A Duet Recommendation Algorithm Based on Jointly Local and Global
Representation Learning
- URL: http://arxiv.org/abs/2012.01635v1
- Date: Thu, 3 Dec 2020 01:52:14 GMT
- Title: A Duet Recommendation Algorithm Based on Jointly Local and Global
Representation Learning
- Authors: Xiaoming Liu, Shaocong Wu, Zhaohan Zhang, Zhanwei Zhang, Yu Lan, Chao
Shen
- Abstract summary: We propose a knowledge-aware-based recommendation algorithm to capture the local and global representation learning from heterogeneous information.
Based on the method that local and global representations are learned jointly by graph convolutional networks with attention mechanism, the final recommendation probability is calculated by a fully-connected neural network.
- Score: 15.942495330390463
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Knowledge graph (KG), as the side information, is widely utilized to learn
the semantic representations of item/user for recommendation system. The
traditional recommendation algorithms usually just depend on user-item
interactions, but ignore the inherent web information describing the item/user,
which could be formulated by the knowledge graph embedding (KGE) methods to
significantly improve applications' performance. In this paper, we propose a
knowledge-aware-based recommendation algorithm to capture the local and global
representation learning from heterogeneous information. Specifically, the local
model and global model can naturally depict the inner patterns in the
content-based heterogeneous information and interactive behaviors among the
users and items. Based on the method that local and global representations are
learned jointly by graph convolutional networks with attention mechanism, the
final recommendation probability is calculated by a fully-connected neural
network. Extensive experiments are conducted on two real-world datasets to
verify the proposed algorithm's validation. The evaluation results indicate
that the proposed algorithm surpasses state-of-arts by $10.0\%$, $5.1\%$,
$2.5\%$ and $1.8\%$ in metrics of MAE, RMSE, AUC and F1-score at least,
respectively. The significant improvements reveal the capacity of our proposal
to recommend user/item effectively.
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