ICML2023
Multi-Layer Neural Networks as Trainable Ladders of Hilbert Spaces
Zhengdao Chen
被引用 4 次
摘要
To characterize the functions spaces explored by multi-layer neural networks (NNs), we introduce Neural Hilbert Ladders (NHLs), a collection of reproducing kernel Hilbert spaces (RKHSes) that are defined iteratively and adaptive to training. First, we prove a correspondence between functions expressed by L-layer NNs and those belonging to L-level NHLs. Second, we prove generalization guarantees for learning the NHL based on a new complexity measure. Third, corresponding to the training of multi-layer NNs in the infinitewidth mean-field limit, we derive an evolution of the NHL characterized by the dynamics of multiple random fields. Finally, we examine linear and shallow NNs from the new perspective and complement the theory with numerical results.