Avhandlingar
Disputation

Disputation i data- och informationsvetenskap: Zeynab Mohseni

Avhandlingens titel:

Utveckling av visuella datadrivna verktyg för att utforska lärande och engagemang hos elever i grundskola, gymnasium och högre utbildning

Forskarutbildningsämne:

Data- och informationsvetenskap

Fakultet:

Fakulteten för teknik

Datum:

Fredag 13 september 2024 kl 10:00

Plats för disputation:

Sal Weber, Hus K, Växjö

Opponent:

Professor Hendrik Drachsler, Goethe University Frankfurt, Tyskland

Betygsnämnd:

Associate professor Olga Viberg, Kungliga Tekniska Högskola
Associate professor Linnéa Stenliden, Linköpings universitet
Professor Johan Lundin, Göteborgs universitet

Suppleant för betygsnämnd:
Associate professor Fisnik Dalipi, Linnéuniversitetet

Ordförande:

Associate professor Arianit Kurti, Linnéuniversitetet

Handledare:

Professor Italio Masiello, Linnéuniversitetet

Biträdande handledare:

Lektor Rafael Messias Martins, Linnéuniversitetet samt Professor Marcelo Milrad, Linnéuniversitetet

Examinator:

Professor Anita Mirijamdotter, Linnéuniversitetet

Spikning:

Fredag 23 augusti 2024 kl 13:00 på Universitetsbibliotektet i Växjö

Welcome to follow the public defence via link

https://lnu-se.zoom.us/j/62863101828

Innehåll

Schools and educational institutions collect large amounts of data about students and their learning, including text, grades, quizzes, timestamps, and other activities. However, in primary and secondary education, this data is often dispersed across different digital platforms, lacking standardized methods for collection, processing, analysis, and presentation. These issues hinder teachers and students from making informed decisions or strategic and effective use of data. This presents a significant obstacle to progress in education and the effective development of Educational Technology (EdTech) products. Visual Learning Analytics (VLA) tools, also known as Learning Analytics Dashboards (LADs), are designed to visualize student data to support pedagogical decision-making. Despite their potential, the effectiveness of these tools remains limited. Addressing these challenges requires both technical solutions and thoughtful design considerations, as explored in Papers 1 through 5 of this thesis. Paper 1 examines the design aspects of VLA tools by evaluating higher education data and various visualization and Machine Learning (ML) techniques. Paper 2 provides broader insights into the VLA landscape through a systematic review, mapping key concepts and research gaps in VLA and emphasizing the potential of VLA tools to enhance pedagogical decisions and learning outcomes. Meanwhile, Paper 3 delves into a technical solution (data pipeline and data standard) considering a secure Swedish warehouse, SUNET. This includes a data standard for integrating educational data into SUNET, along with customized scripts to reformat, merge, and hash multiple student datasets. Papers 4 and 5 focus on design aspects, with Paper 4 discussing the proposed Human-Centered Design (HCD) approach involving teachers in co-designing a simple VLA tool. Paper 5 introduces a scenario-based framework for Multiple Learning Analytics Dashboards (MLADs) development, stressing user engagement for tailored LADs that facilitate informed decision-making in education. The dissertation offers a comprehensive approach to advancing VLA tools, integrating technical solutions with user-centric design principles. By addressing data integration challenges and involving users in tool development, these efforts aim to empower teachers in leveraging educational data for improved teaching and learning experiences.