Predicting Students’ Achievement in a Hybrid Environment Through Self-Regulated Learning, Log Data, and Course Engagement: A Data Mining Approach

2021 ◽  
pp. 073563312110561
Author(s):  
Amira D. Ali ◽  
Wael K. Hanna

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 develop Self-Regulated Learning (SRL) strategies to monitor their learning in hybrid contexts. This study aimed to predict the achievement of 82 undergraduates enrolled in a hybrid English for Business Communication course using data mining techniques. While clustering techniques were used to understand SRL patterns through classifying students with similar SRL data into clusters, classification algorithms were utilized to predict students' achievement by integrating the log files and course engagement factors. Clustering results showed that the group with high SRL achieved higher grades than the groups with medium SRL and low SRL. Classification results revealed that log data and engagement activities successfully predicted students’ academic performance with more than 88% accuracy. Therefore, this study contributes to the literature of SRL and hybrid classrooms by interpreting the predictive power of log data, self-reports, and face-to-face engagement to predict students’ achievement, a relatively unexplored area. This study recommended practical implications to promote students’ SRL and achievement in hybrid environments.

2018 ◽  
Vol 8 (7) ◽  
pp. 1191 ◽  
Author(s):  
MyungSuk Lee ◽  
MuMoungCho Han ◽  
JuGeon Pak

In 2016, the number of mobile phone subscriptions worldwide had surpassed the total world population; moreover, the number of smartphone addicts is increasing each year. Thus, the objective of this study is to analyze smartphone addiction by considering the differences between smartphone usage patterns as well as cognition. Our proposed method involves automatically collecting and analyzing data through an app instead of using the existing self-reporting method, thereby improving the accuracy of data and ensuring data reliability from respondents. Based on the results of our study, we observed that there is a significant cognitive bias between the self-reports and automatically collected data. As a result of applying data mining, among the six criteria out of the total 24 items of the questionnaire, the higher the “recurrence” item, the higher the addiction; further, “forbidden” item 1 had the largest effect on addiction. In addition, the input variables that have the greatest influence on the high-risk users were the number of times the screen was turned on and real-use time/cognitive-use time. However, the amount of data and time of smartphone usage were not related to addiction. In the future, we will modify the app to obtain more accurate data, based on which, we can analyze the effects of smartphone addiction, such as depression, anxiety, stress, self-esteem, and emotional regulation, among others.


Author(s):  
Eric Araka ◽  
Robert Oboko ◽  
Elizaphan Maina ◽  
Rhoda K. Gitonga

Self-regulated learning is attracting tremendous researches from various communities such as information communication technology. Recent studies have greatly contributed to the domain knowledge that the use self-regulatory skills enhance academic performance. Despite these developments in SRL, our understanding on the tools and instruments to measure SRL in online learning environments is limited as the use of traditional tools developed for face-to-face classroom settings are still used to measure SRL on e-learning systems. Modern learning management systems (LMS) allow storage of datasets on student activities. Subsequently, it is now possible to use Educational Data Mining to extract learner patterns which can be used to support SRL. This chapter discusses the current tools for measuring and promoting SRL on e-learning platforms and a conceptual model grounded on educational data mining for implementation as a solution to promoting SRL strategies.


Author(s):  
Chia-Wen Tsai ◽  
Pei-Di Shen

Many educational institutions provide online courses; however, the question whether they can be as effective as those offered in the face-to-face classroom format still exists. In addition, it also remains unclear whether every subject is appropriate to be delivered in web-based learning environments. Thus, the authors redesigned two courses with different orientations and conducted a quasi-experiment to examine the effects of web-enabled self-regulated learning (SRL) in different course orientations on students’ computing skills. Four classes with 173 students from the courses ‘Database Management System’ and ‘Packaged Software and Application’ were divided into 2 (Design-oriented vs. Procedural-oriented) × 2 (SRL vs. non-SRL) experimental groups. The results showed that students who received the intervention of web-enabled SRL had significantly higher grades on the examination for certificates than those that did not receive this intervention, whether in design-oriented or procedural-oriented computing courses. Moreover, students in the two different courses had very similar scores, which resulted in non-significant differences in their end-of-term computing skills.


2021 ◽  
Vol 15 (2) ◽  
pp. 305-316
Author(s):  
Ratih Laily Nurjanah ◽  
Deswandito Dwi Saptanto ◽  
Maya Kurnia Dewi

Teaching speaking is considered challenging during this outbreak era where lecturers and students cannot have a face-to-face meeting while in fact, students still need to get examples from lecturers related to pronunciation and intonation especially. A module of speaking for informal interaction is developed to support the process of teaching and learning speaking skills. This module comes with an audio-CD of daily expressions records spoken by a native speaker to give examples of standard pronunciation and intonation. This study aims to explain the steps used in the learning process using the module. It uses narrative design to describe the steps. The findings of the study implied that lecturers need to explain what the module is and how to use it followed by some steps; introducing lesson plan, playing audio-CD, imitating the records, practicing independently, working in pairs, reporting works, receiving feedback. By giving the model or examples in audio, students can repeat it as much as they need and whenever they need it. This study's implication is giving standardized materials using authentic materials to teach speaking skills with a self-regulated learning strategy. 


2017 ◽  
Vol 5 (2) ◽  
pp. 203
Author(s):  
W. Syuhida ◽  
Zainal Rafli ◽  
Ninuk Lustyantie

<p><em>This research aimed to find out the effect of learning model and self-regulated learning toward English writing skill. It was an experimental study by using treatment by level 2 x 2 design. The population was the first year students with the sample was 32 students. The data were collected through the questionnaire of self-regulated learning and the test of English writing skill. The data were analyzed by two way ANOVA and Tukey test. The result of the data analysis showed that (1) the students’ English writing skill who were taught by using hybrid learning was higher than the writing skill students’ score who were taught by using face-to-face learning; (2) there was an interaction effect between hybrid learning model and self-regulated learning toward English writing skill; (3) the students’ English writing skill who were taught by using hybrid learning was higher than the writing skill students’ score who were taught by using face-to-face learning for group of students who have higher self-regulated learning;</em><em> </em><em>(4) the students’ English writing skill who were taught by using face-to-face learning was higher than the writing skill students’ score who were taught by using hybrid learning for group of students who have low self-regulated learning.</em></p>


Sign in / Sign up

Export Citation Format

Share Document