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Obeng, Asare Yaw – Cogent Education, 2023
The learning processes have been significantly impacted by technology. Numerous learners have adopted technology-based learning systems as the preferred form of learning. It is then necessary to identify the learning styles of learners to deliver appropriate resources, engage them, increase their motivation, and enhance their satisfaction and…
Descriptors: Predictor Variables, Cognitive Style, Electronic Learning, College Freshmen
Chuan Cai; Adam Fleischhacker – Journal of Educational Data Mining, 2024
We propose a novel approach to address the issue of college student attrition by developing a hybrid model that combines a structural neural network with a piecewise exponential model. This hybrid model not only shows the potential to robustly identify students who are at high risk of dropout, but also provides insights into which factors are most…
Descriptors: College Students, Student Attrition, Dropouts, Potential Dropouts
Hadj Kacem, Yessine; Alshehri, Safa; Qaid, Talal – Journal of Information Technology Education: Innovations in Practice, 2022
Aim/Purpose: This paper presents a machine learning approach for analyzing Course Learning Outcomes (CLOs). The aim of this study is to find a model that can check whether a CLO is well written or not. Background: The use of machine learning algorithms has been, since many years, a prominent solution to predict learner performance in Outcome Based…
Descriptors: Outcomes of Education, Artificial Intelligence, Educational Assessment, Classification
MD, Soumya; Krishnamoorthy, Shivsubramani – Education and Information Technologies, 2022
In recent times, Educational Data Mining and Learning Analytics have been abundantly used to model decision-making to improve teaching/learning ecosystems. However, the adaptation of student models in different domains/courses needs a balance between the generalization and context specificity to reduce the redundancy in creating domain-specific…
Descriptors: Predictor Variables, Academic Achievement, Higher Education, Learning Analytics
Gorgun, Guher; Yildirim-Erbasli, Seyma N.; Epp, Carrie Demmans – International Educational Data Mining Society, 2022
The need to identify student cognitive engagement in online-learning settings has increased with our use of online learning approaches because engagement plays an important role in ensuring student success in these environments. Engaged students are more likely to complete online courses successfully, but this setting makes it more difficult for…
Descriptors: Online Courses, Group Discussion, Learner Engagement, Student Participation
Beaulac, Cédric; Rosenthal, Jeffrey S. – Research in Higher Education, 2019
In this article, a large data set containing every course taken by every undergraduate student in a major university in Canada over 10 years is analysed. Modern machine learning algorithms can use large data sets to build useful tools for the data provider, in this case, the university. In this article, two classifiers are constructed using random…
Descriptors: Foreign Countries, Predictor Variables, Undergraduate Students, College Graduates
Al-Sudani, Sahar; Palaniappan, Ramaswamy – Education and Information Technologies, 2019
The students' progression and attainment gap are considered as key performance indicators of many universities worldwide. Therefore, universities invest significantly in resources to reduce the attainment gap between good and poor performing students. In this regard, various mathematical models have been utilised to predict students' performances…
Descriptors: Predictor Variables, College Students, Achievement Gap, Educational Attainment
Kurt C. Mayer; Alan L. Morse; Yash Padhye – Sport Management Education Journal, 2024
The current exploratory study determined the prevalence of the sport management academic degree being offered in top-ranked institutions as based on "U.S. News & World Report" rankings. A focus on the differences of bachelor's, master's, and doctoral degrees being offered, or not offered, was placed on national universities and…
Descriptors: Higher Education, Institutional Characteristics, Reputation, Athletics
Burbage, Amanda K.; Glass, Chris R. – Educational Policy, 2023
To achieve Higher Education Act Title V funding goals, policymakers must reconsider approaches, respond to Hispanic-Serving Institution (HSI) diversity, and prioritize servingness. This study investigated HSI heterogeneity across traditional performance metrics and student-engagement indicators using data sources previously only examined…
Descriptors: Financial Support, Minority Serving Institutions, Hispanic American Students, Educational Equity (Finance)
Ali, Amira D.; Hanna, Wael K. – Journal of Educational Computing Research, 2022
With the spread of the COVID-19 pandemic, many universities adopted a hybrid learning model as a substitute for a traditional one. Predicting students' performance in hybrid environments is a complex task because it depends on extracting and analyzing different types of data: log data, self-reports, and face-to-face interactions. Students must…
Descriptors: Predictor Variables, Academic Achievement, Blended Learning, Independent Study
Ortiz-Lozano, José María; Rua-Vieites, Antonio; Bilbao-Calabuig, Paloma; Casadesús-Fa, Martí – Innovations in Education and Teaching International, 2020
Student dropout is a major concern in studies investigating higher education retention strategies. However, studies investigating the optimal time to identify students who are at risk of withdrawal and the type of data to be used are scarce. Our study consists of a withdrawal prediction analysis based on classification trees using both…
Descriptors: At Risk Students, Dropouts, Undergraduate Students, Withdrawal (Education)
Ünsal Özbek, Elif Bengi; Yetkiner, Alper – International Journal of Psychology and Educational Studies, 2021
The developments and changes that have accompanied the COVID-19 pandemic have affected the educational world and all sectors. Educational institutions around the world have implemented emergency and online educational practises to ensure continuity of education as opposed to the planned distance education activities that were implemented for…
Descriptors: Regression (Statistics), Classification, Instructional Effectiveness, Electronic Learning
Park, Shinjae – Journal of Language and Linguistic Studies, 2022
Based on the quantitative analysis of L2 English texts from Korean undergraduates, the present paper demonstrates the possibility of distinguishing L2 speaking proficiency with differing measures of syntactic complexity in English writing. To this end, 14 measures of complexity were gauged using an L2 Syntactic Analyzer (Lu, 2010) in 89 EFL essays…
Descriptors: English (Second Language), Second Language Learning, Second Language Instruction, Essays
Kang, Minchul; Lee, Juyoung; Lee, A-Ra – Asia Pacific Education Review, 2020
This study identified the subgroups (latent classes) of Korean college students according to the influence of perfectionism on career stress and indecision, and explored the effects of sub-factors of perfectionism on career stress and indecision for each subgroup. Also, the study examined how individual self-esteem and stress coping styles affect…
Descriptors: College Students, Stress Variables, Coping, Personality Traits
Alvarez, Niurys Lázaro; Callejas, Zoraida; Griol, David – Journal of Technology and Science Education, 2020
We present an educational data analytics case study aimed at the early detection of potential dropout in Computer Engineering studies in Cuba. We have employed institutional data of 456 students and performed several experiments for predicting their permanency into three (promotion, repetition, and dropout) or two classes (promoting, not…
Descriptors: Foreign Countries, College Students, Computer Science Education, Engineering Education