FairGap: Fairness-aware Recommendation via Generating Counterfactual Graph

Author:

Chen Wei1,Wu Yiqing2,Zhang Zhao2,Zhuang Fuzhen3,He Zhongshi4,Xie Ruobing5,xia Feng5

Affiliation:

1. Institute of Artificial Intelligence, Beihang University, China

2. Institute of Computing Technology, Chinese Academy of Sciences, China

3. Institute of Artificial Intelligence, Beihang University, China, and Zhongguancun Laboratory, China

4. College of Computer Science, Chongqing University, China

5. WeChat, Tencent, China

Abstract

The emergence of Graph Neural Networks (GNNs) has greatly advanced the development of recommendation systems. Recently, many researchers have leveraged GNN-based models to learn fair representations for users and items. However, current GNN-based models suffer from biased user-item interaction data, which negatively impacts recommendation fairness. Although there have been several studies employed adversarial learning to mitigate this issue in recommendation systems, they mostly focus on modifying the model training approach with fairness regularization and neglect direct intervention of biased interaction. Different from these models, this paper introduces a novel perspective by directly intervening in observed interactions to generate a counterfactual graph (called FairGap) that is not influenced by sensitive node attributes, enabling us to learn fair representations for users and items easily. We design the FairGap to answer the key counterfactual question: “ Would interactions with an item remain unchanged if user’s sensitive attributes were concealed? ”. We also provide theoretical proofs to show that our learning strategy via the counterfactual graph is unbiased in expectation. Moreover, we propose a fairness-enhancing mechanism to continuously improve user fairness in the graph-based recommendation. Extensive experimental results against state-of-the-art competitors and base models on three real-world datasets validate the effectiveness of our proposed model.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,General Business, Management and Accounting,Information Systems

Reference82 articles.

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5. Reinforced Counterfactual Data Augmentation for Dual Sentiment Classification

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