Search Results for author: George Baravdish

Found 2 papers, 0 papers with code

Standalone Neural ODEs with Sensitivity Analysis

no code implementations27 May 2022 Rym Jaroudi, Lukáš Malý, Gabriel Eilertsen, B. Tomas Johansson, Jonas Unger, George Baravdish

This paper presents the Standalone Neural ODE (sNODE), a continuous-depth neural ODE model capable of describing a full deep neural network.

Learning via nonlinear conjugate gradients and depth-varying neural ODEs

no code implementations11 Feb 2022 George Baravdish, Gabriel Eilertsen, Rym Jaroudi, B. Tomas Johansson, Lukáš Malý, Jonas Unger

The inverse problem of supervised reconstruction of depth-variable (time-dependent) parameters in a neural ordinary differential equation (NODE) is considered, that means finding the weights of a residual network with time continuous layers.

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