DecKG: Decentralized Collaborative Learning with Knowledge Graph Enhancement for POI Recommendation
Decentralized collaborative learning for Point-of-Interest (POI) recommendation has gained research interest due to its advantages in privacy preservation and efficiency, as it keeps data locally and leverages collaborative learning among clients to train models in a decentralized manner. However, s...
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Zusammenfassung: | Decentralized collaborative learning for Point-of-Interest (POI)
recommendation has gained research interest due to its advantages in privacy
preservation and efficiency, as it keeps data locally and leverages
collaborative learning among clients to train models in a decentralized manner.
However, since local data is often limited and insufficient for training
accurate models, a common solution is integrating external knowledge as
auxiliary information to enhance model performance. Nevertheless, this solution
poses challenges for decentralized collaborative learning. Due to private
nature of local data, identifying relevant auxiliary information specific to
each user is non-trivial. Furthermore, resource-constrained local devices
struggle to accommodate all auxiliary information, which places heavy burden on
local storage. To fill the gap, we propose a novel decentralized collaborative
learning with knowledge graph enhancement framework for POI recommendation
(DecKG). Instead of directly uploading interacted items, users generate
desensitized check-in data by uploading general categories of interacted items
and sampling similar items from same category. The server then pretrains KG
without sensitive user-item interactions and deploys relevant partitioned
sub-KGs to individual users. Entities are further refined on the device,
allowing client to client communication to exchange knowledge learned from
local data and sub-KGs. Evaluations across two real-world datasets demonstrate
DecKG's effectiveness recommendation performance. |
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DOI: | 10.48550/arxiv.2410.10130 |