מושגי ליבה
KGUF effectively selects and integrates user-relevant semantic features from knowledge graphs during the graph learning phase to improve item representation and recommendation performance.
תקציר
The paper proposes a novel recommendation model called KGUF (Knowledge Graph User-based Filtering) that efficiently leverages knowledge graph information to enhance item representations and recommendation accuracy.
Key highlights:
- KGUF learns user and item embeddings through linear propagation on the user-item interaction graph, integrating latent representations for semantic features directly into item representations.
- KGUF employs a decision tree mechanism to select meaningful semantic features from the knowledge graph and filter out noisy features, ensuring a concise and meaningful representation of users and items.
- Extensive experiments on three recommendation datasets show that KGUF achieves comparable or superior performance compared to state-of-the-art knowledge-aware and graph-based recommenders, while maintaining a simpler formalization.
- The paper investigates the impact of negative sampling and tree depth constraints on the decision tree construction, evaluating their effect on the overall recommendation performance.
סטטיסטיקה
The MovieLens 1M dataset contains 1,000,209 ratings from 6,040 users on 3,706 items.
The Yahoo! Movies dataset contains 69,846 ratings from 4,000 users on 2,626 items.
The Facebook Books dataset contains 18,978 implicit user feedback on 4,000 users and 2,626 items.
ציטוטים
"Driven by the assumptions above, we propose KGUF, a KGCF model that learns latent representations of semantic features in the KG to better define the item profile."
"By leveraging user profiles through decision trees, KGUF effectively retains only those features relevant to users."