Paulpey13/Learning-Compact-Transparent-Models-using-Neuro-Symbolic-Methods
Research project in collaboration with IBM. The goal was to improve Machine Learning model using The Deep Neural Network created by IBM : R2N. This project was made with my classmate Hedi Derbel. R2N source code : https://github.com/IBM/rulelearn. The code is private due to IBM's privacy policy but the report is aivailable.
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