KQGC: Knowledge Graph Embedding with Smoothing Effects of Graph Convolutions for Recommendation
Leveraging graphs on recommender systems has gained popularity with the development of graph representation learning (GRL). In particular, knowledge graph embedding (KGE) and graph neural networks (GNNs) are representative GRL approaches, which have achieved the state-of-the-art performance on sever...
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Zusammenfassung: | Leveraging graphs on recommender systems has gained popularity with the
development of graph representation learning (GRL). In particular, knowledge
graph embedding (KGE) and graph neural networks (GNNs) are representative GRL
approaches, which have achieved the state-of-the-art performance on several
recommendation tasks. Furthermore, combination of KGE and GNNs (KG-GNNs) has
been explored and found effective in many academic literatures. One of the main
characteristics of GNNs is their ability to retain structural properties among
neighbors in the resulting dense representation, which is usually coined as
smoothing. The smoothing is specially desired in the presence of homophilic
graphs, such as the ones we find on recommender systems. In this paper, we
propose a new model for recommender systems named Knowledge Query-based Graph
Convolution (KQGC). In contrast to exisiting KG-GNNs, KQGC focuses on the
smoothing, and leverages a simple linear graph convolution for smoothing KGE. A
pre-trained KGE is fed into KQGC, and it is smoothed by aggregating neighbor
knowledge queries, which allow entity-embeddings to be aligned on appropriate
vector points for smoothing KGE effectively. We apply the proposed KQGC to a
recommendation task that aims prospective users for specific products.
Extensive experiments on a real E-commerce dataset demonstrate the
effectiveness of KQGC. |
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DOI: | 10.48550/arxiv.2205.12102 |