Online social networks and recommender systems have become an effective channel for influencing millions of users by facilitating exchange and spread of information. This dissertation addresses multiple challenges that are faced by online social recommender systems such as: i) finding the extent of information spread; ii) predicting the rating of a product; and iii) detecting malicious profiles. Most of the research in this area do not capture the social interactions and rely on empirical or statistical approaches without considering the temporal aspects. We capture the temporal spread of information using a probabilistic model and use non-linear differential equations to model the diffusion process. To predict the rating of a product, we p...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
Recommender systems (RS) exploit users' behaviour to recommend to them items they would appreciate. ...
104 p.This Thesis covers three research lines of Social Networks. The first proposed reseach line is...
textRecommender Systems are used to select online information relevant to a given user. Traditional...
As systems based on social networks grow, they get affected by huge number of fake user profiles. Pa...
Recommender systems are powerful tools that filter and recommend content relevant to a user. One of ...
The success of e-commerce companies is becoming increasingly dependent on product recommender system...
Previous research on trust prediction in online social rating networks focused on users’ history of ...
Traditional recommender systems assume that all users are independent and identically distributed, a...
Increasing portions of people's social and communicative activities now take place in the digital wo...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Trust, reputation and recommendation are key components of successful ecommerce systems. However, ec...
Recommender systems help Internet users quickly find information they may be interested in from an e...
This paper examines the effect of Recommender Systems in security oriented issues. Currently researc...
Trust plays an important role in e-commerce, P2P networks, and information filtering. Current challe...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
Recommender systems (RS) exploit users' behaviour to recommend to them items they would appreciate. ...
104 p.This Thesis covers three research lines of Social Networks. The first proposed reseach line is...
textRecommender Systems are used to select online information relevant to a given user. Traditional...
As systems based on social networks grow, they get affected by huge number of fake user profiles. Pa...
Recommender systems are powerful tools that filter and recommend content relevant to a user. One of ...
The success of e-commerce companies is becoming increasingly dependent on product recommender system...
Previous research on trust prediction in online social rating networks focused on users’ history of ...
Traditional recommender systems assume that all users are independent and identically distributed, a...
Increasing portions of people's social and communicative activities now take place in the digital wo...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Trust, reputation and recommendation are key components of successful ecommerce systems. However, ec...
Recommender systems help Internet users quickly find information they may be interested in from an e...
This paper examines the effect of Recommender Systems in security oriented issues. Currently researc...
Trust plays an important role in e-commerce, P2P networks, and information filtering. Current challe...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
Recommender systems (RS) exploit users' behaviour to recommend to them items they would appreciate. ...
104 p.This Thesis covers three research lines of Social Networks. The first proposed reseach line is...