Automated Collaborative Filtering (CF) techniques have been successfully applied on Recommendation domains. Dellarocas [1] proposes their use on reputation domains to provide more reliable and personalized reputation estimates. Despite being solved by recommendation field researches (e.g. significance weighting [2]), the problem of selecting low-trusted neighborhoods finds new roots in the reputation domain, mostly related to different behavior by the evaluated participants. It can turn evaluators with similar tastes into distant ones, contributing to poor reputation rates. A Reputation Model is proposed to minimize those problems. It uses CF techniques adjusted with the following improvements: 1) information of evaluators taste profiles is...
A reputation system computes and publishes reputation scores regarding any kind of entity (e.g. ser...
Reputation systems are employed to provide users with advice on the quality of items on the Web, bas...
Collaborative Filtering (CF) Systems are gaining widespread acceptance in recommender systems and ec...
As the use of recommender systems becomes more consolidated on the Net, an increasing need arises to...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Increasing availability of information has furthered the need for recommender systems across a varie...
Recommender systems are pivotal components of modern Internet platforms and constitute a well-establ...
Trust and reputation have become important topics in various domains, such as online markets, supply...
Recommender systems are pivotal components of modern Internet platforms and constitute a well-establ...
Recommender systems (RS) exploit users' behaviour to recommend to them items they would appreciate. ...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
The consumer is an important information source and the after-transaction-feedback is used as the qu...
International audienceRecommender systems (RS) aim to predict items that users would appreciate, ove...
Today, people increasingly leverage their online social networks to discover meaningful and relevant...
A reputation system computes and publishes reputation scores regarding any kind of entity (e.g. ser...
Reputation systems are employed to provide users with advice on the quality of items on the Web, bas...
Collaborative Filtering (CF) Systems are gaining widespread acceptance in recommender systems and ec...
As the use of recommender systems becomes more consolidated on the Net, an increasing need arises to...
Recommender Systems allow people to find the resources they need by making use of the experiences a...
Increasing availability of information has furthered the need for recommender systems across a varie...
Recommender systems are pivotal components of modern Internet platforms and constitute a well-establ...
Trust and reputation have become important topics in various domains, such as online markets, supply...
Recommender systems are pivotal components of modern Internet platforms and constitute a well-establ...
Recommender systems (RS) exploit users' behaviour to recommend to them items they would appreciate. ...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
Collaborative filtering (CF) is a widely used technique for recommender systems. The essential princi...
The consumer is an important information source and the after-transaction-feedback is used as the qu...
International audienceRecommender systems (RS) aim to predict items that users would appreciate, ove...
Today, people increasingly leverage their online social networks to discover meaningful and relevant...
A reputation system computes and publishes reputation scores regarding any kind of entity (e.g. ser...
Reputation systems are employed to provide users with advice on the quality of items on the Web, bas...
Collaborative Filtering (CF) Systems are gaining widespread acceptance in recommender systems and ec...