Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program

The latest evolution of Massive Online Open Courseware (MOOC) includes MOOC based programs where students across the world can complete a series of MOOC courses to achieve microcredentials. However, the high dropout problem in MOOCs also persists in MOOC based programs, with the additional complexit...

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Main Author: Park, David Sejin
Other Authors: Caplice, Chris
Format: Thesis
Published: Massachusetts Institute of Technology 2022
Online Access:https://hdl.handle.net/1721.1/144685
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author Park, David Sejin
author2 Caplice, Chris
author_facet Caplice, Chris
Park, David Sejin
author_sort Park, David Sejin
collection MIT
description The latest evolution of Massive Online Open Courseware (MOOC) includes MOOC based programs where students across the world can complete a series of MOOC courses to achieve microcredentials. However, the high dropout problem in MOOCs also persists in MOOC based programs, with the additional complexity of open enrollment. This study provides a framework to characterize dropout in a MOOC based program using the following: understanding the students’ course taking behavior through a student’s course journey model, understanding students’ return behavior between courses using time-to-event analysis, and proposing a metric, time to dropout, that defines what a dropout is in the context of a MOOC based program. We demonstrate that students’ course journey representations, in conjunction with the t_dropout metric, can define dropout in a MOOC based program and allow dropout analysis based on student’s course registration behaviors. We also demonstrate that course journey visualization can be used to understand student’s course journey for manual intervention, such as in an educational dashboard for identifying at-risk students. Results show that students who are further along in their course sequence are more likely to return to take the next course and more likely to return faster to take the next course. Also, results suggest that students’ choice in course order may impact return behaviors, where taking courses in order has a higher return rate at most stages of the program.
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spelling mit-1721.1/1446852022-08-30T03:35:45Z Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program Park, David Sejin Caplice, Chris Ponce, Eva System Design and Management Program. The latest evolution of Massive Online Open Courseware (MOOC) includes MOOC based programs where students across the world can complete a series of MOOC courses to achieve microcredentials. However, the high dropout problem in MOOCs also persists in MOOC based programs, with the additional complexity of open enrollment. This study provides a framework to characterize dropout in a MOOC based program using the following: understanding the students’ course taking behavior through a student’s course journey model, understanding students’ return behavior between courses using time-to-event analysis, and proposing a metric, time to dropout, that defines what a dropout is in the context of a MOOC based program. We demonstrate that students’ course journey representations, in conjunction with the t_dropout metric, can define dropout in a MOOC based program and allow dropout analysis based on student’s course registration behaviors. We also demonstrate that course journey visualization can be used to understand student’s course journey for manual intervention, such as in an educational dashboard for identifying at-risk students. Results show that students who are further along in their course sequence are more likely to return to take the next course and more likely to return faster to take the next course. Also, results suggest that students’ choice in course order may impact return behaviors, where taking courses in order has a higher return rate at most stages of the program. S.M. 2022-08-29T16:04:39Z 2022-08-29T16:04:39Z 2022-05 2022-06-28T20:28:04.381Z Thesis https://hdl.handle.net/1721.1/144685 In Copyright - Educational Use Permitted Copyright MIT http://rightsstatements.org/page/InC-EDU/1.0/ application/pdf Massachusetts Institute of Technology
spellingShingle Park, David Sejin
Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program
title Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program
title_full Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program
title_fullStr Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program
title_full_unstemmed Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program
title_short Characterizing and evaluating student dropout through understanding student’s journey in a MicroMasters program
title_sort characterizing and evaluating student dropout through understanding student s journey in a micromasters program
url https://hdl.handle.net/1721.1/144685
work_keys_str_mv AT parkdavidsejin characterizingandevaluatingstudentdropoutthroughunderstandingstudentsjourneyinamicromastersprogram