Machine learning (ML) models that achieve high average accuracy can stil...
We introduce SpotCheck, a framework for generating synthetic datasets to...
A growing body of research runs human subject evaluations to study wheth...
Machine learning models often use spurious patterns such as "relying on ...
Saliency methods are a popular class of feature attribution tools that a...
Despite increasing interest in the field of Interpretable Machine Learni...
In this paper, we explore connections between interpretable machine lear...
A common workflow in data exploration is to learn a low-dimensional
repr...
Most of the work on interpretable machine learning has focused on design...
Most work on interpretability in machine learning has focused on designi...
Model interpretability is an increasingly important component of practic...