Title of article :
An Implicit Feedback Recommendation System for Massive Open Online Courses
Author/Authors :
Moradi, Parham Faculty of Engineering - University of Kurdistan Sanandaj, Iran , Faroughim, Azadeh Faculty of Engineering - University of Kurdistan Sanandaj, Iran
Abstract :
Massive open online courses (MOOCs) have recently becoming a popular means of education.
They generally give the students large-scale options. However, the diversity of MOOC courses
available and their rapid updates make it more difficult for students to find fresh material relevant
to them. A recommendation system (RS) connects the learner with the best learning resources to
meet students' interests. The majority of recommender system research is based on the existence
of explicit feedback, which is often impossible or inaccessible in MOOCs. As a result, in this
paper, we model user positive and negative preferences using implicit feedback acquired
passively by watching various types of students' behavior. This paper proposes a novel course
recommendation, which employs Siamese Neural Networks (SNNs) to extract latent
representations of students and courses using a loss function that favors observed over unobserved
courses. The similarity of users and courses is then determined using a novel representation
mechansim.
Keywords :
MOOCs , Implicit Feedback , Recommendation System , Siamese Neural Network , Content Information
Journal title :
Iranian Distance Education