Recommender systems (RS) now play a very important role in the online lives of people as they serve as personalized filters for users to find relevant items from a sea of options. Owing to their effectiveness, RS have been widely employed in our daily life. However, despite their empirical successes, these systems still suffer from two limitations: data noise and data sparsity. In recent years, generative adversarial networks (GANs) have garnered increased interest in many fields due to their strong capacity to learn complex real data distributions. Their abilities to enhance RS by tackling the above challenges have also been demonstrated in numerous studies. In general, two lines of research have been conducted, and their common ideas can ...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
Recommender systems are devoted to find and automatically recommend valuable information and service...
[[abstract]]Generative adversarial networks are known as being capable of outputting data that can i...
Recommendation systems have been a core part of daily Internet life. Conventional recommendation mod...
The published method Generative Adversarial Networks for Recommender Systems (GANRS) allows generati...
With the increasing popularity of various social media and E-commerce platforms, large volumes of us...
Users preference mining is one of the key issues in the research field of recommendation system, and...
With greater penetration of online services, the use of recommender systems to predict users’ propen...
Recently, malevolent user hacking has become a huge problem for real-world companies. In order to le...
Recommender Systems (RSs) are used to provide users with personalized item recommendations and help ...
Recommender systems have the difficult task of not only filtering out an overwhelming amount of info...
Most of the recent studies of social recommendation assume that people share similar preferences wit...
Recommender systems have become indispensable tools for many applications with the explosive growth ...
Fast item recommendation based on implicit feedback is vital in practical scenarios due to data-abun...
Recommender systems has become increasingly important in online community for providing personalized...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
Recommender systems are devoted to find and automatically recommend valuable information and service...
[[abstract]]Generative adversarial networks are known as being capable of outputting data that can i...
Recommendation systems have been a core part of daily Internet life. Conventional recommendation mod...
The published method Generative Adversarial Networks for Recommender Systems (GANRS) allows generati...
With the increasing popularity of various social media and E-commerce platforms, large volumes of us...
Users preference mining is one of the key issues in the research field of recommendation system, and...
With greater penetration of online services, the use of recommender systems to predict users’ propen...
Recently, malevolent user hacking has become a huge problem for real-world companies. In order to le...
Recommender Systems (RSs) are used to provide users with personalized item recommendations and help ...
Recommender systems have the difficult task of not only filtering out an overwhelming amount of info...
Most of the recent studies of social recommendation assume that people share similar preferences wit...
Recommender systems have become indispensable tools for many applications with the explosive growth ...
Fast item recommendation based on implicit feedback is vital in practical scenarios due to data-abun...
Recommender systems has become increasingly important in online community for providing personalized...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
Recommender systems are devoted to find and automatically recommend valuable information and service...
[[abstract]]Generative adversarial networks are known as being capable of outputting data that can i...