Pre-conference Schedule
*Please note that all workshops are subject to change and cancellation due to low enrollments. If your workshop is cancelled, your workshop registration will be refunded. All other refunds will follow the LAK24 refund policy found on the registration page.
Monday, March 18, 2024 - Full Day | 9:00 AM to 5:00 PM JST | In-Person Only
This workshop explores Quantitative Ethnography (QE) as a framework for supporting learning analytics in the age of Artificial Intelligence (AI). In many learning contexts, we increasingly have access to rich process data. To make meaning of this evidence, our goal is to develop a qualitatively “thick” description of the data and, thus, of learning. However, the more data we have, the more difficult this process becomes: qualitative analysis becomes less feasible, and quantitative analysis becomes less reliable. QE addresses this problem by using statistical techniques to warrant claims about the quality of thick descriptions. The result is a more unified mixed-methods approach that uniquely links the evidence we collect to learning processes and outcomes. This workshop focuses on different quantitative ethnography techniques that address this challenge, including Epistemic Network Analysis and Knowledge Building Discourse Explorer. The aim of the workshop is to examine these techniques and show how they can be combined to generate a more unified methodology for modeling learning processes and providing actionable insights for research and teaching practices. In addition to showcasing different analysis methods, this workshop includes a presentation of different data coding techniques, including qualitative, AI-supported, and other machine learning methods.
Organizers:
Jun Oshima: Shizuoka University, Japan
Kamila Misiejuk: University of Bergen, Norway
Rogers Kaliisa: University of Oslo, Norway
Jennifer Sciana: UW Madison, US
Zack Swiecki: Monash University, Australia
Brendan Eagan: UW Madison, US
Yeyu Wang: UW Madison, US
Website:
Multimodal learning analytics frequently uses design-based research. In this workshop, we closely consider the methodology underpinning design-based research methods and reflect on how methodology shapes multimodal research. This workshop blends collaborative theoretical reflection and practical knowledge sharing about “doing the work” of multimodal research in learning analytics. In this workshop, participants are positioned as collaborators, and the workshop leaders facilitate discussion by highlighting relevant debates in theory, providing summaries of research, and designing resources and activities to structure reflection, debate, and clarify methodology underpinning our work.
Organizers:
Danielle Hagood,
Daniel Spikol,
Azad Arslan,
Mutlu Cukurova,
Daniele Di Mitri,
Vanessa Echeverria,
Andrew Emerson,
Gloria Fernandez Nieto,
Michail Michail,
Roberto Martinez-Maldonado,
Xavier Ochoa,
Namrata Srivastava,
Yeye Wang,
Website:
Although there is a complex interplay between cognitive, motivational, social, and affective processes during learning, current Learning Analytics (LA) frameworks often overlook the dynamics of these processes. Existing analytical and computational methods are ill-equipped to address these complexities. Thinking and methods in complex dynamic systems (CDS) hold significant potential for addressing these challenges, however, their integration in LA remains limited. This international workshop addresses this gap. This workshop aims to both educate the broader LA community about the potential of CDS, as well as help researchers who are currently applying these methods to learning data identify common challenges in their work and transform the status quo. The participants will explore CDS applications in various learning analytics areas, such as in writing, self-regulated learning, emotion regulation, and social learning, and in a variety of settings, including game-based environments, intelligent tutoring systems, computer-assisted learning, among others. The participants will both have hands-on experience with selected methods and exposure to the current LA applications of CDS.
Organizers:
Oleksandra Poquet,
Muhterem Dindar,
Laura Allen,
Elizabeth Cloude,
Daryn Dever
Website:
https://sites.google.com/view/cdslak2024/submission-guidelines
This is the proposal for the second interactive workshop on Measuring and Facilitating self-regulated learning (SRL). Prior research has shown that SRL skills are essential for successful life-long learning. Measuring SRL based on unobtrusive trace data and facilitating SRL based on real-time analysis such trace data have been pointed out as very valuable research directions. However, major challenges and significant gaps in this area are still many, such as i) the detection, measurement, and validation of SRL processes with trace data is still a much-debated issue within the SRL community; and ii) the design principles for effective interventions and the complex conditions and contexts when these interventions facilitated learning are still not known. Therefore, we aim to improve the measurement and facilitation of SRL by hosting this workshop, and we will provide the participants with hands-on opportunity to experience the measurement and facilitation of SRL using our Trace-SRL tools and discuss how to collaborate using these tools. We aim to share our platform, tasks, data and project experiences, then discuss an annual international joint study to initiate international collaboration and deepen SRL research. Expected outcomes are forming a community of practice, potential collaborative projects, and possible follow-up joint publications.
Organizers:
Yizhou Fan, Peking University
Xinyu Li, Monash University
Mladen Rakovic, Monash University
Dragan Gasevic, Monash University
Website:
Introduction
Research in the field of Learning Analytics has made significant strides. However, the potential of LA has remained largely untapped as the transition from small-scale research endeavors to institutionally wide impact has not been realized. Effective leaders are needed who can navigate the complexities of learning environments, organizational policies, and external practices. Leadership is the key to bridging the gap between promising research and meaningful educational outcomes. For the first time in LAK conferences, we are hosting the LA and AI Leadership Academy.
The LA and AI Leadership Academy for Learning Analytics is an exclusive and competitively selected workshop. The Academy is crafted to empower leaders in education, research labs, or industry roles to develop the skills, mindsets, and peer networks to enact systems-level change within their institution. This comprehensive workshop will immerse participants in the pivotal role that leadership plays in igniting change, implementing effective strategies, fostering innovations, driving impactful research, and deploying LA research for impact. Attendees of the Academy, will enhance their understanding and capabilities of LA, developing LA teams, and planning policy and strategies. Attendees will also forge valuable long-term connections with peers and mentors - networks that will provide ongoing support in navigating the complexities of leadership, extending far beyond the duration of the event. We invite you to apply to the inaugural LA and AI leadership Academy and become a catalyst for change and help shape the future of the field.
Academy Agenda:
• Framing of participant leadership and career goals
• Discussion of leadership qualities and attributes
• Review of complexity leadership in the context of AI and LA disruption
• Barriers to change in complex systems
• Overview of the SPARK framework
• Review successful and unsuccessful case studies of LA and AI institutional adoption
• Co-design a LA and AI centre framing a leadership strategy and actions
• Design a personalised strategy plan for your future role and context
• Mentoring discussions and framing of future leadership goals and career guidance
Workshop Outcomes:
Outcomes of the session include:
• Creation of a personalized strategy to embrace a culture of innovation in your workplace context;
• Personalized career goals and strategies;
• Established network of peers for long-term leadership support and advice; and
• Individual mentoring and connection with established LA and AI leaders.
Application process:
This workshop is ideal for those interested in building their leadership capabilities in the field of AI and LA. The workshop is designed to equip future leaders with the skills and know-how to transition LA and AI innovations into mainstream practice. The workshop will challenge current leadership models and pose new frameworks to help existing and emerging leaders navigate the complexity of LA and AI. If you are engaged in LA and AI initiatives and looking to develop your leadership skills we invite you to apply, regardless of your specific organizational leadership role.
Proposal Format & Submission Process:
To apply to the LA and AI Leadership Academy applicants need to address the following points in a maximum of one page. Applications should be submitted via easychair here: https://easychair.org/my/conference?conf=lak24
1. Provide a summary of your academic/ industry background and workplace context
2. Detail your stage of career and future leadership ambitions
3. Given your role, what are the leadership challenges you see yourself facing over the short and mid term?
4. Describe your personal goals for the workshop
Review Process
The LA and AI Academy chairs will review all applications. Participants will be selected on the basis of:
1. Overall fit for the leadership program based on current or planned institutional leadership roles
2. Future goals for LA and AI leadership
3. Representativeness of the broader LA community to reflect our diversity
Schedule:
The LA and AI Academy will take place during the pre LAK24 conference, to be held in Kyoto, Japan, March 18-22, 2024. The format interleaves research presentations and small-group discussions, so attendees have opportunities for in-depth conversations about their work. A keynote discussion on leadership and career development will conclude the workshop. All participants are encouraged to join the LA academy dinner with mentors and peers to help build lasting networks.
Organizers:
Shane Dawson, University of South Australia
Abelardo Pardo, University of South Australia
Website: https://sites.google.com/view/lak24-leadership-academy/home
Monday, March 18, 2024 - AM Half Day | 9:00 AM to 12:30 PM JST | In-Person
The resurgence of interest in social network analysis (SNA) in educational contexts, spurred on by the proliferation of social networking sites and the integration of digital resources in education, is the focal point of this one-day course. Aimed at education researchers unfamiliar with SNA, the course offers an immersion into social network theory, showcases diverse applications of network analysis in educational settings, and affords hands-on experience with analyzing actual data sets. By weaving theoretical instruction with applied experiences, the course seeks to foster a deep-seated understanding of SNA’s dual role as a theoretical lens and a method of analysis, enabling scholars to harness its potential in understanding and enhancing learning environments and outcomes. This endeavor champions the belief that SNA can be a powerful tool in the continuous effort to improve student learning and the atmospheres in which this learning takes place
Organizers:
Shaun Kellogg, Jeanne McClure, Shiyan Jiang, Susan Hibbard and Doreen Mushi
Website:
The 9th Annual DesignLAK workshop (DesignLAK24) will build on the outcomes of the 2023 workshop to explore how a map of key elements derived from research in the field on Learning Design (LD) and Learning Analytics (LA) can help operationalise the LD/LA connection for research and practice. Over the past year, the team have taken on board feedback received through previous workshops and further analysed the literature to update and refine the map. The workshop will be delivered as a half-day, face-to-face event and enable participants to apply the LDLA Map to authentic LDLA projects, receive feedback, and build collaboration networks. Participants will be asked to bring a project idea to the workshop and work in groups to apply the map to their individual projects. Throughout the activities, participants will discuss challenges and provide feedback on the map's utility. The workshop will close with a group reflection on next steps for their projects, and further recommendations for future development and dissemination of the LDLA Map. The expected outcomes include exposure to the LDLA Map for current and future use, new collaborations, and a series of case reports on the application of the map in different scenarios of LDLA connection.
Organizers:
Linda Corrin, Nancy Law, Daisy Chen, Aneesha Bakharia and Xiao Hu
Monday, March 18, 2024 - PM Half Day | 1:30 PM to 5:00 PM JST | In-Person
As the adoption of digital learning materials in modern education systems is increasing, the analysis of reading behavior and their effect on student performance gains attention. The main motivation of this workshop is to foster research into the analysis of students’ interaction with digital textbooks, and find new ways in which it can be used to inform and provide meaningful feedback to stakeholders: teachers, students and researchers. The previous years workshops at LAK19 and LAK20 focused on reading behavior in higher education, and LAK21, LAK22 and LAK23 on secondary school reading behavior and pre/post COVID-19 pandemic changes. Participants of this year’s workshop will be given the opportunity to analyze several different datasets, including secondary school prediction of academic performance for more than one subject. As with previous years, additional information on lecture schedules and syllabus will also enable the analysis of learning context for further insights into the preview, in-class, and review reading strategies that learners employ. In addition, this workshop will accept a wide range of reaserch topics on learning analytics, educational technology, and learning support systems in the post COVID-19 era, including applications of AI in education, proposals for new educational systems, new evaluation methods, and so on.
Organizers:
Brendan Flanagan, Atsushi Shimada, Fumiya Okubo and Hiroaki Ogata, Hsiao-Ting Tseng, Albert C.M. Yang, Owen H.T. Lu
Website:
Last year's LAK conference featured a workshop dedicated to introducing an innovative concept of learning design (LD) and the utilization of a complimentary software tool for creating and analyzing LD. This year's workshop will turn its focus towards the evolving challenges intertwined with AI's role in LD. Participation in last year's workshop is not a prerequisite for this year's session. The objectives for this year's workshop are twofold: To provide a platform for exchanging experiences, showcasing research findings, and deliberating on the challenges that lie at the intersection of learning analytics (LA) and LD. This encompasses the ethical and impactful integration of AI in the educational paradigm. To introduce attendees to an innovative, free LD tool (learning-design.eu) and its capabilities. Attendees will be immersed in exploring advanced LD analytics using this tool. Participants are invited to collaboratively refine the LD of their courses, programs, or quality assurance endeavours while examining the LA data generated by the tool. This interactive session will empower participants to enhance their courses further, understand the role of design analytics in quality assurance, and harness the potential of AI-driven LD. This half-day, in-person workshop is a collaborative effort by three universities from Europe and Australia.
Organizers:
Blazenka Divjak, Barbi Svetec, Dragan Gašević, Mladen Raković and Bart Rienties
Website:
Tuesday, March 19, 2024 - Full Day | 9:00 AM to 5:00 PM JST | In-Person
- abstract representations of learning
- additive/conjunctive factor models
- adversarial learning
- causal models
- cognitive diagnostic models
- deep generative models such as deep knowledge tracing
- item response theory
- models of learning and forgetting (spaced repetition)
- multi-armed bandits
- multi-task learning
- reinforcement learning
Samuel Girard, Inria, France
Hisashi Kashima, Kyoto University, Japan
Fabrice Popineau, CentraleSupélec & LRI, France
Jill-Jênn Vie, Inria, France
Yong Zheng, Illinois Institute of Technology, USA
Website:
The first three editions of the Workshop on Learning Analytics and Assessment were successfully organized at LAK21-23 conferences, resulting in multiple post-workshop collaborations and a special issue in a journal. In this workshop, we intend to address some of the key open challenges in learning analytics that are related to use of learning analytics in formative and summative assessment; measurement of learning progression; reliability and validity of data collection and analysis; and assurance of assessment trustworthiness, in particular given the emergence of the generative artificial intelligence (AI) methods. An open call for contributions will be distributed to solicit brief descriptions of current research and practice projects for roundtable-style discussions with workshop participants. Expected outcomes are the further formation of a community of practice and possible follow-up publications and special issues in journals.
Organizers:
Dragan Gasevic, Mladen Rakovic, Blazenka Divjak, Yoon Jeon Kim, Naif Aljohani and Abhinava Barthakur
Website:
Our international, multidisciplinary research Centre X organises this interactive workshop on how to use multiple data streams to measure and support students’ self- regulated learning (SRL) through human-AI collaboration. Prior research has shown that supporting SRL through learning analytics (LA) fosters life-long learning skills. However, there are still major challenges for the LA community conducting research in this area: i) identifying useful data streams to measure different SRL processes in an unobtrusive, valid, and reliable manner; and ii) supporting SRL with LA backed interventions. Therefore, this full-day workshop facilitates a program of research integrating different types of SRL trace data into LA-based supports by i) presenting empirical and theoretical studies; ii) initiating multidisciplinary dialogue (e.g., computer science, learning sciences) to foster cross-team collaborations and promote transdisciplinary perspectives on human-AI collaborations for SRL; and iii) providing workshop participants with hands-on opportunities to collect multi-trace data and investigate different personalized support types (e.g. dashboard, scaffolding, NLP generated prompts) based on human-AI collaboration. Expected outcomes are forming a community of research and practice within the field LA; identifying potential areas for collaborative projects; and promoting future collaborations for joint publications and grant submissions.
Organizers:
Joni Lämsä, Susanne de Mooij, Daryn Dever, Lyn Lim, Mladen Rakovic, Megan Wiedbusch, Roger Azevedo, Maria Bannert, Dragan Gasevic, Inge Molenaar and Sanna Järvelä
Website:
This full day event is for those students selected to the LAK24 Doctoral Consortium.
Tuesday, March 19, 2024 - AM Half Day | 9:00 AM to 12:30 PM JST | In-Person
Generative artificial intelligence (GenAI) presents a transformative opportunity to advance the field of learning analytics (LA). Its capabilities extend from automating the analysis of unstructured data and crafting adaptive educational resources to enhancing the presentation of LA outcomes through rich narratives and detailed explanations. This first GenAI-LA workshop is conceived as a catalyst for dialogue and partnership, spotlighting the potential of GenAI in LA. By assembling a diverse group of learning scientists, LA practitioners, software engineers, and AI specialists, we aim to foster a comprehensive exploration and envisioning of GenAI's pivotal role in advancing LA research and practices.
Organizers:
Lixiang Yan, Andy Nguyen, Lele Sha, Jionghao Lin, Mutlu Cukurova, Kshitij Sharma, Roberto Martinez-Maldonado, Linxuan Zhao, Yuheng Li and Dragan Gasevic
Website:
The successful application of Learning Analytics (LA) can improve student learning outcomes, student support and teaching. The key-challenges for LA adoption (i.e., Ethics, Leadership, Analytics culture, Analytics capabilities, Stakeholder involvement, and Technology) have been investigated. However, large-scale adoption remains lacking as does research into it. This half-day workshop organized in cooperation of several European universities has the aim to provide support to researchers and practitioners for realizing large scale adoption of practicable LA within higher education and the essential research thereon. Research and insights from the varied European contexts will be presented in this workshop for comparison with researchers from other non-European and other European contexts. The idea is that this exchange will provide insights to learn from the differences and overcome global challenges for successful adoption of LA at scale.
Organizers:
Ludo W. van Meeuwen, Bart Rienties, Hendrik Drachsler, Olga Viberg, Rianne Conijn, Caroline Vonk, Jan Willem Brijan and Marcus Specht
Website:
Organizers:
Lukas Menzel, Ioana Jivet, Sebastian Gombert, Hendrik Drachsler, Tornike Giorgashvili and Marcel Schmitz
Website:
The pursuit of actionability in learning analytics has long been a central aim, yet the knowledge base related to improving it has remained relatively sparse and disconnected. This workshop aims to initiate unifying discussions on how “actionability” can be conceptualized for the learning analytics community. During the workshop, we will define and refine actionability from various stakeholder perspectives: technical (for tech developers), design (for designers), self-regulated learning (for learners), and classroom orchestration (for teachers); and then explore how these perspectives can be used to inform the development of analytics tools, learning designs, and impact measurement. Through diverse discussions and consolidation efforts, this workshop seeks to develop a comprehensive framework with tangible implications and foster a network of interested researchers and practitioners in actionable learning analytics
Organizers:
Yeonji Jung, Alyssa Wise, Yannis Dimitriadis, yannis@tel.uva.es, Ishari Amarasinghe
Website:
Tuesday, March 19, 2024 - PM Half Day | 1:30 PM to 5:00 PM JST | In-Person
Data Storytelling (DS) in Learning Analytics (LA) has proven as an effective approach to communicating insights to non-data experts (e.g., students and teachers). DS brings the promise to incorporate narratives into LA interfaces (e.g., dashboards) to facilitate the provision of direct feedback and pedagogical explanations. The LA community has researched Data Storytelling principles and techniques to support educational stakeholders in interpreting their teaching and learning progress. However, given the relevance of the story narrative, challenges arise to provide unbiased, fair, and meaningful stories without misleading the communication of insights. This workshop aims to explore the formal and practical challenges and opportunities of DS by engaging in discussions with the LA community. In this workshop, we expect to spark discussion on these main topics: What methods and methodologies of DS from other domains are suitable for LA? How to evaluate the impact of DS in LA? How can we automate the process of generating fair and unbiased data stories to facilitate sense-making and effectively communicate insights? This workshop will bring together storytelling researchers and practitioners, whose data storytelling in LA is a special case, to clarify and converge on the future of DS in LA related to their challenges and opportunities.
Organizers:
Website:
This workshop proposal explores how learning analytics can reconcile deficit- and asset-based approaches. Deficit-based models, which focus on identifying and remedying learner shortcomings, have been effective but may neglect students' existing strengths. Conversely, asset-based approaches emphasize recognizing learners' identities as assets to their learning. We advocate for a combination of both. We ground our discussion in the data feminism framework, which scrutinizes power structures in data design and interpretation. We will delve into three core data feminism principles: examine power, challenge power, and rethink binaries and hierarchies, to construct narratives affirming students' diverse identities. Through presentations, discussions, and interactive activities, we aim to develop a set of questions that allow researchers to reflect on their data and create cohesive narratives aligning asset and deficit perspectives.
Organizers:
Angela Stewart, Stephen Hutt and Caitlin Mills
Website:
https://sites.google.com/view/lak-2024-asset-based-workshop/
The purpose of this interactive workshop is to provide a hands-on introduction to curriculum developed as part of the Anonymized Institute, a professional development program for early and mid-career researchers funded by the National Science Foundation (ECR: BCSER). The intended audience for this workshop includes early-career and experienced scholars seeking who currently teach, or have a desire to teach, learning analytics methodologies. The primary aim of this workshop is to support participants interested in incorporating LASER curriculum materials into webinars, workshops, courses or programs at their home institution. Participants in this workshop will learn about the design and structure of the 25+ learning modules covering a range of topics and techniques like machine learning, network analysis, and text mining. Participants will also gain hands-on experience with instructional activities such as conceptual overviews, interactive code-alongs, tutorials, case studies using Python and R, essential readings and discussion activities, and badging and microcredential opportunities. Finally, participants will learn pedagogical tips and information on the computing infrastructure, technology stack, and logistics required for leveraging these materials for their own undergraduate, graduate or professional learning programs
Organizers:
Shaun Kellogg, Jeanne McClure, Shiyan Jiang, Susan Hibbard, Doreen Mushi and Ryan Baker
Website:
https://laser-institute.github.io/lak24-kyoto/laser-workshop.html
The workshop aims to establish first conversations and bring together researchers and practitioners working on topics on the intersection of learning analytics (LA) and (immersive) virtual reality (VR) in educational settings. Overall, it aims to advance research on the potential and challenges of rich sensory data generated from VR for learning purposes. Ultimately, we strive to better understand how LA can improve the future design of educational VR applications. Therefore, we call for contributions on the role of LA in foundational research about the VR infrastructure and its multimodal analytics; VR for asynchronous learning experiences; and VR for synchronous teaching in the metaverse.
Organizers:
Martin Hlosta, Ivan Moser, Amir Winer, Nitza Geri, Umesh Ramnarain and Christo Van der Westhuizen
Website:
Tuesday, March 19, 2024 - 8 PM to 11 PM JST | ONLINE ONLY
Tutorial
Across the past decade, the open science movement has increased its momentum, making research more openly available and reproducible across different environments. In parallel, learning analytics, as a subfield of education technology, has been increasing as well, providing more accurate statistical models and integrations to improve learning. However, there is a discernible gap between the understanding and application of open science practices in learning analytics. In this tutorial, we will expand the knowledge base towards open data and open analysis. First, we will introduce the complexities of intellectual property and licensing within open science. Next, we will provide insights into data sharing methods that preserve the privacy of participants. Finally, we will conclude with an interactive demonstration on sharing research materials reproducibly. We will tailor the content towards the needs and goals of the participants, enabling researchers with the necessary resources and knowledge to implement these concepts effectively and responsibly.
Organizers:
Aaron Haim, Worcester Polytechnic Institute
Stephen Hutt, Worcester Polytechnic Institute
Stacy Shaw, Worcester Polytechnic Institute
Neil Heffernan, Worcester Polytechnic Institute
Website: