Fair4Free: Generating High-fidelity Fair Synthetic Samples using Data Free Distillation

Sikder, Md Fahim, de Leng, Daniel, Heintz, Fredrik

arXiv.org Artificial Intelligence 

This work presents Fair4Free, a novel generative model to generate synthetic fair data using data-free distillation in the latent space. Fair4Free can work on the situation when the data is private or inaccessible. In our approach, we first train a teacher model to create fair representation and then distil the knowledge to a student model (using a smaller architecture). The process of distilling the student model is data-free, i.e. the student model does not have access to the training dataset while distilling. After the distillation, we use the distilled model to generate fair synthetic samples. Our extensive experiments show that our synthetic samples outperform state-of-the-art models in all three criteria (fairness, utility and synthetic quality) with a performance increase of 5% for fairness, 8% for utility and 12% in synthetic quality for both tabular and image datasets. Nowadays, people rely on Artificial Intelligence-based applications to seek answers or make decisions. These AI-based models are trained with the data available in the real world.

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