© 2016 Elsevier B.V. Group recommender systems (GRSs) filter relevant items to groups of users in overloaded search spaces using information about their preferences. When the feedback is explicitly given by the users, inconsistencies may be introduced due to various factors, known as natural noise. Previous research on individual recommendation has demonstrated that natural noise negatively influences the recommendation accuracy, whilst it improves when noise is managed. GRSs also employ explicit ratings given by several users as ground truth, hence the recommendation process is also affected by natural noise. However, the natural noise problem has not been addressed on GRSs. The aim of this paper is to develop and test a model to diminish ...
This book presents group recommender systems, which focus on the determination of recommendations fo...
108 pagesOver the last few decades, recommender systems have become important in affecting people's ...
© 2013 IEEE. With the accessibility to information, users often face the problem of selecting one it...
© 2017 Elsevier Ltd Information filtering is a key task in scenarios with information overload. Grou...
© Springer International Publishing AG 2016. E-commerce customers demand quick and easy access to su...
In this paper, we propose a framework that enables the detection of noise in recommender system data...
Recommender systems suggest items that might be interesting to a user. To achieve this, rating predi...
A common approach to designing Recommender Systems (RS) consists of asking users to explicitly rate ...
Recommender systems produce content for users, by suggesting items that users might like. Predicting...
The majority of recommender systems are designed to make recommendations for individual users. Howev...
A recommender system suggests items to users by predicting what might be interesting for them. The p...
Group recommender systems are usually built around a property that characterizes the groups (e.g., t...
A group recommender system is designed for contexts in which more than a person is involved in the r...
Recommender systems apply machine learning and data mining techniques for filtering unseen informati...
A filter bubble refers to the phenomenon where Internet customization effectively isolates individua...
This book presents group recommender systems, which focus on the determination of recommendations fo...
108 pagesOver the last few decades, recommender systems have become important in affecting people's ...
© 2013 IEEE. With the accessibility to information, users often face the problem of selecting one it...
© 2017 Elsevier Ltd Information filtering is a key task in scenarios with information overload. Grou...
© Springer International Publishing AG 2016. E-commerce customers demand quick and easy access to su...
In this paper, we propose a framework that enables the detection of noise in recommender system data...
Recommender systems suggest items that might be interesting to a user. To achieve this, rating predi...
A common approach to designing Recommender Systems (RS) consists of asking users to explicitly rate ...
Recommender systems produce content for users, by suggesting items that users might like. Predicting...
The majority of recommender systems are designed to make recommendations for individual users. Howev...
A recommender system suggests items to users by predicting what might be interesting for them. The p...
Group recommender systems are usually built around a property that characterizes the groups (e.g., t...
A group recommender system is designed for contexts in which more than a person is involved in the r...
Recommender systems apply machine learning and data mining techniques for filtering unseen informati...
A filter bubble refers to the phenomenon where Internet customization effectively isolates individua...
This book presents group recommender systems, which focus on the determination of recommendations fo...
108 pagesOver the last few decades, recommender systems have become important in affecting people's ...
© 2013 IEEE. With the accessibility to information, users often face the problem of selecting one it...