This book systematically examines scalability and effectiveness
challenges related to the application of graph convolutional networks
(GCNs) in recommender systems. By effectively modeling graph
structures, GCNs excel in capturing high-order relationships between
users and items, enabling the creation of enriched and expressive
representations. The book focuses on two overarching problem
categories: the first area deals with problems specific to GCN-based
recommendation models, including over-smoothing, noisy neighboring
nodes, and interpretability limitations. The second one encompasses
broader challenges in recommendation systems that GCN-based methods
are particularly well-suited to address as the attribute missing
problem or feature misalignment. Through rigorous exploration of these
challenges, this book presents innovative GCN-based solutions to push
the boundaries of recommender system design. To this end, techniques
such as interest-aware message-passing strategy, cluster-based
collaborative filtering, semantic aspects extraction, attribute-aware
attention mechanisms, and light graph transformer are presented. Each
chapter combines theoretical insights with practical implementations
and experimental validation, offering a comprehensive resource for
researchers, advanced professionals, and graduate students alike.
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Produktdetaljer
ISBN
9783031850936
Publisert
2025
Utgiver
Springer Nature
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter