Global Optimality of Elman-type RNN in the Mean-Field Regime
Agazzi, Andrea, Lu, Jianfeng, Mukherjee, Sayan
–arXiv.org Artificial Intelligence
We analyze Elman-type Recurrent Reural Networks (RNNs) and their training in the mean-field regime. Specifically, we show convergence of gradient descent training dynamics of the RNN to the corresponding mean-field formulation in the large width limit. We also show that the fixed points of the limiting infinite-width dynamics are globally optimal, under some assumptions on the initialization of the weights. Our results establish optimality for feature-learning with wide RNNs in the mean-field regime
arXiv.org Artificial Intelligence
Mar-12-2023
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