Recommender systems (RSs) represent one of the manifold applications in which Machine Learning can unfold its potential. Nowadays, most of the major online sites selling products and services provide users with RSs that can assist them in their online experience. In recent years, therefore, we have witnessed an impressive series of proposals for novel recommendation techniques that claim to ensure significative improvements compared to classic techniques. In this work, we analyze some of them from a theoretical and experimental point of view and verify whether they can deliver tangible real improvements in terms of performance. Among others, we have experimented with traditional model-based and memory-based collaborative filtering, up ...
With the explosively growing of the technologies and services of the Internet, the information data ...
The paper reports a study into recommendation algorithms and determination of their advantages and d...
Recommender systems are programs which attempt to predict items that a user may be interest in. Reco...
Recommender systems (RSs) represent one of the manifold applications in which Machine Learning can u...
With the development of the network, society has moved into the data era, and the amount of data is ...
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...
Personalized recommendations are of key importance when it comes to increasing business value and sa...
A recommendation system is a system that provides online users with recommendations for particular r...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Movie recommender systems are meant to give suggestions to the users based on the features they love...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
The World Wide Web information grows explosively in the Internet and people encounter problem to pic...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
With the explosively growing of the technologies and services of the Internet, the information data ...
The paper reports a study into recommendation algorithms and determination of their advantages and d...
Recommender systems are programs which attempt to predict items that a user may be interest in. Reco...
Recommender systems (RSs) represent one of the manifold applications in which Machine Learning can u...
With the development of the network, society has moved into the data era, and the amount of data is ...
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...
Personalized recommendations are of key importance when it comes to increasing business value and sa...
A recommendation system is a system that provides online users with recommendations for particular r...
Recommender systems help people make decisions. They are particularly useful for product recommendat...
Movie recommender systems are meant to give suggestions to the users based on the features they love...
Recommendation systems, the best way to deal with information overload, are widely utilized to provi...
The World Wide Web information grows explosively in the Internet and people encounter problem to pic...
The use of recommendation systems (RSs) in e-commerce and digital media has attracted a great deal o...
These days, many recommender systems (RS) are utilized for solving information overload problem in a...
With the explosively growing of the technologies and services of the Internet, the information data ...
The paper reports a study into recommendation algorithms and determination of their advantages and d...
Recommender systems are programs which attempt to predict items that a user may be interest in. Reco...