Graph Neural Networks with Dynamic and Static Representations for Social
Recommendation
- URL: http://arxiv.org/abs/2201.10751v1
- Date: Wed, 26 Jan 2022 05:07:17 GMT
- Title: Graph Neural Networks with Dynamic and Static Representations for Social
Recommendation
- Authors: Junfa Lin, Siyuan Chen, Jiahai Wang
- Abstract summary: This paper proposes graph neural networks with dynamic and static representations for social recommendation (GNN-DSR)
The attention mechanism is used to aggregate the social influence of users on the target user and the correlative items' influence on a given item.
Experiments on three real-world recommender system datasets validate the effectiveness of GNN-DSR.
- Score: 13.645346050614855
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recommender systems based on graph neural networks receive increasing
research interest due to their excellent ability to learn a variety of side
information including social networks. However, previous works usually focus on
modeling users, not much attention is paid to items. Moreover, the possible
changes in the attraction of items over time, which is like the dynamic
interest of users are rarely considered, and neither do the correlations among
items. To overcome these limitations, this paper proposes graph neural networks
with dynamic and static representations for social recommendation (GNN-DSR),
which considers both dynamic and static representations of users and items and
incorporates their relational influence. GNN-DSR models the short-term dynamic
and long-term static interactional representations of the user's interest and
the item's attraction, respectively. Furthermore, the attention mechanism is
used to aggregate the social influence of users on the target user and the
correlative items' influence on a given item. The final latent factors of user
and item are combined to make a prediction. Experiments on three real-world
recommender system datasets validate the effectiveness of GNN-DSR.
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