CAL

Label noise handler

An implementation of a machine learning method for handling noisy labels in datasets

A Second-Order Approach to Learning with Instance-Dependent Label Noise (CVPR'21 oral)

GitHub

47 stars
3 watching
9 forks
Language: Python
last commit: almost 2 years ago

Related projects:

Repository Description Stars
ucsc-real/cores An implementation of a method to learn from noisy labels in machine learning models with instance-dependent noise 36
nust-machine-intelligence-laboratory/jo-src An implementation of a contrastive learning approach to address noisy labels in machine learning models 5
paulalbert31/labelnoisecorrection An implementation of an unsupervised label noise modeling and loss correction approach for deep learning. 220
xlearning-scu/2021-cvpr-mrl Develops a robust learning framework to handle noisy labels in multimodal data and improve cross-modal retrieval. 13
chenpf1025/noisy_label_understanding_utilizing An investigation into deep learning models trained with noisy labels and methods to improve their accuracy. 90
xiaoboxia/cdr An implementation of a PyTorch-based deep learning method to improve robustness against noisy labels in image classification tasks 75
chenpf1025/idn Provides tools and data for studying instance-dependent label noise in deep neural networks, with a focus on combating noisy labels 35
hongxin001/odnl An implementation of a method to improve model robustness against inherent label noise in machine learning models 19
cysu/noisy_label A repository providing code and scripts for training image classification models on noisy labeled data 115
pxiangwu/topofilter Develops and evaluates machine learning algorithms to mitigate the effects of noisy labels in supervised learning. 29
uds-lsv/multi-tasking_learning_with_unreliable_labels An open source software project that extends an existing algorithm to handle noisy labels in machine learning for low-resource data generation. 8
xiaoboxia/t-revision A PyTorch implementation of a method for learning with noisy labels in deep neural networks 98
moucheng2017/med-noisy-labels Provides PyTorch implementation of a method to address noisy labels in medical image segmentation. 71
udibr/noisy_labels This project explores how to adapt neural networks to noisy labels by introducing a mechanism that can learn to correct the errors. 118
hitcszx/lnl_sr An implementation of a regularization technique to improve the accuracy of deep learning models trained with noisy labels. 46