Learning Fair Representations
The King's College · University of Toronto · +1 more institution
Abstract
We propose a learning algorithm for fair classification that achieves both group fairness (the proportion of members in a protected group receiving positive classification is identical to the proportion in the population as a whole), and individual fairness (similar individuals should be treated similarly). We formulate fairness as an optimization problem of finding a good representation of the data with two competing goals: to encode the data as well as possible, while simultaneously obfuscating any information about membership in the protected group. We show positive results of our algorithm relative to other known techniques, on three datasets. Moreover, we demonstrate several advantages to our approach.…
Citation impact
- FWCI
- 21.79
- Percentile
- 100%
- References
- 11
Authors
5Topics & keywords
- ENCODE
- Metric (unit)
- Computer science
- Representation (politics)
- Group (periodic table)
- Population
- Artificial intelligence
- Machine learning