article
Mining Social and Affective Data for Recommendation of Student Tutors
Autor
Boff, Elisa
Reategui, Eliseo Berni
Institución
Resumen
This paper presents a learning environment where
a mining algorithm is used to learn patterns of interaction with
the user and to represent these patterns in a scheme called item
descriptors. The learning environment keeps theoretical
information about subjects, as well as tools and exercises where
the student can put into practice the knowledge gained. One of
the main purposes of the project is to stimulate collaborative
learning through the interaction of students with different levels
of knowledge. The students' actions, as well as their interactions,
are monitored by the system and used to find patterns that can
guide the search for students that may play the role of a tutor.
Such patterns are found with a particular learning algorithm and
represented in item descriptors. The paper presents the
educational environment, the representation mechanism and
learning algorithm used to mine social-affective data in order to
create a recommendation model of tutors.