Abstract
Recommender systems can unintentionally encode protected attributes (e.g., gender, country, or age) in their learned latent user representations. Current in-processing debiasing approaches, notably adversarial training, effectively reduce the encoded information on private user attributes. These approaches modify the model parameters during training. Thus, to alternate between biased and debiased model, two separate models have to be trained. In contrast, we propose a novel method to debias recommendation models post-training, which allows switching between biased and debiased model at inference time. Focusing on state-of-the-art variational autoencoder (VAE) architectures, our method aims to reduce bias at input level (user–item interactions) by learning a transformation from input space to a debiased subspace. As the output of this transformation lies in the same space as the original input vector, we can use transformed (debiased) input vectors without the need to fine-tune the pre-trained model. We evaluate the effectiveness of our method on three datasets, MovieLens-1M, LFM2b-DemoBias, and EB-NeRD, from the movie, music, and news domains, respectively. Our experiments show that the proposed method achieves task performance (in terms of NDCG) and debiasing strength (in terms of balanced accuracy of an attacker network) that are comparable to applying adversarial training during the initial training procedure, while providing the added functionality of alternating between biased and debiased model at inference time.
| Originalsprache | Englisch |
|---|---|
| Titel | RecSys '25: Proceedings of the Nineteenth ACM Conference on Recommender Systems |
| Seiten | 632-636 |
| Seitenumfang | 5 |
| Auflage | 1 |
| ISBN (elektronisch) | 979-8-4007-1364-4 |
| DOIs | |
| Publikationsstatus | Veröffentlicht - 07 Aug. 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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