Resampling algorithms are a useful approach to deal with imbalanced lear...
Machine learning models work better when curated features are provided t...
In many machine learning tasks, learning a good representation of the da...
Autoencoders are techniques for data representation learning based on
ar...
High dimensionality, i.e. data having a large number of variables, tends...
Multilabel classification is an emergent data mining task with a broad r...
The learning from imbalanced data is a deeply studied problem in standar...
New proposals in the field of multi-label learning algorithms have been
...
Many of the existing machine learning algorithms, both supervised and
un...