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Fairness, Accountability, Confidentiality and Transparency in AI

People who worked on this project:

Daan Le - 11329866 - daan_le@hotmail.com
Mathieu Bartels - 11329521 - mathieubartels@gmail.com
David Wessels - 11323272 - davidwessels15@gmail.com
Laurence Bont - 11198788 - laurencebont@gmail.com

Dependencies?

To get all dependencies for this paper use pipenv or conda

pipenv:

pip install pipenv
pipenv shell
pipenv sync

Now al packages needed for this project are installed!

Data

For these experiments to run efficiently it is advised to download the pre-trained models and pre adjusted datasets.

unpack the datasets in the 'dataset' folder
pixel_perbutation roar extra-test

unpack the models in the saved-models folder models

Please note that once these links have expired the data cannot be fetched anymore! Please reach out to laurencebont@gmail.com if you want to gain acces to the data.

How to run?

Look at some examples in the .ipynb or run

python main.py --experiment [roar|extra|pixel_perturbation]

Research

This project is based on a paper. Make sure to check out this paper, and the original github!

Full-Gradient Saliency Maps

@inproceedings{srinivas2019fullgrad,
    title={Full-Gradient Representation for Neural Network Visualization},
    author={Srinivas, Suraj and Fleuret, François},
    booktitle={Advances in Neural Information Processing Systems (NeurIPS)},
    year={2019}
}

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We will use this Github repo for the project

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