In pervasive/ubiquitous computing environments, interacting users may evaluate their respective trustworthiness by using historical data coming from their past interactions. Nevertheless, when two users are at the first interaction, they have no historical data involving their own activities to be analyzed, and then use information (recommender-data) provided by other users (recommenders) who, in the past, have had interactions with one of the involved parties. Although this approach has proven to be effective, it might fail if dishonest recommenders provide unfair recommender-data. Indeed, such unfair data may lead to skewed evaluations, and therefore either increase the trustworthiness of a malicious user or reduce the one of a honest use...
Recommender systems play an essential role in our digital society as they suggest products to purcha...
Online reputation system is gaining popularity as it helps a user to be sure about the quality of a ...
Online feedback-based rating systems are gaining popularity. Dealing with collaborative unfair ratin...
In pervasive/ubiquitous computing environments, interacting users may evaluate their respective trus...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
Recommender systems are vulnerable to shilling attacks. Forged user-generated content data, such as ...
Increasing availability of information has furthered the need for recommender systems across a varie...
Monitoring security and trust in on-line personalised recommendation systems is now recognised as a ...
Trust, reputation and recommendation are key components of successful ecommerce systems. However, ec...
A reputation system collects feedbacks from users and aggregates these feedbacks as evidence and gen...
Reputation systems could help consumers avoid transaction risk by providing historical consumers’ fe...
Collaborative filtering techniques have been successfully em-ployed in recommender systems in order ...
Online reputation systems are gaining popularity. Dealing with collaborative unfair ratings in such ...
Abstract. This paper presents a novel context-based approach to find reliable recommendations for tr...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Recommender systems play an essential role in our digital society as they suggest products to purcha...
Online reputation system is gaining popularity as it helps a user to be sure about the quality of a ...
Online feedback-based rating systems are gaining popularity. Dealing with collaborative unfair ratin...
In pervasive/ubiquitous computing environments, interacting users may evaluate their respective trus...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
Recommender systems are vulnerable to shilling attacks. Forged user-generated content data, such as ...
Increasing availability of information has furthered the need for recommender systems across a varie...
Monitoring security and trust in on-line personalised recommendation systems is now recognised as a ...
Trust, reputation and recommendation are key components of successful ecommerce systems. However, ec...
A reputation system collects feedbacks from users and aggregates these feedbacks as evidence and gen...
Reputation systems could help consumers avoid transaction risk by providing historical consumers’ fe...
Collaborative filtering techniques have been successfully em-ployed in recommender systems in order ...
Online reputation systems are gaining popularity. Dealing with collaborative unfair ratings in such ...
Abstract. This paper presents a novel context-based approach to find reliable recommendations for tr...
Information overload is a new challenge in e-commerce sites. The problem refers to the fast growing ...
Recommender systems play an essential role in our digital society as they suggest products to purcha...
Online reputation system is gaining popularity as it helps a user to be sure about the quality of a ...
Online feedback-based rating systems are gaining popularity. Dealing with collaborative unfair ratin...