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所在单位: 信息与通信工程学院

学历: 直博

办公地点: 兴庆校区:彭康楼
创新港校区:泓理楼8034

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学科: 信息与通信工程

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🎉课题组陈柏旭同学关于【神经网络搜索结构选择】的工作,被 IEEE汇刊 TAI录用

发布时间:2025-09-26
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发布时间:
2025-09-26
文章标题:
🎉课题组陈柏旭同学关于【神经网络搜索结构选择】的工作,被 IEEE汇刊 TAI录用
内容:

A Simple and Effective Architecture Selection Method for Differentiable Architecture Search

 

Although differentiable architecture search (DARTS) improves the searching efficiency of neural architecture search (NAS), the widely applied magnitude-based selection method of DARTS can frequently lead to deteriorating architectures with degenerated performance. Most existing works propose to address this issue by improving the supernet’s optimization to guarantee the applicability of the magnitude-based method, while little attention has been paid to the selection criterion to obtain the final architecture. In this brief, we introduce a novel, simple, and effective architecture selection method, Manda (Magnitudes and activations), which estimates the contribution of an operation in an optimized supernet by both its architecture parameter’s magnitude and corresponding generated activation. Notably, Manda can effectively address the notorious degeneration issue in DARTS without any modification of the supernet’s optimization procedure, indicating the instability in DARTS can be attributed to the widely applied magnitude-based selection method. The experimental results on both NAS-Bench-201 and DARTS search spaces show the effectiveness of our method.

 

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