Learning Feedback Based on Dispositional Learning Analytics

The combination of trace data captured from technology-enhanced learning support systems, formative assessment data and learning disposition data based on self-report surveys, offers a very rich context for learning analytics applications. In previous research, we have demonstrated how such Dispositional Learning Analytics applications not only have great potential regarding predictive power, e.g. with the aim to promptly signal students at risk, but also provide both students and teacher with actionable feedback. The ability to link predictions, such as a risk for drop-out, with characterizations of learning dispositions, such as profiles of learning strategies, implies that the provision of learning feedback is not the end point, but can be extended to the design of learning interventions that address suboptimal learning dispositions. Building upon the case studies we developed in our previous research, we replicated the Dispositional Learning Analytics analyses in the most recent 17/18 cohort of students based on the learning processes of 1017 first-year students in a blended introductory quantitative course. We conclude that the outcomes of these analyses, such as boredom being an important learning emotion, planning and task management being crucial skills in the efficient use of digital learning tools, help both predict learning performance and design effective interventions.

[1]  Dirk T. Tempelaar,et al.  Investigating learning strategies in a dispositional learning analytics context: the case of worked examples , 2018, LAK.

[2]  Dirk T. Tempelaar,et al.  A multi-modal study into students' timing and learning regulation: time is ticking , 2018, Interact. Technol. Smart Educ..

[3]  Denise Whitelock,et al.  The influence of internationalised versus local content on online intercultural collaboration in groups: A randomised control trial study in a statistics course , 2018, Comput. Educ..

[4]  Xavier Ochoa,et al.  Multimodal Learning Analytics , 2017 .

[5]  Jason M. Harley,et al.  Using Trace Data to Examine the Complex Roles of Cognitive, Metacognitive, and Emotional Self-Regulatory Processes During Learning with Multi-agent Systems , 2013 .

[6]  Dirk T. Tempelaar,et al.  How achievement emotions impact students' decisions for online learning, and what precedes those emotions , 2012, Internet High. Educ..

[7]  Andrew J. Martin Examining a multidimensional model of student motivation and engagement using a construct validation approach. , 2007, The British journal of educational psychology.

[8]  Bart Rienties,et al.  Reviewing affective, behavioural and cognitive learning gains in higher education , 2018, Assessment & Evaluation in Higher Education.

[9]  Konstantina Chrysafiadi,et al.  Questionnaires and artificial neural networks: A literature review on modern techniques in education , 2017, 2017 IEEE Global Engineering Education Conference (EDUCON).

[10]  Dirk T. Tempelaar,et al.  Towards Actionable Learning Analytics Using Dispositions , 2017, IEEE Transactions on Learning Technologies.

[11]  Dirk T. Tempelaar,et al.  Computer Assisted, Formative Assessment and Dispositional Learning Analytics in Learning Mathematics and Statistics , 2014, CAA.

[12]  Dirk T. Tempelaar,et al.  A structural equation model analyzing the relationship of student achievement motivations and personality factors in a range of academic subject-matter areas , 2007 .

[13]  Dirk T. Tempelaar,et al.  Formative assessment and learning analytics , 2013, LAK '13.

[14]  Dirk T. Tempelaar,et al.  Verifying the Stability and Sensitivity of Learning Analytics Based Prediction Models: An Extended Case Study , 2015, CSEDU.

[15]  Dirk T. Tempelaar,et al.  Adaptive and maladaptive emotions, behaviours and cognitions in the transition to university: The experience of international full degree students , 2016 .

[16]  Dirk Tempelaar Learning analytics and formative assessments in blended learning of mathematics and statistics , 2014 .

[17]  Bart Rienties,et al.  Implementing a Learning Analytics Intervention and Evaluation Framework: what works? , 2017 .

[18]  Simon Buckingham Shum,et al.  Learning dispositions and transferable competencies: pedagogy, modelling and learning analytics , 2012, International Conference on Learning Analytics and Knowledge.

[19]  J. Vermunt Metacognitive, cognitive and affective aspects of learning styles and strategies: A phenomenographic analysis , 1996 .

[20]  Dragan Gasevic,et al.  Handbook of Learning Analytics , 2017 .

[21]  Dirk T. Tempelaar,et al.  Time Preferences, Study Effort, and Academic Performance , 2015, SSRN Electronic Journal.

[22]  Lisa Linnenbrink-Garcia,et al.  Academic Emotions and Student Engagement , 2012 .

[23]  Kou Murayama,et al.  Potential-based achievement goals. , 2015, The British journal of educational psychology.

[24]  Dirk T. Tempelaar,et al.  Understanding the Role of Time on Task in Formative Assessment: The Case of Mathematics Learning , 2015, CAA.

[25]  Konstantina Chrysafiadi,et al.  Student modeling approaches: A literature review for the last decade , 2013, Expert Syst. Appl..

[26]  Ruth Deakin Crick Learning Analytics: Layers, Loops and Processes in a Virtual Learning Infrastructure , 2017 .

[27]  Dirk T. Tempelaar,et al.  In search for the most informative data for feedback generation: Learning analytics in a data-rich context , 2015, Comput. Hum. Behav..

[28]  Dirk T. Tempelaar,et al.  Adding dispositions to create pedagogy-based Learning Analytics , 2017 .

[29]  Dirk T. Tempelaar,et al.  Who Profits Most from Blended Learning? , 2009 .

[30]  Dragan Gasevic,et al.  Detecting Learning Strategies with Analytics: Links with Self-reported Measures and Academic Performance , 2017, J. Learn. Anal..

[31]  Dirk T. Tempelaar,et al.  Student profiling in a dispositional learning analytics application using formative assessment , 2018, Comput. Hum. Behav..

[32]  Dirk T. Tempelaar,et al.  What learning analytics based prediction models tell us about feedback preferences of students , 2016 .

[33]  Dirk T. Tempelaar,et al.  Cultural Differences in Learning Dispositions , 2013 .

[34]  Dirk T. Tempelaar,et al.  How cultural and learning style differences impact students’ learning preferences in blended learning , 2013 .