Recommender systems are systems capable of assisting users by quickly providing them with relevant resources according to their interests or preferences. The efficacy of a recommender system is strictly connected with the possibility of creating meaningful user profiles, including information about user preferences, interests, goals, usage data and interactive behavior. In particular, analysis of user preferences is important to predict user behaviors and make appropriate recommendations. In this paper, we present a fuzzy framework to represent, learn and update user profiles. The representation of a user profile is based on a structured model of user cognitive states, including a competence profile, a preference profile and an acquaintance...
In this paper an approach to serendipitous item recommendation is outlined. The model used for this ...
Due to the growing variety and quantity of information available on the Web, there is urgent need fo...
Rating prediction is crucial in recommender systems as it enables personalized recommendations based...
Recommender systems are systems capable of assisting users by quickly providing them with relevant r...
In recommender systems, the task of automatically deriving user profiles, encoding the actual prefer...
Adaptive software systems are systems that tailor their behavior to each user on the basis of a pers...
© 2016 Elsevier B.V. Recommender systems typically store personal preference profiles. Many items in...
In a period of time in which the content available through the Internet increases exponentially and...
Recommender systems attempt to predict the needs of Web users and provide them with recommendations ...
Adaptive e-learning systems are growing in popularity in recent years. These systems can offer perso...
AbstractRecommender systems can be used to assist users in the process of accessing to relevant info...
Web surfing has become a popular activity for many consumers who not only make purchases online, but...
Analyzing and predicting navigational behavior of Web users can lead to more user friendly and effic...
AbstractIn this paper, we propose a general framework for an intelligent recommender system that ext...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
In this paper an approach to serendipitous item recommendation is outlined. The model used for this ...
Due to the growing variety and quantity of information available on the Web, there is urgent need fo...
Rating prediction is crucial in recommender systems as it enables personalized recommendations based...
Recommender systems are systems capable of assisting users by quickly providing them with relevant r...
In recommender systems, the task of automatically deriving user profiles, encoding the actual prefer...
Adaptive software systems are systems that tailor their behavior to each user on the basis of a pers...
© 2016 Elsevier B.V. Recommender systems typically store personal preference profiles. Many items in...
In a period of time in which the content available through the Internet increases exponentially and...
Recommender systems attempt to predict the needs of Web users and provide them with recommendations ...
Adaptive e-learning systems are growing in popularity in recent years. These systems can offer perso...
AbstractRecommender systems can be used to assist users in the process of accessing to relevant info...
Web surfing has become a popular activity for many consumers who not only make purchases online, but...
Analyzing and predicting navigational behavior of Web users can lead to more user friendly and effic...
AbstractIn this paper, we propose a general framework for an intelligent recommender system that ext...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
In this paper an approach to serendipitous item recommendation is outlined. The model used for this ...
Due to the growing variety and quantity of information available on the Web, there is urgent need fo...
Rating prediction is crucial in recommender systems as it enables personalized recommendations based...