TY - JOUR
T1 - Finding Contributing Factors of Students’ Academic Achievement Using Quantitative and Qualitative Analyses-Based Information Extraction
AU - Yunita, Ariana
AU - Santoso, Harry B.
AU - Hasibuan, Zainal A.
N1 - Funding Information:
This study is partly funded by Lembaga Pengelola Dana Pendidikan (LPDP). Ms Yunita is in her doctoral study supported by Beasiswa Unggulan Dosen Indonesia Dalam Negeri (BUDI-DN), Lembaga Pengelola Dana Pendidikan (LPDP), and cooperation of the Ministry of Research and Higher Education and the Ministry of Finance of the Republic of Indonesia.
Publisher Copyright:
© 2022, International Journal of Emerging Technologies in Learning. All Rights Reserved.
PY - 2022
Y1 - 2022
N2 - Big data learning analytics is still in its infancy and has been developed on several campuses worldwide. Ideally, all students' profiles should be described and embraced to optimize the development of any proposed system related to big data learning analytics. This paper aims to extract information related to factors contributing to students’ academic achievement using quantitative and qualitative approach, in which co-occurrence analysis were applied for quantitative approach and facet analysis for the qualitative approach. For data collection, Kitchenham’s technique were used to select and filter the literature, at the first iteration, 1,167 papers were found. After applying inclusion and exclusion criteria, 101 articles were processed for text mining. Titles and abstracts were analyzed using a text-mining tool, and then resulted clusters of words. Afterwards, clusters of words were labeled using facet analysis. This study results in eight interrelated clusters of academic achievement factors: demography, internal consistency, technology, student course engagement, activity in a classroom, educational system, socio-culture, and personality.
AB - Big data learning analytics is still in its infancy and has been developed on several campuses worldwide. Ideally, all students' profiles should be described and embraced to optimize the development of any proposed system related to big data learning analytics. This paper aims to extract information related to factors contributing to students’ academic achievement using quantitative and qualitative approach, in which co-occurrence analysis were applied for quantitative approach and facet analysis for the qualitative approach. For data collection, Kitchenham’s technique were used to select and filter the literature, at the first iteration, 1,167 papers were found. After applying inclusion and exclusion criteria, 101 articles were processed for text mining. Titles and abstracts were analyzed using a text-mining tool, and then resulted clusters of words. Afterwards, clusters of words were labeled using facet analysis. This study results in eight interrelated clusters of academic achievement factors: demography, internal consistency, technology, student course engagement, activity in a classroom, educational system, socio-culture, and personality.
KW - Big data learning analytics
KW - Co-occurrence analysis
KW - Facet
KW - Student’s success
KW - Text mining
UR - http://www.scopus.com/inward/record.url?scp=85137619753&partnerID=8YFLogxK
U2 - 10.3991/ijet.v17i16.31945
DO - 10.3991/ijet.v17i16.31945
M3 - Article
AN - SCOPUS:85137619753
SN - 1868-8799
VL - 17
SP - 108
EP - 125
JO - International Journal of Emerging Technologies in Learning
JF - International Journal of Emerging Technologies in Learning
IS - 16
ER -