LGNEMLDec 18, 2019

Pruning by Explaining: A Novel Criterion for Deep Neural Network Pruning

arXiv:1912.08881v3267 citations
Originality Incremental advance
AI Analysis

This work addresses the need for efficient model compression in deep learning applications, especially for transfer learning with limited data, though it is incremental in combining interpretability with pruning.

The paper tackles the problem of reducing computation and storage costs in convolutional neural networks by proposing a novel pruning criterion based on explainable AI relevance scores, which efficiently compresses models while maintaining or improving accuracy, particularly outperforming state-of-the-art methods in resource-constrained scenarios with scarce data.

The success of convolutional neural networks (CNNs) in various applications is accompanied by a significant increase in computation and parameter storage costs. Recent efforts to reduce these overheads involve pruning and compressing the weights of various layers while at the same time aiming to not sacrifice performance. In this paper, we propose a novel criterion for CNN pruning inspired by neural network interpretability: The most relevant units, i.e. weights or filters, are automatically found using their relevance scores obtained from concepts of explainable AI (XAI). By exploring this idea, we connect the lines of interpretability and model compression research. We show that our proposed method can efficiently prune CNN models in transfer-learning setups in which networks pre-trained on large corpora are adapted to specialized tasks. The method is evaluated on a broad range of computer vision datasets. Notably, our novel criterion is not only competitive or better compared to state-of-the-art pruning criteria when successive retraining is performed, but clearly outperforms these previous criteria in the resource-constrained application scenario in which the data of the task to be transferred to is very scarce and one chooses to refrain from fine-tuning. Our method is able to compress the model iteratively while maintaining or even improving accuracy. At the same time, it has a computational cost in the order of gradient computation and is comparatively simple to apply without the need for tuning hyperparameters for pruning.

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