Machine learning models are often used to decide who will receive a loan...
Dynamic learning systems subject to selective labeling exhibit censoring...
Machine learning models are often personalized based on information that...
The standard approach to personalization in machine learning consists of...
For a prediction task, there may exist multiple models that perform almo...
Checklists are simple decision aids that are often used to promote safet...
In the context of machine learning, a prediction problem exhibits predic...
When the average performance of a prediction model varies significantly ...
Classification models are often used to make decisions that affect human...
In the context of machine learning, disparate impact refers to a form of...
Risk scores are simple classification models that let users quickly asse...
We investigate a long-debated question, which is how to create predictiv...
Scoring systems are linear classification models that only require users...
We present an integer programming framework to build accurate and
interp...
Scoring systems are classification models that only require users to add...
We introduce Supersparse Linear Integer Models (SLIM) as a tool to creat...