DifFaiRec: Generative Fair Recommender with Conditional Diffusion Model
Zhenhao Jiang, Jicong Fan

TL;DR
DifFaiRec is a novel recommendation algorithm that uses a conditional diffusion model and counterfactual fairness techniques to generate diverse and fair recommendations, reducing bias related to sensitive attributes.
Contribution
The paper introduces DifFaiRec, a diffusion-based recommender that incorporates counterfactual fairness to mitigate group bias in recommendations.
Findings
Outperforms baseline methods in fairness metrics
Effectively reduces recommendation gap between groups
Generates diverse recommendations based on learned preference distributions
Abstract
Although recommenders can ship items to users automatically based on the users' preferences, they often cause unfairness to groups or individuals. For instance, when users can be divided into two groups according to a sensitive social attribute and there is a significant difference in terms of activity between the two groups, the learned recommendation algorithm will result in a recommendation gap between the two groups, which causes group unfairness. In this work, we propose a novel recommendation algorithm named Diffusion-based Fair Recommender (DifFaiRec) to provide fair recommendations. DifFaiRec is built upon the conditional diffusion model and hence has a strong ability to learn the distribution of user preferences from their ratings on items and is able to generate diverse recommendations effectively. To guarantee fairness, we design a counterfactual module to reduce the model…
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Taxonomy
TopicsRecommender Systems and Techniques · Sharing Economy and Platforms · FinTech, Crowdfunding, Digital Finance
MethodsDiffusion
