كليدواژه :
Recommender systems , component , Collaborative filtering systems , Trust , Tag
چكيده فارسي :
Collaborative Filtering systems consider users’ social
environment to predict what each user may like to visit in a social
network i.e. they collect and analyze a large amount of
information on users’ behavior, activities or preferences and then
predict or make suggestions to users. These systems use ranks or
tags each user assign to different resources to make predictions.
Lately, social tagging systems, in which users can insert new
contents, tag, organize, share and search for contents, are
becoming more popular. These social tagging systems have a lot
of valuable information, but the data expansion in them is very
fast and this has led to the need for recommender systems that
will predict what each user may like or need make these
suggestions to them. One of the problems in these systems is:
“how much can we rely on the similar users, are they
trustworthy?". In this article we use trust metric, which we
conclude from users’ tagging behavior, beside similarities to give
suggestions. Results show considering trust in a collaborative
system can lead to better performance in generating suggestions