Denoising diffusion recommender model
Recommender systems often grapple with noisy implicit feedback. Most studies alleviate the
noise issues from data cleaning perspective such as data resampling and reweighting, but …
noise issues from data cleaning perspective such as data resampling and reweighting, but …
Robust recommender system: a survey and future directions
With the rapid growth of information, recommender systems have become integral for
providing personalized suggestions and overcoming information overload. However, their …
providing personalized suggestions and overcoming information overload. However, their …
Robust preference-guided denoising for graph based social recommendation
Graph Neural Network (GNN) based social recommendation models improve the prediction
accuracy of user preference by leveraging GNN in exploiting preference similarity contained …
accuracy of user preference by leveraging GNN in exploiting preference similarity contained …
Graph bottlenecked social recommendation
With the emergence of social networks, social recommendation has become an essential
technique for personalized services. Recently, graph-based social recommendations have …
technique for personalized services. Recently, graph-based social recommendations have …
Towards robust neural graph collaborative filtering via structure denoising and embedding perturbation
Neural graph collaborative filtering has received great recent attention due to its power of
encoding the high-order neighborhood via the backbone graph neural networks. However …
encoding the high-order neighborhood via the backbone graph neural networks. However …
Debiased recommendation with noisy feedback
Ratings of a user to most items in recommender systems are usually missing not at random
(MNAR), largely because users are free to choose which items to rate. To achieve unbiased …
(MNAR), largely because users are free to choose which items to rate. To achieve unbiased …
Double correction framework for denoising recommendation
As its availability and generality in online services, implicit feedback is more commonly used
in recommender systems. However, implicit feedback usually presents noisy samples in real …
in recommender systems. However, implicit feedback usually presents noisy samples in real …
HAKG: Hierarchy-aware knowledge gated network for recommendation
Knowledge graph (KG) plays an increasingly important role to improve the recommendation
performance and interpretability. A recent technical trend is to design end-to-end models …
performance and interpretability. A recent technical trend is to design end-to-end models …
A Survey on Variational Autoencoders in Recommender Systems
Recommender systems have become an important instrument to connect people to
information. Sparse, complex, and rapidly growing data presents new challenges to …
information. Sparse, complex, and rapidly growing data presents new challenges to …
Ppgencdr: A stable and robust framework for privacy-preserving cross-domain recommendation
Privacy-preserving cross-domain recommendation (PPCDR) refers to preserving the privacy
of users when transferring the knowledge from source domain to target domain for better …
of users when transferring the knowledge from source domain to target domain for better …