Differentiable Neural Architecture Search
Differentiable Neural Architecture Search (DNAS) automates the design of neural networks by using gradient-based optimization to efficiently explore a vast space of possible architectures. Current research focuses on improving the stability and robustness of DNAS algorithms like DARTS, addressing issues like performance collapse and unfair competition between operations, often through novel selection criteria, hierarchical search strategies, or the incorporation of hardware constraints. This automated design process significantly accelerates the development of high-performing neural networks tailored to specific tasks and hardware platforms, impacting fields ranging from image recognition and natural language processing to medical image analysis and resource-constrained embedded systems.
Papers
OStr-DARTS: Differentiable Neural Architecture Search based on Operation Strength
Le Yang, Ziwei Zheng, Yizeng Han, Shiji Song, Gao Huang, Fan Li
EM-DARTS: Hierarchical Differentiable Architecture Search for Eye Movement Recognition
Huafeng Qin, Hongyu Zhu, Xin Jin, Xin Yu, Mounim A. El-Yacoubi, Xinbo Gao