Using Data Visualizations to Foster Emotion Regulation During Self-Regulated Learning with Advanced Learning Technologies

2017 ◽  
pp. 225-247 ◽  
Author(s):  
Roger Azevedo ◽  
Michelle Taub ◽  
Nicholas V. Mudrick ◽  
Garrett C. Millar ◽  
Amanda E. Bradbury ◽  
...  
2020 ◽  
Vol 37 (4) ◽  
pp. 121-138
Author(s):  
Aikaterini Alexiou ◽  
Fotini Paraskeva

PurposeUndergraduate students often find it difficult to organize their learning activities and manage their learning. Also, teachers need dynamic pedagogical frameworks and learning technologies for supporting learners to advance their academic performance. The purpose of this paper is to investigate the effect of an ePortfolio intervention on self-regulated learning (SRL cognitive, affective, behavioral and contextual processes) and academic achievement.Design/methodology/approachFor the purposes of this study, an ePortfolio was designed and implemented based on SRL. The ePortfolio-based self-regulated learning approach (ePSRL) system encompasses the merits of a social networking platform and the functionalities of a learning management system. The participants were 123 university students (38 females and 85 males) at a computer science department. Students were randomly divided into two groups, the experimental and the control group.FindingsThe results of the study indicate that there is a significant increase of the means across SRL processes between the perceptions in the experimental and the control group. The implementation of the ePSRL approach as a learning module for undergraduate students could enable learners to manage their learning processes, transform their behavior into measurable learning outcomes and foster their academic performance.Originality/valueThis paper considers the importance of SRL and ePortfolios. Also, highlights the need of providing technology enhanced training courses and interventions to undergraduate students for supporting them to thrive during their academic studies. Thus, it proposes a set of educational affordances and practical guidelines that can be used by practitioners, instructional designers and educators in higher education as well as in vocational education and training institutions.


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.


2021 ◽  
Vol 6 ◽  
Author(s):  
Megan D. Wiedbusch ◽  
Vance Kite ◽  
Xi Yang ◽  
Soonhye Park ◽  
Min Chi ◽  
...  

Teachers’ ability to self-regulate their own learning is closely related to their competency to enhance self-regulated learning (SRL) in their students. Accordingly, there is emerging research for the design of teacher dashboards that empower instructors by providing access to quantifiable evidence of student performance and SRL processes. Typically, they capture evidence of student learning and performance to be visualized through activity traces (e.g., bar charts showing correct and incorrect response rates, etc.) and SRL data (e.g., eye-tracking on content, log files capturing feature selection, etc.) in order to provide teachers with monitoring and instructional tools. Critics of the current research on dashboards used in conjunction with advanced learning technologies (ALTs) such as simulations, intelligent tutoring systems, and serious games, argue that the state of the field is immature and has 1) focused only on exploratory or proof-of-concept projects, 2) investigated data visualizations of performance metrics or simplistic learning behaviors, and 3) neglected most theoretical aspects of SRL including teachers’ general lack of understanding their’s students’ SRL. Additionally, the work is mostly anecdotal, lacks methodological rigor, and does not collect critical process data (e.g. frequency, duration, timing, or fluctuations of cognitive, affective, metacognitive, and motivational (CAMM) SRL processes) during learning with ALTs used in the classroom. No known research in the areas of learning analytics, teacher dashboards, or teachers’ perceptions of students’ SRL and CAMM engagement has systematically and simultaneously examined the deployment, temporal unfolding, regulation, and impact of all these key processes during complex learning. In this manuscript, we 1) review the current state of ALTs designed using SRL theoretical frameworks and the current state of teacher dashboard design and research, 2) report the important design features and elements within intelligent dashboards that provide teachers with real-time data visualizations of their students’ SRL processes and engagement while using ALTs in classrooms, as revealed from the analysis of surveys and focus groups with teachers, and 3) propose a conceptual system design for integrating reinforcement learning into a teacher dashboard to help guide the utilization of multimodal data collected on students’ and teachers’ CAMM SRL processes during complex learning.


2021 ◽  
pp. 139-147
Author(s):  
Natanael Delgado Alvarado

This paper describes how an original resource set of learning objects was developed to foster learning to learn (Gargallo Lopez et al., 2020) among student-teachers and how these interactive online materials are planned to be effectively incorporated into an intervention. Such implementation follows an innovative pedagogical framework based on a sociocognitive view of self-regulated learning (SRL) and the integrative learning technologies (ILT) approach to technology. The full project, starting in August 2021, proposes the independent use of the resource set of learning objects as a starting point to assist student-teachers with the development of self-regulated learning in their English courses under this new framework.


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