Hybrid Pruning And Sparsification
Hamed Rezazadegan Tavakoli, Joachim Wabnig, Francesco Cricri, Honglei Zhang, Emre Aksu, Iraj Saniee
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A hybrid approach based on the combination of saliency-based neural pruning and regularization-based sparsification is proposed. We propose using a graph diffusion process for determining the neuron importance for pruning. Then, we use a regularization loss based on weighted L1-norm and L2-norm during fine-tuning to recover the lost performance. This is followed by a threshold step to further impose sparsification. We demonstrate such a hybrid approach achieves significantly better performance in comparison to purely regularization-based sparsification for large neural networks. To this end, we assessed our proposed method on three tasks, including: image classification (3 network architectures), audio classification and image compression.