Most of the recommender systems are built for the content or item providers. For example, Netflix recommends movies or TV shows, Amazon recommends books or other items being sold on Amazon, Facebook or Twitter recommends popular posts or tweets, Pinterest recommends related pins, YouTube recommends videos, etc. Most of these recommender systems are designed based on the usage data collected on their own websites. However, sometimes it could be helpful if we could get information about recommended items from multiple data sources, providing multiple perspectives for users to make their decisions. In this research work, we study different approaches to integrate multiple data sources and the effect on the recommendation results when multip...
With the explosively growing of the technologies and services of the Internet, the information data ...
In recent years , recommender system have received attention and gained tremendous popularity becau...
Abstract: Many organizations utilize recommendation systems to increase their profitability and win ...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
In streaming platforms, recommendation algorithms play a crucial role in recommending content. For s...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Personalized recommendations are of key importance when it comes to increasing business value and sa...
With the development of the network, society has moved into the data era, and the amount of data is ...
A recommendation system is a system that provides online users with recommendations for particular r...
With the development of the entertainment and film industry, people have more chances to access movi...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
With the advancements of big data, recommendation systems have become extremely useful in wide appli...
The advent of internet has served as an offspring for the significant growth of online services and ...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
In the current era, a rapid increase in data volume produces redundant information on the internet. ...
With the explosively growing of the technologies and services of the Internet, the information data ...
In recent years , recommender system have received attention and gained tremendous popularity becau...
Abstract: Many organizations utilize recommendation systems to increase their profitability and win ...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
In streaming platforms, recommendation algorithms play a crucial role in recommending content. For s...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Personalized recommendations are of key importance when it comes to increasing business value and sa...
With the development of the network, society has moved into the data era, and the amount of data is ...
A recommendation system is a system that provides online users with recommendations for particular r...
With the development of the entertainment and film industry, people have more chances to access movi...
Movie recommendation systems are becoming increasingly popular, with many businesses looking to leve...
With the advancements of big data, recommendation systems have become extremely useful in wide appli...
The advent of internet has served as an offspring for the significant growth of online services and ...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
In the current era, a rapid increase in data volume produces redundant information on the internet. ...
With the explosively growing of the technologies and services of the Internet, the information data ...
In recent years , recommender system have received attention and gained tremendous popularity becau...
Abstract: Many organizations utilize recommendation systems to increase their profitability and win ...