A common approach to designing Recommender Systems (RS) consists of asking users to explicitly rate items in order to collect feedback about their preferences. However, users have been shown to be inconsistent and to introduce a non-negligible amount of natu-ral noise in their ratings that affects the accuracy of the predictions. In this paper, we present a novel approach to improve RS accuracy by reducing the natural noise in the input data via a preprocessing step. In order to quantitatively understand the impact of natural noise, we first analyze the response of common recommendation algorithms to this noise. Next, we propose a novel algorithm to de-noise existing datasets by means of re-rating: i.e. by asking users to rate previously ra...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Due to the unprecedented amount of information available, it is becoming more and more important to ...
Recommender Systems have to deal with a wide variety of users and user types that express their pref...
This paper proposes a number of studies in order to move recommender systems beyond the traditional ...
108 pagesOver the last few decades, recommender systems have become important in affecting people's ...
Recommender systems filter the items a user did not evaluate, in order to acquire knowledge on the t...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
We present ReInCre (Demo video available at https://youtu.be/MyFczz7Vefo) as a solution demo for inc...
The main goal of a Recommender System is to suggest relevant items to users, although other utility ...
The recent research work for addressed to the aims at a spectrum of item ranking techniques that wou...
Abstract. Recommender Systems need to deal with different types of users who represent their prefere...
Can implicit feedback substitute for explicit ratings in re-commender systems? If so, we could avoid...
Recommendation systems have shown great potential to help users in order to find interesting and rel...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Due to the unprecedented amount of information available, it is becoming more and more important to ...
Recommender Systems have to deal with a wide variety of users and user types that express their pref...
This paper proposes a number of studies in order to move recommender systems beyond the traditional ...
108 pagesOver the last few decades, recommender systems have become important in affecting people's ...
Recommender systems filter the items a user did not evaluate, in order to acquire knowledge on the t...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
We present ReInCre (Demo video available at https://youtu.be/MyFczz7Vefo) as a solution demo for inc...
The main goal of a Recommender System is to suggest relevant items to users, although other utility ...
The recent research work for addressed to the aims at a spectrum of item ranking techniques that wou...
Abstract. Recommender Systems need to deal with different types of users who represent their prefere...
Can implicit feedback substitute for explicit ratings in re-commender systems? If so, we could avoid...
Recommendation systems have shown great potential to help users in order to find interesting and rel...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Numerous recommendation approaches are in use today. However, comparing their effectiveness is a cha...
Due to the unprecedented amount of information available, it is becoming more and more important to ...
Recommender Systems have to deal with a wide variety of users and user types that express their pref...