Project Heads
Christian Bayer, Peter Friz
Project Members
Nikolas Tapia (TU / WIAS)
Project Duration
01.01.2019 – 31.12.2020
Located at
TU Berlin / WIAS
Deep residual neural networks [He, Zhang, Ren, Sun 2016] are an important recent class of deep neural networks. Its incremental nature invites interpretation as Euler discretization of differential equations [Haber and Ruthotto 2017]. We suggest a far-reaching generalization using signatures and rough path analysis. In particular, we develop a new discrete rough path framework geared at difference equations, which allow us to obtain titght stability estimates for the output of a residual neural network in terms of the weight matrices.
Project Webpages
Selected Publications
Selected Pictures
The weights are taken by an actual trained network from He et al.
The picture shows that even in this case choosing p>1 can improve a priori bounds.
One observes that due to the high variability of the trained weights, a priori knowledge of the deviation is better if we are allowed to choose p>1.
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