1. Chirag Agarwal Himabindu Lakkaraju and Marinka Zitnik. 2021. Towards a unified framework for fair and stable graph representation learning. In Uncertainty in Artificial Intelligence. PMLR 2114--2124. Chirag Agarwal Himabindu Lakkaraju and Marinka Zitnik. 2021. Towards a unified framework for fair and stable graph representation learning. In Uncertainty in Artificial Intelligence. PMLR 2114--2124.
2. Solon Barocas and Andrew D Selbst . 2016. Big Data's Disparate Impact. California law review , Vol. 104 , 3 ( 2016 ), 671--732. Solon Barocas and Andrew D Selbst. 2016. Big Data's Disparate Impact. California law review, Vol. 104, 3 (2016), 671--732.
3. Lukas Biewald. 2020. Experiment Tracking with Weights and Biases. https://www.wandb.com/ Software available from wandb.com. Lukas Biewald. 2020. Experiment Tracking with Weights and Biases. https://www.wandb.com/ Software available from wandb.com.
4. Alexandra Chouldechova . 2017. Fair prediction with disparate impact: A study of bias in recidivism prediction instruments. Big data , Vol. 5 , 2 ( 2017 ), 153--163. Alexandra Chouldechova. 2017. Fair prediction with disparate impact: A study of bias in recidivism prediction instruments. Big data, Vol. 5, 2 (2017), 153--163.
5. Algorithmic Decision Making and the Cost of Fairness