Uncertainty quantification in neural network classifiers – a local linear approach

03/10/2023
by   Magnus Malmström, et al.
0

Classifiers based on neural networks (NN) often lack a measure of uncertainty in the predicted class. We propose a method to estimate the probability mass function (PMF) of the different classes, as well as the covariance of the estimated PMF. First, a local linear approach is used during the training phase to recursively compute the covariance of the parameters in the NN. Secondly, in the classification phase another local linear approach is used to propagate the covariance of the learned NN parameters to the uncertainty in the output of the last layer of the NN. This allows for an efficient Monte Carlo (MC) approach for: (i) estimating the PMF; (ii) calculating the covariance of the estimated PMF; and (iii) proper risk assessment and fusion of multiple classifiers. Two classical image classification tasks, i.e., MNIST, and CFAR10, are used to demonstrate the efficiency the proposed method.

READ FULL TEXT
research
08/11/2023

Comparing the quality of neural network uncertainty estimates for classification problems

Traditional deep learning (DL) models are powerful classifiers, but many...
research
04/27/2023

Uncertainty Aware Neural Network from Similarity and Sensitivity

Researchers have proposed several approaches for neural network (NN) bas...
research
12/30/2019

Optimal Uncertainty-guided Neural Network Training

The neural network (NN)-based direct uncertainty quantification (UQ) met...
research
09/09/2020

HSFM-Σnn: Combining a Feedforward Motion Prediction Network and Covariance Prediction

In this paper, we propose a new method for motion prediction: HSFM-Σnn. ...
research
11/14/2022

Tire-road friction estimation and uncertainty assessment to improve electric aircraft braking system

The accurate online estimation of the road-friction coefficient is an es...
research
03/29/2021

Tuning of extended state observer with neural network-based control performance assessment

The extended state observer (ESO) is an inherent element of robust obser...
research
06/24/2019

The NN-Stacking: Feature weighted linear stacking through neural networks

Stacking methods improve the prediction performance of regression models...

Please sign up or login with your details

Forgot password? Click here to reset