LGAIApr 26, 2020

Filter Grafting for Deep Neural Networks: Reason, Method, and Cultivation

arXiv:2004.12311v2Has Code
AI Analysis

This work addresses efficiency and representation issues in deep learning models, particularly for computer vision applications, but it is incremental as it builds on existing pruning and distillation techniques.

The paper tackles the problem of over-parameterized CNNs containing invalid filters with small l1 norms, proposing filter grafting to reactivate these filters and improve representation capability, with experiments showing improved performance on classification and recognition tasks.

Filter is the key component in modern convolutional neural networks (CNNs). However, since CNNs are usually over-parameterized, a pre-trained network always contain some invalid (unimportant) filters. These filters have relatively small $l_{1}$ norm and contribute little to the output (\textbf{Reason}). While filter pruning removes these invalid filters for efficiency consideration, we tend to reactivate them to improve the representation capability of CNNs. In this paper, we introduce filter grafting (\textbf{Method}) to achieve this goal. The activation is processed by grafting external information (weights) into invalid filters. To better perform the grafting, we develop a novel criterion to measure the information of filters and an adaptive weighting strategy to balance the grafted information among networks. After the grafting operation, the network has fewer invalid filters compared with its initial state, enpowering the model with more representation capacity. Meanwhile, since grafting is operated reciprocally on all networks involved, we find that grafting may lose the information of valid filters when improving invalid filters. To gain a universal improvement on both valid and invalid filters, we compensate grafting with distillation (\textbf{Cultivation}) to overcome the drawback of grafting . Extensive experiments are performed on the classification and recognition tasks to show the superiority of our method. Code is available at \textcolor{black}{\emph{https://github.com/fxmeng/filter-grafting}}.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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