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- Title
Neighborhood Aggregation Collaborative Filtering Based on Knowledge Graph.
- Authors
Zhang, Dehai; Liu, Linan; Wei, Qi; Yang, Yun; Yang, Po; Liu, Qing
- Abstract
In recent years, the research of combining a knowledge graph with recommendation systems has caused widespread concern. By studying the interconnections in knowledge graphs, potential connections between users and items can be discovered, which provides abundant and complementary information for recommendation of items. However, most existing studies have not effectively established the relation between entities and users. Therefore, the recommendation results may be affected by some unrelated entities. In this paper, we propose a neighborhood aggregation collaborative filtering (NACF) based on knowledge graph. It uses the knowledge graph to spread and extract the user's potential interest, and iteratively injects them into the user features with attentional deviation. We conducted a large number of experiments on three public datasets; we verifyied that NACF is ahead of the most advanced models in top-k recommendation and click-through rate (CTR) prediction.
- Subjects
RECOMMENDER systems; CONVOLUTIONAL neural networks; NEIGHBORHOODS
- Publication
Applied Sciences (2076-3417), 2020, Vol 10, Issue 11, p3818
- ISSN
2076-3417
- Publication type
Article
- DOI
10.3390/app10113818