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QueryNet: Querying neural networks for lightweight specialized models
- Jin, Yeong-Hwa;
- Lee, Keon-Ho;
- Choi, Dong-Wan
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7초록
Despite the active research on deep learning these days, no existing works attempt to query neural networks for a specific task so that we can quickly obtain a model specialized for the queried task. This paper presents the first study on the problem of querying neural networks, aiming to efficiently find a lightweight model for any on-demand sub-task supported by a large and generic neural network. This problem is well motivated by the fact that such a lightweight model is particularly suitable for deployment in commodity mobile devices with limited computing resources. In this paper, we propose QueryNet, a framework of queriable neural networks, which is based on our class-aware channel pruning technique and the proposed method of merging multiple tiny networks for producing a specialized model for the task. Through the extensive experiments, we show that QueryNet can generate a lightweight neural network for a given task up to 3.25 times faster than learning a specialized model from scratch, and the resulting specialized neural network carries up to 37 times less parameters than a pretrained network, and even shows a slightly better accuracy than that of the pretrained model. (C) 2021 Elsevier Inc. All rights reserved.
키워드
- 제목
- QueryNet: Querying neural networks for lightweight specialized models
- 저자
- Jin, Yeong-Hwa; Lee, Keon-Ho; Choi, Dong-Wan
- 발행일
- 2022-04
- 유형
- Article
- 권
- 589
- 페이지
- 186 ~ 198