Learning analytics to support self-regulated learning in asynchronous online courses: A case study at a women's university in South Korea

被引:87
|
作者
Kim, Dongho [1 ]
Yoon, Meehyun [2 ]
Jo, Il-Hyun [3 ]
Branch, Robert Maribe [2 ]
机构
[1] Univ Florida, Coll Educ, Sch Teaching & Learning, Gainesville, FL 32611 USA
[2] Univ Georgia, Coll Educ, Dept Career & Informat Studies, Athens, GA 30602 USA
[3] Ehwa Womans Univ, Dept Educ Technol, Coll Educ, Seoul, South Korea
基金
新加坡国家研究基金会;
关键词
Learning analytics; Self-regulated learning; Asynchronous online courses; Education data mining; Instructional strategies; ACADEMIC HELP-SEEKING; STUDENTS PERCEPTIONS; PROXY VARIABLES; MOTIVATION; STRATEGIES; ACHIEVEMENT; SATISFACTION; EFFICACY; ENVIRONMENTS; MATHEMATICS;
D O I
10.1016/j.compedu.2018.08.023
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
With the recognition of the importance of self-regulated learning (SRL) in asynchronous online courses, recent research has explored how SRL strategies impact student learning in these learning environments. However, little has been done to examine different patterns of students with different SRI, profiles over time, which precludes providing optimal on-going instructional support for individual students. To address the gap in research, we applied learning analytics to analyze log data from 284 undergraduate students enrolled in an asynchronous online statistics course. Specifically, we identified student SRI, profiles, and examined the actual student SRI learning patterns. The k-medoids clustering identified three self-regulated learning profiles: self-regulation, partial self-regulation, and non-self-regulation. Self-regulated students showed more study regularity and help-seeking, than did the other two groups of students. The partially self-regulated students showed high study regularity but inactive help-seeking, while the non-self-regulated students exhibited less study regularity and less frequent help-seeking than the other two groups; their self-reported time management scores were significantly lower. The analysis of each week's log variables using the random forest algorithm revealed that self-regulated students studied course content early before exams and sought help during the general exam period, whereas non self-regulated students studied the course content during the general exam period. Based on our findings, we provide instructional strategies that can be used to support student SRL. We also discuss implications of this study for advanced learning analytics research, and the design of effective asynchronous online courses.
引用
收藏
页码:233 / 251
页数:19
相关论文
共 50 条
  • [31] Using Multimodal Learning Analytics to Validate Digital Traces of Self-Regulated Learning in a Laboratory Study and Predict Performance in Undergraduate Courses
    Bernacki, Matthew L.
    Yu, Linyu
    Kuhlmann, Shelbi L.
    Plumley, Robert D.
    Greene, Jeffrey A.
    Duke, Rebekah F.
    Freed, Rebekah
    Hollander-Blackmon, Christina
    Hogan, Kelly A.
    JOURNAL OF EDUCATIONAL PSYCHOLOGY, 2025, 117 (02) : 176 - 205
  • [32] Learning Analytics to Reveal Links Between Learning Design and Self-Regulated Learning
    Fan, Yizhou
    Matcha, Wannisa
    Uzir, Nora'ayu Ahmad
    Wang, Qiong
    Gasevic, Dragan
    INTERNATIONAL JOURNAL OF ARTIFICIAL INTELLIGENCE IN EDUCATION, 2021, 31 (04) : 980 - 1021
  • [33] Effects of Internal and External Conditions on Strategies of Self-regulated Learning: A Learning Analytics Study
    Srivastava, Namrata
    Fan, Yizhou
    Rakovic, Mladen
    Singh, Shaveen
    Jovanovic, Jelena
    van Der Graaf, Joep
    Lim, Lyn
    Surendrannair, Surya
    Kilgour, Jonathan
    Molenaar, Inge
    Bannert, Maria
    Moore, Johanna
    Gasevic, Dragan
    LAK22 CONFERENCE PROCEEDINGS: THE TWELFTH INTERNATIONAL CONFERENCE ON LEARNING ANALYTICS & KNOWLEDGE, 2022, : 392 - 403
  • [34] Tools to Support Self-Regulated Learning in Online Environments: Literature Review
    Perez-Alvarez, Ronald
    Maldonado-Mahauad, Jorge
    Perez-Sanagustin, Mar
    LIFELONG TECHNOLOGY-ENHANCED LEARNING, EC-TEL 2018, 2018, 11082 : 16 - 30
  • [35] nStudy: Software for Learning Analytics about Learning Processes and Self-Regulated Learning
    Winne, Philip H.
    Teng, Kenny
    Chang, Daniel
    Lin, Michael Pin-Chuan
    Marzouk, Zahia
    Nesbit, John C.
    Patzak, Alexandra
    Rakovic, Mladen
    Samadi, Donya
    Vytasek, Jovita
    JOURNAL OF LEARNING ANALYTICS, 2019, 6 (02): : 95 - 106
  • [36] Learning Analytics to Reveal Links Between Learning Design and Self-Regulated Learning
    Yizhou Fan
    Wannisa Matcha
    Nora’ayu Ahmad Uzir
    Qiong Wang
    Dragan Gašević
    International Journal of Artificial Intelligence in Education, 2021, 31 : 980 - 1021
  • [37] Effectiveness of adaptive self-regulated learning in online learning courses for undergraduate nursing students - A mixed-methods study
    Chan, Engle Angela
    Mak, Yim Wah
    Kor, Patrick
    Cheung, Kin
    Wu, Cynthia
    Lai, Timothy
    NURSE EDUCATION TODAY, 2025, 148
  • [38] Visual Learning Analytics of Multidimensional Student Behavior in Self-regulated Learning
    Martins, Rafael M.
    Berge, Elias
    Milrad, Marcelo
    Masiello, Italo
    TRANSFORMING LEARNING WITH MEANINGFUL TECHNOLOGIES, EC-TEL 2019, 2019, 11722 : 737 - 741
  • [39] Effects of Learning Analytics on Students' Self-Regulated Learning in Flipped Classroom
    Sedraz Silva, Joao Carlos
    Zambom, Erik
    Rodrigues, Rodrigo Lins
    Cavalcanti Ramos, Jorge Luis
    de Souza, Fernando da Fonseca
    INTERNATIONAL JOURNAL OF INFORMATION AND COMMUNICATION TECHNOLOGY EDUCATION, 2018, 14 (03) : 91 - 107
  • [40] Time will tell: The role of mobile learning analytics in self-regulated learning
    Tabuenca, Bernardo
    Kalz, Marco
    Drachsler, Hendrik
    Specht, Marcus
    COMPUTERS & EDUCATION, 2015, 89 : 53 - 74