Saved in:
Bibliographic Details
Main Authors: Shu, Chen, Li, Mengke, Zhang, Yiqun, Lu, Yang, Han, Bo, Cheung, Yiu-ming, Wang, Hanzi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.11414
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913736179056640
author Shu, Chen
Li, Mengke
Zhang, Yiqun
Lu, Yang
Han, Bo
Cheung, Yiu-ming
Wang, Hanzi
author_facet Shu, Chen
Li, Mengke
Zhang, Yiqun
Lu, Yang
Han, Bo
Cheung, Yiu-ming
Wang, Hanzi
contents In real-world datasets, the challenges of long-tailed distributions and noisy labels often coexist, posing obstacles to the model training and performance. Existing studies on long-tailed noisy label learning (LTNLL) typically assume that the generation of noisy labels is independent of the long-tailed distribution, which may not be true from a practical perspective. In real-world situaiton, we observe that the tail class samples are more likely to be mislabeled as head, exacerbating the original degree of imbalance. We call this phenomenon as ``tail-to-head (T2H)'' noise. T2H noise severely degrades model performance by polluting the head classes and forcing the model to learn the tail samples as head. To address this challenge, we investigate the dynamic misleading process of the nosiy labels and propose a novel method called Disentangling and Unlearning for Long-tailed and Label-noisy data (DULL). It first employs the Inner-Feature Disentangling (IFD) to disentangle feature internally. Based on this, the Inner-Feature Partial Unlearning (IFPU) is then applied to weaken and unlearn incorrect feature regions correlated to wrong classes. This method prevents the model from being misled by noisy labels, enhancing the model's robustness against noise. To provide a controlled experimental environment, we further propose a new noise addition algorithm to simulate T2H noise. Extensive experiments on both simulated and real-world datasets demonstrate the effectiveness of our proposed method.
format Preprint
id arxiv_https___arxiv_org_abs_2503_11414
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Classifying Long-tailed and Label-noise Data via Disentangling and Unlearning
Shu, Chen
Li, Mengke
Zhang, Yiqun
Lu, Yang
Han, Bo
Cheung, Yiu-ming
Wang, Hanzi
Machine Learning
In real-world datasets, the challenges of long-tailed distributions and noisy labels often coexist, posing obstacles to the model training and performance. Existing studies on long-tailed noisy label learning (LTNLL) typically assume that the generation of noisy labels is independent of the long-tailed distribution, which may not be true from a practical perspective. In real-world situaiton, we observe that the tail class samples are more likely to be mislabeled as head, exacerbating the original degree of imbalance. We call this phenomenon as ``tail-to-head (T2H)'' noise. T2H noise severely degrades model performance by polluting the head classes and forcing the model to learn the tail samples as head. To address this challenge, we investigate the dynamic misleading process of the nosiy labels and propose a novel method called Disentangling and Unlearning for Long-tailed and Label-noisy data (DULL). It first employs the Inner-Feature Disentangling (IFD) to disentangle feature internally. Based on this, the Inner-Feature Partial Unlearning (IFPU) is then applied to weaken and unlearn incorrect feature regions correlated to wrong classes. This method prevents the model from being misled by noisy labels, enhancing the model's robustness against noise. To provide a controlled experimental environment, we further propose a new noise addition algorithm to simulate T2H noise. Extensive experiments on both simulated and real-world datasets demonstrate the effectiveness of our proposed method.
title Classifying Long-tailed and Label-noise Data via Disentangling and Unlearning
topic Machine Learning
url https://arxiv.org/abs/2503.11414