> Publications > Paper| Shallow Fully Connected Neural Network Training by Forcing Linearization into Valid Region and Balancing Training Rates | ||
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Jea Pil Heo, Chang Gyu Im, Kyung Hwan Ryu*, Su Whan Sung*, Changkyoo Yoo and Dae Ryook Yang, Shallow Fully Connected Neural Network Training by Forcing Linearization into Valid Region and Balancing Training Rates, Processes (ISSN: 2227-9717, SCI, MDTI, pp.1157(1-12) (2022.6) (공동연구) |
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