Despite the rich literature on machine learning fairness, relatively lit...
Language models still struggle on moral reasoning, despite their impress...
Despite huge gains in performance in natural language understanding via ...
Large pre-trained language models have shown remarkable performance over...
We deal with the problem of localized in-video taxonomic human annotatio...
A common approach for testing fairness issues in text-based classifiers ...
Pre-trained models have revolutionized natural language understanding.
H...
NLP models are shown to suffer from robustness issues, i.e., a model's
p...
Most literature in fairness has focused on improving fairness with respe...
As recent literature has demonstrated how classifiers often carry uninte...
If our models are used in new or unexpected cases, do we know if they wi...
Recommender systems are one of the most pervasive applications of machin...
As more researchers have become aware of and passionate about algorithmi...