Logo
User: Guest  Login
Authors:
Panagiotou, Emmanouil; Roy, Arjun; Ntoutsi, Eirini 
Document type:
Sonstiges / Other Publication 
Title:
Synthetic Tabular Data Generation for Class Imbalance and Fairness 
Subtitle:
A Comparative Study 
Year:
2024 
Language:
Englisch 
Abstract:
Due to their data-driven nature, Machine Learning (ML) models are susceptible to bias inherited from data, especially in classification problems where class and group imbalances are prevalent. Class imbalance (in the classification target) and group imbalance (in protected attributes like sex or race) can undermine both ML utility and fairness. Although class and group imbalances commonly coincide in real-world tabular datasets, limited methods address this scenario. While most methods use overs...    »
 
Department:
Fakultät für Informatik 
Institute:
INF 7 - Institut für Datensicherheit 
Chair:
Ntoutsi, Eirini 
Open Access yes or no?:
Ja / Yes 
Type of OA license:
CC BY 4.0 
Miscellaneous:
Preprint auf arXiv; Presented at the BIAS Workshop co-located with ECML PKDD 2024