Learning Analytics and Digital Badges: Potential Impact on Student Retention in Higher Education

Publikation: Beiträge in ZeitschriftenZeitschriftenaufsätzeForschungbegutachtet

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Learning Analytics and Digital Badges: Potential Impact on Student Retention in Higher Education. / Mah, Dana-Kristin.
in: Technology, Knowledge and Learning, Jahrgang 21, Nr. 3, 01.10.2016, S. 285-305.

Publikation: Beiträge in ZeitschriftenZeitschriftenaufsätzeForschungbegutachtet

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Bibtex

@article{29b91eb67d69440fbd981aa947961854,
title = "Learning Analytics and Digital Badges: Potential Impact on Student Retention in Higher Education",
abstract = "Learning analytics and digital badges are emerging research fields in educational science. They both show promise for enhancing student retention in higher education, where withdrawals prior to degree completion remain at about 30 % in Organisation for Economic Cooperation and Development member countries. This integrative review provides an overview of the theoretical literature as well as current practices and experience with learning analytics and digital badges in higher education with regard to their potential impact on student retention to enhance students{\textquoteright} first-year experience. Learning analytics involves measuring and analyzing dynamic student data in order to gain insight into students{\textquoteright} learning processes and optimize learning and teaching. One purpose of learning analytics is to construct predictive models to identify students who risk failing a course and thus are more likely to drop out of higher education. Personalized feedback provides students with information about academic support services, helping them to improve their skills and therefore be successful in higher education. Digital badges are symbols for certifying knowledge, skills, and competencies on web-based platforms. The intention is to encourage student persistence by motivating them, recognizing their generic skills, signaling their achievements, and capturing their learning paths. This article proposes a model that synthesizes learning analytics, digital badges, and generic skills such as academic competencies. The main idea is that generic skills can be represented as digital badges, which can be used for learning analytics algorithms to predict student success and to provide students with personalized feedback for improvement. Moreover, this model may serve as a platform for discussion and further research on learning analytics and digital badges to increase student retention in higher education.",
keywords = "Academic competencies, Digital badges, Generic skills, Learning analytics, Student retention, Educational science",
author = "Dana-Kristin Mah",
note = "Publisher Copyright: {\textcopyright} 2016, Springer Science+Business Media Dordrecht.",
year = "2016",
month = oct,
day = "1",
doi = "10.1007/s10758-016-9286-8",
language = "English",
volume = "21",
pages = "285--305",
journal = "Technology, Knowledge and Learning",
issn = "2211-1662",
publisher = "Springer Science + Business Media",
number = "3",

}

RIS

TY - JOUR

T1 - Learning Analytics and Digital Badges

T2 - Potential Impact on Student Retention in Higher Education

AU - Mah, Dana-Kristin

N1 - Publisher Copyright: © 2016, Springer Science+Business Media Dordrecht.

PY - 2016/10/1

Y1 - 2016/10/1

N2 - Learning analytics and digital badges are emerging research fields in educational science. They both show promise for enhancing student retention in higher education, where withdrawals prior to degree completion remain at about 30 % in Organisation for Economic Cooperation and Development member countries. This integrative review provides an overview of the theoretical literature as well as current practices and experience with learning analytics and digital badges in higher education with regard to their potential impact on student retention to enhance students’ first-year experience. Learning analytics involves measuring and analyzing dynamic student data in order to gain insight into students’ learning processes and optimize learning and teaching. One purpose of learning analytics is to construct predictive models to identify students who risk failing a course and thus are more likely to drop out of higher education. Personalized feedback provides students with information about academic support services, helping them to improve their skills and therefore be successful in higher education. Digital badges are symbols for certifying knowledge, skills, and competencies on web-based platforms. The intention is to encourage student persistence by motivating them, recognizing their generic skills, signaling their achievements, and capturing their learning paths. This article proposes a model that synthesizes learning analytics, digital badges, and generic skills such as academic competencies. The main idea is that generic skills can be represented as digital badges, which can be used for learning analytics algorithms to predict student success and to provide students with personalized feedback for improvement. Moreover, this model may serve as a platform for discussion and further research on learning analytics and digital badges to increase student retention in higher education.

AB - Learning analytics and digital badges are emerging research fields in educational science. They both show promise for enhancing student retention in higher education, where withdrawals prior to degree completion remain at about 30 % in Organisation for Economic Cooperation and Development member countries. This integrative review provides an overview of the theoretical literature as well as current practices and experience with learning analytics and digital badges in higher education with regard to their potential impact on student retention to enhance students’ first-year experience. Learning analytics involves measuring and analyzing dynamic student data in order to gain insight into students’ learning processes and optimize learning and teaching. One purpose of learning analytics is to construct predictive models to identify students who risk failing a course and thus are more likely to drop out of higher education. Personalized feedback provides students with information about academic support services, helping them to improve their skills and therefore be successful in higher education. Digital badges are symbols for certifying knowledge, skills, and competencies on web-based platforms. The intention is to encourage student persistence by motivating them, recognizing their generic skills, signaling their achievements, and capturing their learning paths. This article proposes a model that synthesizes learning analytics, digital badges, and generic skills such as academic competencies. The main idea is that generic skills can be represented as digital badges, which can be used for learning analytics algorithms to predict student success and to provide students with personalized feedback for improvement. Moreover, this model may serve as a platform for discussion and further research on learning analytics and digital badges to increase student retention in higher education.

KW - Academic competencies

KW - Digital badges

KW - Generic skills

KW - Learning analytics

KW - Student retention

KW - Educational science

UR - http://www.scopus.com/inward/record.url?scp=84973621417&partnerID=8YFLogxK

U2 - 10.1007/s10758-016-9286-8

DO - 10.1007/s10758-016-9286-8

M3 - Journal articles

AN - SCOPUS:84973621417

VL - 21

SP - 285

EP - 305

JO - Technology, Knowledge and Learning

JF - Technology, Knowledge and Learning

SN - 2211-1662

IS - 3

ER -

DOI

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