Masking: A New Perspective of Noisy Supervision

05/21/2018
by   Bo Han, et al.
0

It is important to learn classifiers under noisy labels due to their ubiquities. As noisy labels are corrupted from ground-truth labels by an unknown noise transition matrix, the accuracy of classifiers can be improved by estimating this matrix, without introducing either sample-selection or regularization biases. However, such estimation is often inexact, which inevitably degenerates the accuracy of classifiers. The inexact estimation is due to either a heuristic trick, or the brutal-force learning by deep networks under a finite dataset. In this paper, we present a human-assisted approach called "masking". The masking conveys human cognition of invalid class transitions, and naturally speculates the structure of the noise transition matrix. Given the structure information, we only learn the noise transition probability to reduce the estimation burden. To instantiate this approach, we derive a structure-aware probabilistic model, which incorporates a structure prior. During the model realization, we solve the challenges from structure extraction and alignment in principle. Empirical results on benchmark datasets with three noise structures show that, our approach can improve the robustness of classifiers significantly.

READ FULL TEXT

page 4

page 10

page 12

research
06/14/2020

Dual T: Reducing Estimation Error for Transition Matrix in Label-noise Learning

The transition matrix, denoting the transition relationship from clean l...
research
01/02/2023

In Quest of Ground Truth: Learning Confident Models and Estimating Uncertainty in the Presence of Annotator Noise

The performance of the Deep Learning (DL) models depends on the quality ...
research
06/01/2019

Are Anchor Points Really Indispensable in Label-Noise Learning?

In label-noise learning, noise transition matrix, denoting the probabili...
research
04/18/2018

Co-sampling: Training Robust Networks for Extremely Noisy Supervision

Training robust deep networks is challenging under noisy labels. Current...
research
06/01/2021

Analysis of classifiers robust to noisy labels

We explore contemporary robust classification algorithms for overcoming ...
research
03/26/2020

Matrix Smoothing: A Regularization for DNN with Transition Matrix under Noisy Labels

Training deep neural networks (DNNs) in the presence of noisy labels is ...
research
01/14/2019

How Does Disagreement Benefit Co-teaching?

Learning with noisy labels is one of the most important question in weak...

Please sign up or login with your details

Forgot password? Click here to reset