The recent integration of Graph Neural Networks (GNNs) into recommendation has led to a novel family of Collaborative Filtering (CF) approaches, namely Graph Collaborative Filtering (GCF). Following the same GNNs wave, recommender systems exploiting Knowledge Graphs (KGs) have also been successfully empowered by the GCF rationale to combine the representational power of GNNs with the semantics conveyed by KGs, giving rise to Knowledge-aware Graph Collaborative Filtering (KGCF), which use KGs to mine hidden user intents. Nevertheless, empirical evidence suggests that computing and combining user-level intent might not always be necessary, as simpler approaches can yield comparable or superior results while keeping explicit semantic features. Under this perspective, user historical preferences become essential to refine the KG and retain the most discriminating features, thus leading to concise item representation. 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. Results on three datasets justify KGUF ’s rationale, as our approach is able to reach performance comparable or superior to SOTA methods while maintaining a simpler formalization.

KGUF: Simple Knowledge-Aware Graph-Based Recommender with User-Based Semantic Features Filtering / Bufi, Salvatore; Mancino, ALBERTO CARLO MARIA; Ferrara, Antonio; Malitesta, Daniele; Di Noia, Tommaso; Di Sciascio, Eugenio. - 2197:(2024), pp. 41-59. (Intervento presentato al convegno First International Workshop, IRonGraphs 2024 tenutosi a Glasgow; Scotland) [10.1007/978-3-031-71382-8].

KGUF: Simple Knowledge-Aware Graph-Based Recommender with User-Based Semantic Features Filtering

Alberto Carlo Maria, Mancino;
2024

Abstract

The recent integration of Graph Neural Networks (GNNs) into recommendation has led to a novel family of Collaborative Filtering (CF) approaches, namely Graph Collaborative Filtering (GCF). Following the same GNNs wave, recommender systems exploiting Knowledge Graphs (KGs) have also been successfully empowered by the GCF rationale to combine the representational power of GNNs with the semantics conveyed by KGs, giving rise to Knowledge-aware Graph Collaborative Filtering (KGCF), which use KGs to mine hidden user intents. Nevertheless, empirical evidence suggests that computing and combining user-level intent might not always be necessary, as simpler approaches can yield comparable or superior results while keeping explicit semantic features. Under this perspective, user historical preferences become essential to refine the KG and retain the most discriminating features, thus leading to concise item representation. 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. Results on three datasets justify KGUF ’s rationale, as our approach is able to reach performance comparable or superior to SOTA methods while maintaining a simpler formalization.
2024
First International Workshop, IRonGraphs 2024
recommendation; knowledge graphs; graph neural networks
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
KGUF: Simple Knowledge-Aware Graph-Based Recommender with User-Based Semantic Features Filtering / Bufi, Salvatore; Mancino, ALBERTO CARLO MARIA; Ferrara, Antonio; Malitesta, Daniele; Di Noia, Tommaso; Di Sciascio, Eugenio. - 2197:(2024), pp. 41-59. (Intervento presentato al convegno First International Workshop, IRonGraphs 2024 tenutosi a Glasgow; Scotland) [10.1007/978-3-031-71382-8].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1726404
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