There have been various definitions, representations and derivations of trust in the context of recommender systems. This article presents a recommender predictive model based on collaborative filtering techniques that incorporate a fuzzy-driven quantifier, which includes two upmost relevant social phenomena parameters to address the vagueness inherent in the assessment of trust in social networks relationships. An experimental evaluation procedure utilizing a case study is conducted to analyze the overall predictive accuracy. These results show that the proposed methodology improves the performance of classical recommender approaches. Possible extensions are then outlined
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
This paper presents a stochastic model based on Monte Carlo simulation techniques for measuring the ...
There have been various definitions, representations and derivations of trust in the context of reco...
As the use of recommender systems becomes more consolidated on the Net, an increasing need arises to...
Increasing availability of information has furthered the need for recommender systems across a varie...
In this paper we introduce the idea of using a reliability measure associated to the predic- tions m...
Abstract: Recommender systems (RS) aim to predict items that users would appreciate, over a list of ...
Recommender systems are powerful tools that filter and recommend content relevant to a user. One of ...
As an indispensable technique in the field of Information Filtering, Recommender System has been wel...
Systems that adapt to input from users are susceptible to attacks from those users. Recommender syst...
The main goal of a Recommender System is to suggest relevant items to users, although other utility ...
Recommender systems can be seen everywheretoday, having endless possibilities of implementation. How...
Trust networks among users of a recommender system (RS) prove beneficial to the quality and amount o...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
This paper presents a stochastic model based on Monte Carlo simulation techniques for measuring the ...
There have been various definitions, representations and derivations of trust in the context of reco...
As the use of recommender systems becomes more consolidated on the Net, an increasing need arises to...
Increasing availability of information has furthered the need for recommender systems across a varie...
In this paper we introduce the idea of using a reliability measure associated to the predic- tions m...
Abstract: Recommender systems (RS) aim to predict items that users would appreciate, over a list of ...
Recommender systems are powerful tools that filter and recommend content relevant to a user. One of ...
As an indispensable technique in the field of Information Filtering, Recommender System has been wel...
Systems that adapt to input from users are susceptible to attacks from those users. Recommender syst...
The main goal of a Recommender System is to suggest relevant items to users, although other utility ...
Recommender systems can be seen everywheretoday, having endless possibilities of implementation. How...
Trust networks among users of a recommender system (RS) prove beneficial to the quality and amount o...
Recommender systems are one of the recent inventions to deal with ever growing information overload ...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...