Learning from imbalanced data: open challenges and future directions
Wrocław University of Science and Technology
Abstract
Despite more than two decades of continuous development learning from imbalanced data is still a focus of intense research. Starting as a problem of skewed distributions of binary tasks, this topic evolved way beyond this conception. With the expansion of machine learning and data mining, combined with the arrival of big data era, we have gained a deeper insight into the nature of imbalanced learning, while at the same time facing new emerging challenges. Data-level and algorithm-level methods are constantly being improved and hybrid approaches gain increasing popularity. Recent trends focus on analyzing not only the disproportion between classes, but also other difficulties embedded in the nature of data. New…
Citation impact
- FWCI
- 147.09
- Percentile
- 100%
- References
- 71
Authors
1Topics & keywords
- Computer science
- Big data
- Data science
- Popularity
- Focus (optics)
- Open research
- Field (mathematics)
- Cluster analysis