Neural Fair Collaborative Filtering
Islam, Rashidul, Keya, Kamrun Naher, Zeng, Ziqian, Pan, Shimei, Foulds, James
A growing proportion of human interactions are digitized on social media platforms and subjected to algorithmic decision-making, and it has become increasingly important to ensure fair treatment from these algorithms. In this work, we investigate gender bias in collaborative-filtering recommender systems trained on social media data. We develop neural fair collaborative filtering (NFCF), a practical framework for mitigating gender bias in recommending sensitive items (e.g. jobs, academic concentrations, or courses of study) using a pre-training and fine-tuning approach to neural collaborative filtering, augmented with bias correction techniques. We show the utility of our methods for gender de-biased career and college major recommendations on the MovieLens dataset and a Facebook dataset, respectively, and achieve better performance and fairer behavior than several state-of-the-art models.
Sep-2-2020
- Country:
- Asia > China
- Hong Kong (0.04)
- North America > United States
- Maryland
- Baltimore (0.04)
- Baltimore County (0.04)
- Minnesota (0.04)
- Maryland
- Asia > China
- Genre:
- Research Report > New Finding (0.68)
- Industry:
- Banking & Finance (0.46)
- Education (0.67)