Graph collaborative filtering (GCF) has gained considerable attention in recommendation systems by leveraging graph learning techniques to enhance collaborative filtering (CF) models. One classical approach in GCF is to learn user and item embeddings by modeling complex graph relations and utilizing these embeddings for CF models. However, the quality of the embeddings significantly impacts the recommendation performance of GCF models. In this paper, we argue that existing graph learning methods are insufficient in generating satisfactory embeddings for CF models. This is because they aggregate neighboring node messages directly, which can result in incorrect estimations of user-item correlations. To overcome this limitation, we propose a n...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
Recommender systems have revolutionized the way users discover and engage with content. Moving beyon...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...
Graph collaborative filtering (GCF) has gained considerable attention in recommendation systems by l...
The goal of the recommender system is to learn the user’s preferences from the entity (user–item) hi...
Existing neural collaborative filtering (NCF) recommendation methods suffer from severe sparsity pro...
The key of sequential recommendation lies in the accurate item correlation modeling. Previous models...
Graph Convolutional Networks~(GCNs) are state-of-the-art graph based representation learning models ...
Knowledge-enhanced recommendation (KER) aims to integrate the knowledge graph (KG) into collaborativ...
Graph Convolution Networks (GCNs), with their efficient ability to capture high-order connectivity i...
Knowledge Graph (KG), which commonly consists of fruitful connected facts about items, presents an u...
Recommender systems seek to predict the rating that a user would give an item, given the data of the...
We choose the research paper Graph Trend Filtering Networks for Recommendation because we found this...
University of Technology Sydney. Faculty of Engineering and Information Technology.Personalized reco...
Recommendation system is a process of filtering information to retain buyers on e-commerce sites or ...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
Recommender systems have revolutionized the way users discover and engage with content. Moving beyon...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...
Graph collaborative filtering (GCF) has gained considerable attention in recommendation systems by l...
The goal of the recommender system is to learn the user’s preferences from the entity (user–item) hi...
Existing neural collaborative filtering (NCF) recommendation methods suffer from severe sparsity pro...
The key of sequential recommendation lies in the accurate item correlation modeling. Previous models...
Graph Convolutional Networks~(GCNs) are state-of-the-art graph based representation learning models ...
Knowledge-enhanced recommendation (KER) aims to integrate the knowledge graph (KG) into collaborativ...
Graph Convolution Networks (GCNs), with their efficient ability to capture high-order connectivity i...
Knowledge Graph (KG), which commonly consists of fruitful connected facts about items, presents an u...
Recommender systems seek to predict the rating that a user would give an item, given the data of the...
We choose the research paper Graph Trend Filtering Networks for Recommendation because we found this...
University of Technology Sydney. Faculty of Engineering and Information Technology.Personalized reco...
Recommendation system is a process of filtering information to retain buyers on e-commerce sites or ...
Neural collaborative filtering is the state of art field in the recommender systems area; it provide...
Recommender systems have revolutionized the way users discover and engage with content. Moving beyon...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...