RoGNoisyLabel

Noisy label toolkit

A Python package for robust inference via generative classifiers for handling noisy labels in machine learning.

Description Code for the paper "Robust Inference via Generative Classifiers for Handling Noisy Labels".

GitHub

33 stars
2 watching
5 forks
Language: Python
last commit: about 5 years ago

Related projects:

Repository Description Stars
moucheng2017/med-noisy-labels Provides PyTorch implementation of a method to address noisy labels in medical image segmentation. 71
kthyeon/fine_official An implementation of a method for training machine learning models using noisy labels 38
dr-darryl-wright/noisy-labels-with-bootstrapping An implementation of training deep neural networks on noisy labels with bootstrapping using Keras 22
nust-machine-intelligence-laboratory/jo-src An implementation of a contrastive learning approach to address noisy labels in machine learning models 5
cysu/noisy_label A repository providing code and scripts for training image classification models on noisy labeled data 115
xiaoboxia/t-revision A PyTorch implementation of a method for learning with noisy labels in deep neural networks 98
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
mmazeika/glc A method to train deep learning classifiers on noisy labels using a small set of trusted data 86
chenpf1025/idn Provides tools and data for studying instance-dependent label noise in deep neural networks, with a focus on combating noisy labels 35
xiaoboxia/classification-with-noisy-labels-by-importance-reweighting An implementation of a method to improve classification accuracy on noisy labels by reweighting their importance 39
rtiinternational/smart An open-source platform to efficiently build and manage labeled training datasets for supervised machine learning tasks 220
chenpf1025/noisy_label_understanding_utilizing An investigation into deep learning models trained with noisy labels and methods to improve their accuracy. 90
xlearning-scu/2021-cvpr-mrl Develops a robust learning framework to handle noisy labels in multimodal data and improve cross-modal retrieval. 13
xiaoboxia/cdr An implementation of a PyTorch-based deep learning method to improve robustness against noisy labels in image classification tasks 75
ryo-ito/noisy-labels-neural-network An implementation of a neural network training method using noisy labels 5