The users' historical interactions usually contain their interests and purchase habits based on which personalised recommendations can be made. However, such user interactions are often sparse, leading to the well-known cold-start problem when a user has no or very few interactions. In this paper, we propose a new recommendation model, named Heterogeneous Graph Neural Recommender (HGNR), to tackle the cold-start problem while ensuring effective recommendations for all users. Our HGNR model learns users and items' embeddings by using the Graph Convolutional Network based on a heterogeneous graph, which is constructed from user-item interactions, social links and semantic links predicted from the social network and textual reviews. Our extens...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
Abstract The amount of Internet data is increasing day by day with the rapid development of informat...
Knowledge-enhanced recommendation (KER) aims to integrate the knowledge graph (KG) into collaborativ...
Recommender systems help users to find items they presumably like based on data collected on that us...
This paper proposes a novel graph neural network recommendation method to alleviate the user cold-st...
The primary objective of recommender systems is to help users select their desired items, where a ke...
Recommender systems (RS) are used by many social networking applications and online e-commercial ser...
Recommender systems apply machine learning methods to solve the task of providing appropriate sugges...
Cold-start problem is a fundamental challenge for recommendation tasks. The recent self-supervised l...
Recommender systems suggest items of interest to users based on their preferences. These preferences...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
The cold-start problem involves recommendation of content to new users of a system, for whom there i...
Search engines and recommendation systems are an essential means of solving information overload, an...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
Abstract The amount of Internet data is increasing day by day with the rapid development of informat...
Knowledge-enhanced recommendation (KER) aims to integrate the knowledge graph (KG) into collaborativ...
Recommender systems help users to find items they presumably like based on data collected on that us...
This paper proposes a novel graph neural network recommendation method to alleviate the user cold-st...
The primary objective of recommender systems is to help users select their desired items, where a ke...
Recommender systems (RS) are used by many social networking applications and online e-commercial ser...
Recommender systems apply machine learning methods to solve the task of providing appropriate sugges...
Cold-start problem is a fundamental challenge for recommendation tasks. The recent self-supervised l...
Recommender systems suggest items of interest to users based on their preferences. These preferences...
Recommender systems lie at the heart of many online services such as E-commerce, social media platfo...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
The cold-start problem involves recommendation of content to new users of a system, for whom there i...
Search engines and recommendation systems are an essential means of solving information overload, an...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
Abstract The amount of Internet data is increasing day by day with the rapid development of informat...
Knowledge-enhanced recommendation (KER) aims to integrate the knowledge graph (KG) into collaborativ...