A Stochastic Neural Network for uncertainty quantification of deep neural networks
Reporter:
Yanzhao Cao, Professor, Auburn University
Inviter:
Jialin Hong, Professor
Subject:
A Stochastic Neural Network for uncertainty quantification of deep neural networks
Time and place:
8:30-9:30, July 22(Friday) , ZOOM ID: 969 5109 0424
Abstract:
Uncertainty quantification (UQ) of deep neural networks
(DNN) is a fundamental issue in deep learning. In our UQ
for DNN framework, the DNN architecture is the neural
ordinary differential equations (Neural-ODE), which
formulates the evolution of potentially huge hidden layers in
the DNN as a discretized ordinary differential equation
(ODE) system. To characterize the randomness caused by
the uncertainty of models and noises of data, we add a
multiplicative Brownian motion noise to the ODE as a
stochastic diffusion term, which changes the ODE to a
stochastic differential equation (SDE). The deterministic
DNN becomes a stochastic neural network (SNN). In the
SNN, the drift parameters serve as the prediction of the
network, and the stochastic diffusion governs the
randomness of network output, which serves to quantify the
epistemic uncertainty of deep learning. I will present results
on convergence and numerical experiments for the SNN.