Beyond Class-Conditional Assumption: A Primary Attempt to Combat Instance-Dependent Label Noise

12/10/2020
by   Pengfei Chen, et al.
0

Supervised learning under label noise has seen numerous advances recently, while existing theoretical findings and empirical results broadly build up on the class-conditional noise (CCN) assumption that the noise is independent of input features given the true label. In this work, we present a theoretical hypothesis testing and prove that noise in real-world dataset is unlikely to be CCN, which confirms that label noise should depend on the instance and justifies the urgent need to go beyond the CCN assumption.The theoretical results motivate us to study the more general and practical-relevant instance-dependent noise (IDN). To stimulate the development of theory and methodology on IDN, we formalize an algorithm to generate controllable IDN and present both theoretical and empirical evidence to show that IDN is semantically meaningful and challenging. As a primary attempt to combat IDN, we present a tiny algorithm termed self-evolution average label (SEAL), which not only stands out under IDN with various noise fractions, but also improves the generalization on real-world noise benchmark Clothing1M. Our code is released. Notably, our theoretical analysis in Section 2 provides rigorous motivations for studying IDN, which is an important topic that deserves more research attention in future.

READ FULL TEXT

page 1

page 6

page 10

research
01/11/2020

Confidence Scores Make Instance-dependent Label-noise Learning Possible

Learning with noisy labels has drawn a lot of attention. In this area, m...
research
03/25/2021

Approximating Instance-Dependent Noise via Instance-Confidence Embedding

Label noise in multiclass classification is a major obstacle to the depl...
research
03/03/2021

Statistical Hypothesis Testing for Class-Conditional Label Noise

In this work we aim to provide machine learning practitioners with tools...
research
06/14/2020

Parts-dependent Label Noise: Towards Instance-dependent Label Noise

Learning with the instance-dependent label noise is challenging, because...
research
06/06/2023

Binary Classification with Instance and Label Dependent Label Noise

Learning with label dependent label noise has been extensively explored ...
research
10/06/2022

A Theory of Dynamic Benchmarks

Dynamic benchmarks interweave model fitting and data collection in an at...
research
11/29/2019

Diagnostic checking in FARIMA models with uncorrelated but non-independent error terms

This work considers the problem of modified portmanteau tests for testin...

Please sign up or login with your details

Forgot password? Click here to reset