2022
DOI: 10.48550/arxiv.2204.00783
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Supervised Robustness-preserving Data-free Neural Network Pruning

Abstract: When deploying pre-trained neural network models in real-world applications, model consumers often encounter resource-constraint platforms such as mobile and smart devices. They typically use the pruning technique to reduce the size and complexity of the model, generating a lighter one with less resource consumption. Nonetheless, most existing pruning methods are proposed with a premise that the model after being pruned has a chance to be fine-tuned or even retrained based on the original training data. This m… Show more

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