In the current era of online information overload, recommendation systems are very useful for helping users locate content that may be of interest to them. A personalized recommendation system presents content based on information such as a user’s browsing history and the videos watched. However, information filtering-based recommendation systems are vulnerable to data sparsity and cold-start problems. Additionally, existing recommendation systems suffer from the large overhead incurred in learning regression models used for preference prediction or in selecting groups of similar users. In this study, we propose a preference-tree-based real-time recommendation system that uses various tree models to predict user preferences with a fast runt...
Recommendation systems have shown great potential to help users in order to find interesting and rel...
Recommender systems use variety of data mining techniques and algorithms to identify relevant prefer...
Recommender systems assist users in finding what they want. The challenging issue is how to efficien...
Abstract-Recommender systems employ various data mining techniques and algorithms to discern user pr...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
Recommender systems are an increasingly important technology and researchers have recently argued fo...
AbstractThe availability of huge amount of information on Web makes it difficult for users to dissec...
This thesis addresses the new item problem in recommender systems, which pertains to the challenges ...
The need for effective technologies to help Web users locate items (information or products) is incr...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
AbstractOn the Internet, where the number of choices is overwhelming, there is need to filter, prior...
On the Internet, where the number of choices is overwhelming, there is need to filter, prioritize an...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
Abstract. Many e-commerce sites use a recommendation system to filter the specific in-formation that...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Recommendation systems have shown great potential to help users in order to find interesting and rel...
Recommender systems use variety of data mining techniques and algorithms to identify relevant prefer...
Recommender systems assist users in finding what they want. The challenging issue is how to efficien...
Abstract-Recommender systems employ various data mining techniques and algorithms to discern user pr...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
Recommender systems are an increasingly important technology and researchers have recently argued fo...
AbstractThe availability of huge amount of information on Web makes it difficult for users to dissec...
This thesis addresses the new item problem in recommender systems, which pertains to the challenges ...
The need for effective technologies to help Web users locate items (information or products) is incr...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
AbstractOn the Internet, where the number of choices is overwhelming, there is need to filter, prior...
On the Internet, where the number of choices is overwhelming, there is need to filter, prioritize an...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
Abstract. Many e-commerce sites use a recommendation system to filter the specific in-formation that...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Recommendation systems have shown great potential to help users in order to find interesting and rel...
Recommender systems use variety of data mining techniques and algorithms to identify relevant prefer...
Recommender systems assist users in finding what they want. The challenging issue is how to efficien...