures in a progressive pruning process. It allows us to efficiently reduce the size of the network, ensuring that the removed structures do not deter the performance of the model. Then, through experiments conducted on convolution neural network and vision transformer baselines, pre-trained on classification tasks, we demonstrate that our method consistently achieves substantial reductions in model size, with minimal impact on performance, and without the need for fine-tuning. Overall, our approach outperforms its counterparts, offering the best trade-off. Our code is available on GitHub.

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