Abstract: Collaborative filtering is one of the most widely used techniques for recommendation system which has been successfully applied in many applications. However, it suffers from the cold start users who rate only a small fraction of the available items. In addition, these methods can not indicate confidence they are for recommendation. Trust-based rec-ommendation methods assume the additional knowledge of a trust network among users and can alleviate the cold start users, since users only need to be simply connected to the trust network. On the other hand, the sparse user item ratings lead the trust-based method to consider ratings of indirect neighbors that are only weakly trusted, which may decrease its precision. In this paper, we...
In the age of information explosion, Internet facilitates product searching and collecting much more...
Abstract: Automated recommender systems have played a more and more im-portant role in marketing and...
International audienceThe need for efficient decentralized recommender systems has been appreciated ...
Abstract—A brief review of the past researches on CF shows that methods for calculating users ’ simi...
Top-N item recommendation is one of the important tasks of rec-ommenders. Collaborative filtering is...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Increasing availability of information has furthered the need for recommender systems across a varie...
Recommender systems based on collaborative filtering have been well studied in both industry and aca...
To alleviate the issue of data sparsity in collaborative filtering (CF), a number of trust-aware rec...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
The quality of recommendations based on any class of recommender systems may become poor if no or lo...
Recommended system is beneficial to e-commerce sites, which provides customers with product informat...
Abstract: Recommender systems (RS) aim to predict items that users would appreciate, over a list of ...
Abstract k-nearest neighbour (kNN) collaborative filtering (CF), the widely suc-cessful algorithm su...
In the age of information explosion, Internet facilitates product searching and collecting much more...
Abstract: Automated recommender systems have played a more and more im-portant role in marketing and...
International audienceThe need for efficient decentralized recommender systems has been appreciated ...
Abstract—A brief review of the past researches on CF shows that methods for calculating users ’ simi...
Top-N item recommendation is one of the important tasks of rec-ommenders. Collaborative filtering is...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Increasing availability of information has furthered the need for recommender systems across a varie...
Recommender systems based on collaborative filtering have been well studied in both industry and aca...
To alleviate the issue of data sparsity in collaborative filtering (CF), a number of trust-aware rec...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
The quality of recommendations based on any class of recommender systems may become poor if no or lo...
Recommended system is beneficial to e-commerce sites, which provides customers with product informat...
Abstract: Recommender systems (RS) aim to predict items that users would appreciate, over a list of ...
Abstract k-nearest neighbour (kNN) collaborative filtering (CF), the widely suc-cessful algorithm su...
In the age of information explosion, Internet facilitates product searching and collecting much more...
Abstract: Automated recommender systems have played a more and more im-portant role in marketing and...
International audienceThe need for efficient decentralized recommender systems has been appreciated ...