Abstract

<p class="0abstract"><span lang="EN-US">The birth of massive open online courses (MOOCs) has had an undeniable effect on how teaching is being delivered. It seems that traditional in-class teaching is becoming less popular with the young generation – the generation that wants to choose when, where and at what pace they are learning. As such, many universities are moving towards taking their courses, at least partially, online. However, online courses, although very appealing to the younger generation of learners, come at a cost. For example, the dropout rate of such courses are higher than that of more traditional ones, and the reduced in-person interaction with the teachers results in less timely guidance and intervention from the educators. Machine learning (ML)-based approaches have shown phenomenal successes in other domains. The existing stigma that applying ML-based techniques requires a large amount of data seems to be a bottleneck when dealing with small-scale courses with limited amounts of produced data. In this study, we show not only that the data collected from an online learning management system could be well utilized in order to predict students’ overall performance but also that it could be used to propose timely intervention strategies to boost the students’ performance level. The results of this study indicate that effective intervention strategies could be suggested as early as the middle of the course to change the course of students’ progress for the better. We also present an assistive pedagogical tool based on the outcome of this study, to assist in identifying challenging students and in suggesting early intervention strategies.</span></p>

Highlights

  • With the unprecedented technological advancement over the past decade, interest in pursuing online courses as well as online degrees has increased sharply

  • No matter the geographical distance or the financial barriers, thanks to massive open online courses (MOOCs), high-quality education is a dream come true for many learners

  • One of the common features of most studies that focus on students’ performance in online courses is the utilization of data collected throughout the entire duration of the courses under study. This approach benefits from a larger pool of data, it fails to provide a meaningful action plan early on, to prevent poor student performance

Read more

Summary

Introduction

With the unprecedented technological advancement over the past decade, interest in pursuing online courses as well as online degrees has increased sharply. No matter the geographical distance or the financial barriers, thanks to massive open online courses (MOOCs), high-quality education is a dream come true for many learners This liberation of education has forced universities to reconsider their modes of teaching. The majority of university online courses, with their one-size-fits-all approach, require students to flourish in their studies without any individual guidance from the educators. Such approach, instrumental to scaling up the courses, could lead to a low performance level in the students and high dropout rates. In what follows we map out some of the existing literature in the field

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call