Abstract

It is possible to classify students according to the manner they recognize, process, and store information. This classification should be considered when developing adaptive e-learning systems. It also creates a comprehension of the different styles students demonstrate while in the process of learning, which can help adaptive e-learning systems offer advice and instructions to students, teachers, administrators, and parents in order to optimize students’ learning processes. Moreover, e-learning systems using computational and statistical algorithms to analyze students’ learning may offer the opportunity to complement traditional learning evaluation methods with new ones based on analytical intelligence. In this work, we propose a method based on deep multi-target prediction algorithm using Felder–Silverman learning styles model to improve students’ learning evaluation using feature selection, learning styles models, and multiple target classification. As a result, we present a set of features and a model based on an artificial neural network to investigate the possibility of improving the accuracy of automatic learning styles identification. The obtained results show that learning styles allow adaptive e-learning systems to improve the learning processes of students.

Highlights

  • According to Willingham [1], people are normally curious but are not naturally acceptable masterminds; unless cognitive conditions are adequate, humans abstain from reasoning

  • Our research aims to investigate the use of computational intelligence (CI)

  • This paper presents an automatic approach to identify learning styles of student behavior in a MOOC using a Computer Intelligent Algorithm (CIA) called deep artificial neural network (ANN)

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Summary

Introduction

According to Willingham [1], people are normally curious but are not naturally acceptable masterminds; unless cognitive conditions are adequate, humans abstain from reasoning. This behavior is attributed to three properties. To begin with, reasoning is used with moderation; human’s visual system is proficient to instantly take in a complex scene, it is not inclined to instantly solve a puzzle. Reasoning is tiresome because it requires focus and concentration. Because we ordinarily make mistakes, reasoning is uncertain. In spite of these aspects, humans like to think. Solving problems produces pleasure because there is an overlap between the brain’s areas and chemicals that are important in learning and those related to the brain’s natural reward system [1]

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