How Does Heterogeneous Label Noise Impact Generalization in Neural Nets?

06/29/2021
by   Bidur Khanal, et al.
0

Incorrectly labeled examples, or label noise, is common in real-world computer vision datasets. While the impact of label noise on learning in deep neural networks has been studied in prior work, these studies have exclusively focused on homogeneous label noise, i.e., the degree of label noise is the same across all categories. However, in the real-world, label noise is often heterogeneous, with some categories being affected to a greater extent than others. Here, we address this gap in the literature. We hypothesized that heterogeneous label noise would only affect the classes that had label noise unless there was transfer from those classes to the classes without label noise. To test this hypothesis, we designed a series of computer vision studies using MNIST, CIFAR-10, CIFAR-100, and MS-COCO where we imposed heterogeneous label noise during the training of multi-class, multi-task, and multi-label systems. Our results provide evidence in support of our hypothesis: label noise only affects the class affected by it unless there is transfer.

READ FULL TEXT
research
08/23/2022

A Study on the Impact of Data Augmentation for Training Convolutional Neural Networks in the Presence of Noisy Labels

Label noise is common in large real-world datasets, and its presence har...
research
07/28/2022

On the Effects of Different Types of Label Noise in Multi-Label Remote Sensing Image Classification

The development of accurate methods for multi-label classification (MLC)...
research
11/23/2021

Multi-label Iterated Learning for Image Classification with Label Ambiguity

Transfer learning from large-scale pre-trained models has become essenti...
research
09/13/2016

Making Deep Neural Networks Robust to Label Noise: a Loss Correction Approach

We present a theoretically grounded approach to train deep neural networ...
research
01/30/2022

Similarity and Generalization: From Noise to Corruption

Contrastive learning aims to extract distinctive features from data by f...
research
05/27/2021

Using Early-Learning Regularization to Classify Real-World Noisy Data

The memorization problem is well-known in the field of computer vision. ...
research
01/30/2023

Lateralized Learning for Multi-Class Visual Classification Tasks

The majority of computer vision algorithms fail to find higher-order (ab...

Please sign up or login with your details

Forgot password? Click here to reset