Are Anchor Points Really Indispensable in Label-Noise Learning?

06/01/2019
by   Xiaobo Xia, et al.
0

In label-noise learning, noise transition matrix, denoting the probabilities that clean labels flip into noisy labels, plays a central role in building statistically consistent classifiers. Existing theories have shown that the transition matrix can be learned by exploiting anchor points (i.e., data points that belong to a specific class almost surely). However, when there are no anchor points, the transition matrix will be poorly learned, and those current consistent classifiers will significantly degenerate. In this paper, without employing anchor points, we propose a transition-revision (T-Revision) method to effectively learn transition matrices, leading to better classifiers. Specifically, to learn a transition matrix, we first initialize it by exploiting data points that are similar to anchor points, having high noisy class posterior probabilities. Then, we modify the initialized matrix by adding a slack variable, which can be learned and validated together with the classifier by using noisy data. Empirical results on benchmark-simulated and real-world label-noise datasets demonstrate that without using exact anchor points, the proposed method is superior to the state-of-the-art label-noise learning methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/04/2021

Provably End-to-end Label-Noise Learning without Anchor Points

In label-noise learning, the transition matrix plays a key role in build...
research
12/16/2022

Instance-specific Label Distribution Regularization for Learning with Label Noise

Modeling noise transition matrix is a kind of promising method for learn...
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
06/10/2020

Meta Transition Adaptation for Robust Deep Learning with Noisy Labels

To discover intrinsic inter-class transition probabilities underlying da...
research
06/06/2022

Instance-Dependent Label-Noise Learning with Manifold-Regularized Transition Matrix Estimation

In label-noise learning, estimating the transition matrix has attracted ...
research
05/21/2018

Masking: A New Perspective of Noisy Supervision

It is important to learn classifiers under noisy labels due to their ubi...
research
11/27/2017

Learning with Biased Complementary Labels

In this paper we study the classification problem in which we have acces...

Please sign up or login with your details

Forgot password? Click here to reset