Training a classifier with noisy labels typically requires the learner t...
Learning visual representations with interpretable features, i.e.,
disen...
Disease risk models can identify high-risk patients and help clinicians
...
The benefits of overparameterization for the overall performance of mode...
Deploying machine learning models to new tasks is a major challenge desp...
Time-varying stochastic optimization problems frequently arise in machin...
We present a new model and methods for the posterior drift problem where...
As we rely on machine learning (ML) models to make more consequential
de...
One of the main barriers to the broader adoption of algorithmic fairness...
We study minimax rates of convergence in the label shift problem. In add...
We consider the task of meta-analysis in high-dimensional settings in wh...