Understanding recurrent neural networks using nonequilibrium response theory


연구 분야: Safety



학회: The Journal of Machine Learning Research, Volume 22, Issue 1


초록

Recurrent neural networks (RNNs) are brain-inspired models widely used in machine learning for analyzing sequential data. The present work is a contribution towards a deeper understanding of how RNNs process input signals using the response theory from nonequilibrium statistical mechanics. For a class of continuous-time stochastic RNNs (SRNNs) driven by an input signal, we derive a Volterra type series representation for their output. This representation is interpretable and disentangles the input signal from the SRNN architecture. The kernels of the series are certain recursively defined correlation functions with respect to the unperturbed dynamics that completely determine the output. Exploiting connections of this representation and its implications to rough paths theory, we identify a universal feature — the response feature, which turns out to be the signature of tensor product of the input signal and a natural support basis. In particular, we show that SRNNs, with only the weights in the readout layer optimized and the weights in the hidden layer kept fixed and not optimized, can be viewed as kernel machines operating on a reproducing kernel Hilbert space associated with the response feature.


Author Profile
Soon Hoe Lim

Nordita KTH Royal Institute of Technology and Stockholm University Stockholm Sweden

Andorra

📄 논문 정보

발행 연도 2021년
인용수 0
출판 국가 Andorra
사이트 ACM
좋아요 수 0

연관 논문 목록 (75건)