When Expressivity Meets Trainability: Fewer than n Neurons Can Work

Neural Information Processing Systems 

Modern neural networks are often quite wide, causing large memory and computation costs. It is thus of great interest to train a narrower network. However, training narrow neural nets remains a challenging task. We ask two theoretical questions: Can narrow networks have as strong expressivity as wide ones?

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