Abstract
Recommendation models often encode users’ sensitive attributes (e.g., gender or age) in their learned representations during training, leading to biased (e.g., stereotypical) recommendations and potential privacy risks. To address this, previous research has predominantly focused on adversarial training to make user representations invariant to sensitive attributes. However, adversarial methods can be unstable and computationally expensive due to additional network parameters. An alternative approach is the use of regularization losses that minimize distributional discrepancies between different demographic groups during training. In particular, the Sliced Wasserstein Distance (SWD) provides a computationally efficient and stable solution for mitigating bias by directly aligning the distributions of user representations across groups.
We follow this alternative strategy and propose an in-processing approach to mitigate encoded biases in user representations of implicit feedback-based recommender systems by using SWD-based regularization.
We perform extensive experiments targeting the debiasing of the users’ gender on three datasets ML-1M, LFM2b-DB, and EB-NeRD from the movie, music, and news domains, respectively. Our results indicate that SWD-based regularization is an effective approach for mitigating encoded biases in user representations while keeping competitive recommendation accuracy.
We follow this alternative strategy and propose an in-processing approach to mitigate encoded biases in user representations of implicit feedback-based recommender systems by using SWD-based regularization.
We perform extensive experiments targeting the debiasing of the users’ gender on three datasets ML-1M, LFM2b-DB, and EB-NeRD from the movie, music, and news domains, respectively. Our results indicate that SWD-based regularization is an effective approach for mitigating encoded biases in user representations while keeping competitive recommendation accuracy.
| Originalsprache | Englisch |
|---|---|
| Titel | RecSys '25: Proceedings of the Nineteenth ACM Conference on Recommender Systems |
| Seiten | 1153-1158 |
| Seitenumfang | 6 |
| Auflage | 1 |
| ISBN (elektronisch) | 979-8-4007-1364-4 |
| DOIs | |
| Publikationsstatus | Veröffentlicht - Sep. 2025 |
Wissenschaftszweige
- 102003 Bildverarbeitung
- 202002 Audiovisuelle Medien
- 102001 Artificial Intelligence
- 102015 Informationssysteme
- 102 Informatik
- 101019 Stochastik
- 103029 Statistische Physik
- 101018 Statistik
- 101017 Spieltheorie
- 202017 Embedded Systems
- 101016 Optimierung
- 101015 Operations Research
- 101014 Numerische Mathematik
- 101029 Mathematische Statistik
- 101028 Mathematische Modellierung
- 101026 Zeitreihenanalyse
- 101024 Wahrscheinlichkeitstheorie
- 102032 Computational Intelligence
- 102004 Bioinformatik
- 102013 Human-Computer Interaction
- 101027 Dynamische Systeme
- 305907 Medizinische Statistik
- 101004 Biomathematik
- 305905 Medizinische Informatik
- 101031 Approximationstheorie
- 102033 Data Mining
- 305901 Computerunterstützte Diagnose und Therapie
- 102019 Machine Learning
- 106007 Biostatistik
- 102018 Künstliche Neuronale Netze
- 106005 Bioinformatik
- 202037 Signalverarbeitung
- 202036 Sensorik
- 202035 Robotik
JKU-Schwerpunkte
- Digital Transformation
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