Performance analysis of study material recommendation system to reduce dropout in online learning using optimal behavior prediction cluster and Online Poll Bot

Author:

Sageengrana S.1,Selvakumar S.2,Srinivasan S.3

Affiliation:

1. Anna University Research Scholar, Information Technology, Sathyabama Institute of Science and Technology, Chennai, India

2. Computer Science and Engineering, Visvesvaraya College of Engineering Technology, Hyderabad, India

3. Computer Science and Engineering, R.M.D. Engineering College, Gummidipoondi, India

Abstract

Students are termed “multitaskers,” and it is likely that they easily fall prey to other subjects or topics that most interest them. In the current educational system, our young generations receive materials from their leftovers, and their constant behavioral classification has decided the material to learn. The rate at which many students gave up on their studies was predominantly higher in online classroom than in offline classroom due to the lack of direct interaction between the students and teachers. To eradicate this and to make online classroom an effective one, the proposed model can be put forth in each class to predict the student’s behavior based on their keen interests. The model predicts and recommends their live session-wise apt course materials to learn. The intelligent Online Poll Bot (OPB) acts as a teacher in this virtual learning environment by engaging in live interactions during class time. It is developed using GAN and the IBM Watson Framework. This paper analyzes the time complexity and accuracy of the developed poll bot, and 96.82% accuracy was achieved with the proposed GAN-based poll bot. Students can be categorized according to their learning behavior by using the Optimal Behavior Prediction Cluster (OBPC). According to the model, the study materials are preferred based on the students’ performance in each class. In online learning environments, the Live Behavior Analysis (LBA) method using the proposed OBPC and OPB can create interactive learning environments and deliver behavior-based study materials to learners, thus reducing dropout rates. The proposed experiments show that the accuracy of the OBPC-based system is 97.43%, and LBA produces 96.52% accuracy, 95.13% F-Score, 97.13% recall, and 96.14% precision compared to existing approaches. This technology will reduce the number of dropouts and can effectively predict the behavior of all students in the virtual environment where they are placed.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

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