A Recommender System for Adaptive Examination Preparation using Pearson Correlation Collaborative Filtering

  • A. B. M. Kabir Hossain
  • Zarin Tasnim
  • Sumaiya Hoque
  • Muhammad Arifur Rahman
Keywords: Recommender system, Examination preparation, Adaptive e-learning, Pearson correlation collaborative filtering, Distance learning

Abstract

Distance learning is any type of far-off instruction where the understudy isn't actually present for the exercise. It is blasting gratitude to the force of the Internet. Distance learning plays a vital role for examination preparation where multiple choice questions can be utilized to evaluate the performance of students. Multiple Choice Question (MCQ) is a type of question used in the examination to evaluate the performance of students accordingly where usually four options are given along with the question, and one has to choose the correct answer. This research includes a simulation model that has been built to keep the learners continue to learn the subjects they might be weak in. We have developed a methodology that may guide a student to update his/her area of weakness by using a recommender system based on Pearson Correlation Collaborative Filtering approach. The paper describes a recommender system that will keep track of a learner's profile and create an adaptive training mechanism using the performance matrix.

Published
2021-03-31