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[Re] Meta-Weight-Net: Learning an Explicit Mapping For Sample Weighting

Reimplementation of NeurIPS'19: "Meta-Weight-Net: Learning an Explicit Mapping For Sample Weighting" by Shu et al.

Setups

  • Linux
  • Python 3.7.4
  • PyTorch 1.2.0
  • Torchvision 0.4.0

Running the Meta-Weight-Net on benchmark datasets (CIFAR-10 or CIFAR-100)

nohup python main.py --cifar_type 10 --model_type MWN --experiment_type 'Imbalance' --factor 200 --seed 12345 > Logs/log_file_10_MWN_Imbalance_200_12345.txt &

Acknowledgments

We would like to thank https://github.com/akamaster/pytorch_resnet_cifar10 for the ResNet-32 implementation and https://github.com/szagoruyko/wide-residual-networks for the Wide-ResNet implementation.

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Reimplementation of NeurIPS'19: "Meta-Weight-Net: Learning an Explicit Mapping For Sample Weighting" by Shu et al.

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