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Main Authors: Ye, Guangze, Wu, Wen, Wang, Guoqing, Chen, Xi, Zheng, Hong, He, Liang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.11342
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author Ye, Guangze
Wu, Wen
Wang, Guoqing
Chen, Xi
Zheng, Hong
He, Liang
author_facet Ye, Guangze
Wu, Wen
Wang, Guoqing
Chen, Xi
Zheng, Hong
He, Liang
contents The group recommendation (GR) aims to suggest items for a group of users in social networks. Existing work typically considers individual preferences as the sole factor in aggregating group preferences. Actually, social influence is also an important factor in modeling users' contributions to the final group decision. However, existing methods either neglect the social influence of individual members or bundle preferences and social influence together as a unified representation. As a result, these models emphasize the preferences of the majority within the group rather than the actual interaction items, which we refer to as the preference bias issue in GR. Moreover, the self-supervised learning (SSL) strategies they designed to address the issue of group data sparsity fail to account for users' contextual social weights when regulating group representations, leading to suboptimal results. To tackle these issues, we propose a novel model based on Disentangled Modeling of Preferences and Social Influence for Group Recommendation (DisRec). Concretely, we first design a user-level disentangling network to disentangle the preferences and social influence of group members with separate embedding propagation schemes based on (hyper)graph convolution networks. We then introduce a socialbased contrastive learning strategy, selectively excluding user nodes based on their social importance to enhance group representations and alleviate the group-level data sparsity issue. The experimental results demonstrate that our model significantly outperforms state-of-the-art methods on two realworld datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2501_11342
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publishDate 2025
record_format arxiv
spellingShingle Disentangled Modeling of Preferences and Social Influence for Group Recommendation
Ye, Guangze
Wu, Wen
Wang, Guoqing
Chen, Xi
Zheng, Hong
He, Liang
Information Retrieval
The group recommendation (GR) aims to suggest items for a group of users in social networks. Existing work typically considers individual preferences as the sole factor in aggregating group preferences. Actually, social influence is also an important factor in modeling users' contributions to the final group decision. However, existing methods either neglect the social influence of individual members or bundle preferences and social influence together as a unified representation. As a result, these models emphasize the preferences of the majority within the group rather than the actual interaction items, which we refer to as the preference bias issue in GR. Moreover, the self-supervised learning (SSL) strategies they designed to address the issue of group data sparsity fail to account for users' contextual social weights when regulating group representations, leading to suboptimal results. To tackle these issues, we propose a novel model based on Disentangled Modeling of Preferences and Social Influence for Group Recommendation (DisRec). Concretely, we first design a user-level disentangling network to disentangle the preferences and social influence of group members with separate embedding propagation schemes based on (hyper)graph convolution networks. We then introduce a socialbased contrastive learning strategy, selectively excluding user nodes based on their social importance to enhance group representations and alleviate the group-level data sparsity issue. The experimental results demonstrate that our model significantly outperforms state-of-the-art methods on two realworld datasets.
title Disentangled Modeling of Preferences and Social Influence for Group Recommendation
topic Information Retrieval
url https://arxiv.org/abs/2501.11342