Open-ended questions in surveys are valuable because they do not constra...
Manual coding of text data from open-ended questions into different
cate...
Increasingly large datasets are rapidly driving up the computational cos...
Using prototype methods to reduce the size of training datasets can
dras...
We leverage what are typically considered the worst qualities of deep
le...
Deep neural networks require large training sets but suffer from high
co...
Dataset distillation is a method for reducing dataset sizes: the goal is...
Most real-world datasets, and particularly those collected from physical...
Multi-label classification is a type of supervised learning where an ins...