AINeutralarXiv – CS AI · 15h ago6/10
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Deep-layer limit and stability analysis of the basic forward-backward-splitting induced network (II): learning problems
Researchers analyze deep unfolding neural networks derived from forward-backward-splitting algorithms, establishing convergence guarantees for training problems toward deep-layer limit systems. The work provides theoretical foundations for understanding how neural networks unrolled from optimization algorithms learn, with implications for designing more stable and interpretable deep learning architectures.