[HTML][HTML] A survey on fairness-aware recommender systems
As information filtering services, recommender systems have extremely enriched our daily
life by providing personalized suggestions and facilitating people in decision-making, which …
life by providing personalized suggestions and facilitating people in decision-making, which …
Multi-factor sequential re-ranking with perception-aware diversification
Feed recommendation systems, which recommend a sequence of items for users to browse
and interact with, have gained significant popularity in practical applications. In feed …
and interact with, have gained significant popularity in practical applications. In feed …
Duet: A tuning-free device-cloud collaborative parameters generation framework for efficient device model generalization
Device Model Generalization (DMG) is a practical yet under-investigated research topic for
on-device machine learning applications. It aims to improve the generalization ability of pre …
on-device machine learning applications. It aims to improve the generalization ability of pre …
Intelligent model update strategy for sequential recommendation
Modern online platforms are increasingly employing recommendation systems to address
information overload and improve user engagement. There is an evolving paradigm in this …
information overload and improve user engagement. There is an evolving paradigm in this …
Video-audio domain generalization via confounder disentanglement
Existing video-audio understanding models are trained and evaluated in an intra-domain
setting, facing performance degeneration in real-world applications where multiple domains …
setting, facing performance degeneration in real-world applications where multiple domains …
Personalized latent structure learning for recommendation
In recommender systems, users' behavior data are driven by the interactions of user-item
latent factors. To improve recommendation effectiveness and robustness, recent advances …
latent factors. To improve recommendation effectiveness and robustness, recent advances …
DIET: Customized slimming for incompatible networks in sequential recommendation
Due to the continuously improving capabilities of mobile edges, recommender systems start
to deploy models on edges to alleviate network congestion caused by frequent mobile …
to deploy models on edges to alleviate network congestion caused by frequent mobile …
Distributed Recommendation Systems: Survey and Research Directions
With the explosive growth of online information, recommendation systems have become
essential tools for alleviating information overload. In recent years, researchers have …
essential tools for alleviating information overload. In recent years, researchers have …
Domain-specific bias filtering for single labeled domain generalization
Abstract Conventional Domain Generalization (CDG) utilizes multiple labeled source
datasets to train a generalizable model for unseen target domains. However, due to …
datasets to train a generalizable model for unseen target domains. However, due to …
Device-cloud collaborative recommendation via meta controller
On-device machine learning enables the lightweight deployment of recommendation
models in local clients, which reduces the burden of the cloud-based recommenders and …
models in local clients, which reduces the burden of the cloud-based recommenders and …