Robust F Divergence Measures Save

[ICLR2021] Official Pytorch implementation of "When Optimizing f-Divergence is Robust with Label noise"

Project README

When Optimizing f-Divergence is Robust with Label noise

This repository is the official Pytorch implementation of "When Optimizing f-Divergence is Robust with Label noise" accepted by ICLR2021.

Required Packages & Environment

Supported OS: Windows, Linux, Mac OS X; Python: 3.6/3.7;

Deep Learning Library: PyTorch (GPU required)

Required Packages: Numpy, Pandas, random, sklearn, tqdm, csv, torch (Keras is required if you want to estimate the noise transition matrix).

Utilities

Details of reproducing our experiment results on MNIST, Fashion MNIST, CIFAR-10, CIFAR-100, Clothing 1M are mentioned in the README.md file in each folder.

We repeat Figure 1 in our paper here:

Figure1

Citation

If you use our code, please cite the following paper:

@article{wei2020optimizing,
  title={When Optimizing $ f $-divergence is Robust with Label Noise},
  author={Wei, Jiaheng and Liu, Yang},
  journal={arXiv preprint arXiv:2011.03687},
  year={2020}
}

References

📋 The code about estimating the noise transition matrix is based on https://github.com/giorgiop/loss-correction

Thanks for watching!

Open Source Agenda is not affiliated with "Robust F Divergence Measures" Project. README Source: weijiaheng/Robust-f-divergence-measures

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