| Bibliography | Saha, Ankita: Deep fair clustering with multi-objective handling. University of Stuttgart, Faculty of Computer Science, Electrical Engineering, and Information Technology, Master Thesis No. 15 (2025). 95 pages, english.
|
| Abstract | Masters Thesis: Ankita Saha Email ID: st185643@stud.uni-stuttgart.de Course of Study: MSc. Computer Science Examiner: Prof. Melanie Herschel Supervisor: Nico Lässig, M.Sc.
Topic: Deep Fair Clustering With Multi-Objective Handling
Abstract
Clustering is an unsupervised learning technique widely used in various critical domains, such as heathcare and finance, yet fairness remains an underexplored challenge especially in the field of deep-learning based clustering.
Traditional methods often reinforce biases present in the dataset, leading to ethical concerns in critical applications This thesis proposes Deep Fair Clustering with Multi-Objective Handling (DFC-MOH), a deep learning framework integrating both group level and individual Level fairness constraints with clustering quality. By incorporating balance loss for group fairness and individual fairness loss into a combined loss function, DFC-MOH enables flexible trade-offs between both fairness constraints and clustering performance. Extensive experiments on synthetic and real-world datasets demonstrate the effectiveness of our approach in achieving fair and high-quality clustering with reasonable scalability.
|
Full text and other links | Volltext
|
| Department(s) | University of Stuttgart, Institute of Parallel and Distributed Systems, Data Engineering
|
| Superviser(s) | Herschel, Prof. Melanie; Lässig, Nico |
| Entry date | July 11, 2025 |
|---|