Content-based recommender systems (CBRSs) rely on item and user descriptions (content) to build item representations and user profiles that can be effectively exploited to suggest items similar to those a target user already liked in the past. Most content-based recommender systems use textual features to represent items and user profiles, hence they suffer from the classical problems of natural language ambiguity. This chapter presents a comprehensive survey ofsemanticrepresentations of items and user profiles that attempt to overcome the main problems of the simpler approaches based on keywords. We propose a classification of semantic approaches intotop-down and bottom-up. The former rely on the integration of external knowledge sources, ...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...
Abstract. During the last decade, several recommendation systems have been proposed that help people...
Content-based recommender systems (CBRSs) rely on item and user descriptions (content) to build item...
Recommender systems suggest items by exploiting the interactions of the users with the system (e.g.,...
Advanced methods for Natural Language Processing and the availability of open knowledge sources, suc...
Recommender systems have achieved success in a variety of domains, as a means to help users in infor...
Recommender systems have the effect of guiding users in a personalized way to interesting objects i...
Content-based recommender systems try to recommend items similar to those a given user has liked in ...
This paper presents a semantics-based approach to Recommender Systems (RS), to exploit available con...
In this paper we present a preliminary investigation towards the adoption of Word Embedding techniqu...
Basic content personalization consists in matching up the attributes of a user profile, in which pre...
. In this paper we present a preliminary investigation towards the adoption of Word Embedding techni...
Abstract — Basic content personalization consists in matching up the attributes of a user profile, i...
We describe a recommender system which uses a unique combination of content-based and collaborative...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...
Abstract. During the last decade, several recommendation systems have been proposed that help people...
Content-based recommender systems (CBRSs) rely on item and user descriptions (content) to build item...
Recommender systems suggest items by exploiting the interactions of the users with the system (e.g.,...
Advanced methods for Natural Language Processing and the availability of open knowledge sources, suc...
Recommender systems have achieved success in a variety of domains, as a means to help users in infor...
Recommender systems have the effect of guiding users in a personalized way to interesting objects i...
Content-based recommender systems try to recommend items similar to those a given user has liked in ...
This paper presents a semantics-based approach to Recommender Systems (RS), to exploit available con...
In this paper we present a preliminary investigation towards the adoption of Word Embedding techniqu...
Basic content personalization consists in matching up the attributes of a user profile, in which pre...
. In this paper we present a preliminary investigation towards the adoption of Word Embedding techni...
Abstract — Basic content personalization consists in matching up the attributes of a user profile, i...
We describe a recommender system which uses a unique combination of content-based and collaborative...
International audienceThis paper is interested in a recommender system of economic news articles. Mo...
A successful media service must ensure that its content grabs the attention of the audience. Recomme...
Abstract. During the last decade, several recommendation systems have been proposed that help people...