TY - GEN
T1 - Graph Sampling based Fairness-aware Recommendation over Sensitive Attribute Removal
AU - Liu, Shenghao
AU - Wu, Guoyang
AU - Deng, Xianjun
AU - Lu, Hongwei
AU - Wang, Bang
AU - Yang, Laurence
AU - Park, James J.
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - Discrimination against different user groups has received growing attention in the recommendation field. To address this problem, existing works typically remove sensitive attributes that may cause discrimination through adversary learning to achieve fair recommendations. However, these approaches leverage all available interactions for learning user representations and overlook the fact that different interactions have varying relevance to users' sensitive attributes. Ignoring this issue may weaken the effectiveness of adversary learning in removing sensitive attributes. To tackle this challenge, we propose a novel model called GS-FairRec, which distinguishes between user interactions to achieve better removal of sensitive attributes. The model consists of three modules: graph sampling-based representation learning, pseudo-user representation learning, and adversarial learning. Firstly, the graph sampling-based representation learning module removes some irrelevant neighbors from a user-item bipartite graph and employs a graph convolutional network (GCN) to learn user/item representations. Next, items that are relevant to a user's sensitive information but do not match their preferences are defined as the user's pseudo-interest items, which are leveraged to learn the pseudo-user representation. In the adversarial learning module, the user's two kinds of representations are fused for adversarial learning to remove sensitive information. Additionally, we design a new metric to measure the model's ability to remove sensitive attributes based on how a generated recommendation list discloses the user's sensitive attributes. Finally, we conduct experiments on two real-world datasets, and our results demonstrate the superiority of our proposed model in fairness tasks.
AB - Discrimination against different user groups has received growing attention in the recommendation field. To address this problem, existing works typically remove sensitive attributes that may cause discrimination through adversary learning to achieve fair recommendations. However, these approaches leverage all available interactions for learning user representations and overlook the fact that different interactions have varying relevance to users' sensitive attributes. Ignoring this issue may weaken the effectiveness of adversary learning in removing sensitive attributes. To tackle this challenge, we propose a novel model called GS-FairRec, which distinguishes between user interactions to achieve better removal of sensitive attributes. The model consists of three modules: graph sampling-based representation learning, pseudo-user representation learning, and adversarial learning. Firstly, the graph sampling-based representation learning module removes some irrelevant neighbors from a user-item bipartite graph and employs a graph convolutional network (GCN) to learn user/item representations. Next, items that are relevant to a user's sensitive information but do not match their preferences are defined as the user's pseudo-interest items, which are leveraged to learn the pseudo-user representation. In the adversarial learning module, the user's two kinds of representations are fused for adversarial learning to remove sensitive information. Additionally, we design a new metric to measure the model's ability to remove sensitive attributes based on how a generated recommendation list discloses the user's sensitive attributes. Finally, we conduct experiments on two real-world datasets, and our results demonstrate the superiority of our proposed model in fairness tasks.
KW - Fairness
KW - Graph Neural Network
KW - Recommender System
UR - https://www.scopus.com/pages/publications/85185404594
U2 - 10.1109/ICDM58522.2023.00052
DO - 10.1109/ICDM58522.2023.00052
M3 - Conference contribution
AN - SCOPUS:85185404594
T3 - Proceedings - IEEE International Conference on Data Mining, ICDM
SP - 428
EP - 437
BT - Proceedings - 23rd IEEE International Conference on Data Mining, ICDM 2023
A2 - Chen, Guihai
A2 - Khan, Latifur
A2 - Gao, Xiaofeng
A2 - Qiu, Meikang
A2 - Pedrycz, Witold
A2 - Wu, Xindong
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 23rd IEEE International Conference on Data Mining, ICDM 2023
Y2 - 1 December 2023 through 4 December 2023
ER -