We consider a popular family of constrained optimization problems arisin...
In real-world systems, models are frequently updated as more data become...
Distillation is the technique of training a "student" model based on exa...
Many existing fairness criteria for machine learning involve equalizing ...
We present a general framework for solving a large class of learning pro...
We present pairwise metrics of fairness for ranking and regression model...
We show that many machine learning goals, such as improved fairness metr...
Classifiers can be trained with data-dependent constraints to satisfy
fa...
We consider the problem of improving fairness when one lacks access to a...
We propose learning flexible but interpretable functions that aggregate ...
In recent years, constrained optimization has become increasingly releva...
We study PCA as a stochastic optimization problem and propose a novel
st...
We investigate training and using Gaussian kernel SVMs by approximating ...