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Active Learning by Feature Mixing (ALFA-Mix)

PyTorch implementation of ALFA-Mix. For details, read the paper Active Learning by Feature Mixing, which is accepted in CVPR 2022.

ALFA-Mix

The code includes the implementations of all the baselines presented in the paper. Parts of the code are borrowed from https://github.com/JordanAsh/badge.

Setup

The dependencies are in requirements.txt. Python=3.8.3 is recommended for the installation of the environment.

Datasets

The code supports torchvision built-in implementations of MNIST, EMNIST, SVHN, CIFAR10 and CIFAR100. Additionally, it supports MiniImageNet, DomainNet-Real (and two subsets of that) and OpenML datasets.

Training

For running ALFA-Mix in a single setting, use the following script that by default uses 5 different initial random seeds:

python main.py \
        --data_name MNIST --data_dir your_data_directory --log_dir your_log_directory \
        --n_init_lb 100 --n_query 100 --n_round 10 --learning_rate 0.001 --n_epoch 1000 --model mlp \
        --strategy AlphaMixSampling --alpha_opt

To run the closed-form variation of ALFA-Mix, set --alpha_closed_form_approx --alpha_cap 0.2. It includes the implementations of all the baselines reported in the paper, including:

Evaluation

To evaluate over all the experiments and get the final comparison matrix, all the results should be gathered in a folder with this structure: Overall/Dataset/Setting (e.g. Overall/MNIST/MLP_small_budget). The script below accumulates all results over various settings in each dataset and generates the overall comparison matrix:

python agg_results.py --directory Path/Overall --dir_type general 

By using dataset or setting for --dir_type, you can evaluate the results at dataset or setting level respectively.

Citing

@inproceedings{parvaneh2022active,
  title={Active Learning by Feature Mixing},
  author={Parvaneh, Amin and Abbasnejad, Ehsan and Teney, Damien and Haffari, Gholamreza Reza and van den Hengel, Anton and Shi, Javen Qinfeng},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
  pages={12237--12246},
  year={2022}
}

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The official implementation of Active Learning by Feature Mixing (ALFA-Mix) paper

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