PeerLoss

Peer learning method

An approach to learning with noisy labels using peer prediction loss function.

Learning with Noisy Labels by adopting a peer prediction loss function.

GitHub

36 stars
4 watching
4 forks
Language: Python
last commit: over 4 years ago

Related projects:

Repository Description Stars
pouyamghari/pof-mkl An implementation of an online federated learning algorithm with multiple kernels for personalized machine learning 0
pokaxpoka/rognoisylabel A Python package for robust inference via generative classifiers for handling noisy labels in machine learning. 33
kthyeon/fine_official An implementation of a method for training machine learning models using noisy labels 38
google-research/noisystudent A semi-supervised learning method to improve the accuracy of machine learning models by using noisy teacher models and student models. 753
idanachituve/pfedgp An implementation of Personalized Federated Learning with Gaussian Processes using Python. 32
mmazeika/glc A method to train deep learning classifiers on noisy labels using a small set of trusted data 86
jackqqwang/pfedhr A Python project implementing a novel approach to high-performance feature learning and dimensionality reduction in deep neural networks 7
alanchou/truncated-loss An implementation of a loss function designed to improve the training of deep neural networks with noisy labels 125
hanxunh/active-passive-losses A PyTorch-based framework for implementing normalized loss functions to improve deep learning model robustness against noisy labels. 134
gorkemalgan/deep_learning_with_noisy_labels_literature A collection of papers and repos on deep learning with noisy labels. 235
xiyuanyang45/dynamicpfl A method for personalizing machine learning models in federated learning settings with adaptive differential privacy to improve performance and robustness 51
bes-dev/mpl.pytorch A PyTorch implementation of a loss function used in semantic image segmentation 175
dr-darryl-wright/noisy-labels-with-bootstrapping An implementation of training deep neural networks on noisy labels with bootstrapping using Keras 22
coincheung/pytorch-loss Provides a comprehensive set of implementation of various loss functions and operators for deep learning models 2,181
jianyizhang123/flop An experiment comparing different federated learning approaches for image classification tasks with non-iid datasets. 8