*apologies for multiple copies*

Dear all,

We have a pleasure to invite you to submit your manuscript for the upcoming 
Special Section on Learning Analytics for Primary and Secondary Schools at the 
Journal of Learning Analytics (JLA, 
https://learning-analytics.info<https://learning-analytics.info/>). The Journal 
of Learning Analytics is a peer-reviewed, open-access journal, disseminating 
the highest quality research in the field and indexed by Scopus and Web of 
Science. It is the official publication of the Society for Learning Analytics 
Research (SoLAR, https://solaresearch.org<https://solaresearch.org/>) and the 
first journal dedicated to research into the challenges of collecting, 
analysing and reporting data with the specific intent to improve learning.

See below the full details of the call for papers.

Kind regards,
Vitomir

NOTE: We invite research papers, practitioner reports, and data and tool 
reports (for the details of different submission types see 
https://epress.lib.uts.edu.au/journals/index.php/JLA/about/editorialPolicies#sectionPolicies).

Special Section on Learning Analytics for Primary and Secondary Schools
https://epress.lib.uts.edu.au/journals/index.php/JLA/announcement/view/161

GUEST EDITORS
Vitomir Kovanović, University of South Australia, Australia, 
[email protected]<mailto:[email protected]>
Claudia Mazziotti, Technical University Munich, Germany, 
[email protected]<mailto:[email protected]>
Jason Lodge, The University of Queensland, Australia, 
[email protected]<mailto:[email protected]>

AIMS & SCOPE
Over the past decade, there has been substantial growth in the adoption of 
learning analytics and data-driven techniques for improving teaching and 
learning. Learning analytics have been used for monitoring, supporting, and 
assessing different forms of learning and teaching and thus opened the 
possibility to make data-driven decisions of how to improve student learning. 
By investigating varying online and blended learning modalities and addressing 
issues around student retention, students at risks and study approaches, most 
of the previous work, however, has focused on tertiary education and issues 
that were specific for that educational context. With the broader adoption of 
educational technologies in primary and secondary education and the emergence 
of new classroom-focused technologies, there has been a growing awareness of 
the potentials of learning analytics for supporting students and diagnosing 
their learning progress in pre-university contexts.

The focus of this special section is on investigating, developing, and 
evaluating state-of-the-art learning analytics approaches within the primary 
and secondary school settings. We specifically invite both research and 
practitioner contributions that go beyond the pure development of analytics 
systems by also addressing the specific challenges and opportunities of the 
school context later target group. We further invite contributions that make 
connections between analytical systems to contemporary pedagogies and 
educational theories. Finally, we also invite data and tool report submissions 
which provide overview of the educational datasets, tools and methods that 
focus on the use of learning analytics within primary and secondary school 
context.

Advancing the use of Learning Analytics within Schools
Although the use of educational technologies has been growing in K-12 sector 
(Horn & Staker, 2011; Voogt et al., 2018), learning analytics has been, for the 
most part, used to support tertiary learning and teaching (Li et al., 2015; 
Sancho et al., 2015). While there are many reasons for this, more constrained 
resources for supporting analytics implementation and limited expertise in data 
analytics within schools are likely contributing factors. The collection and 
analysis of data is also far more sensitive topic within the primary and 
secondary contexts (Gunawardena, 2017), due to significant concerns around 
privacy and ethical use of data by parents, teachers, legal authorities and 
social activists (Singer, 2014).

While the adoption of analytics has drawn sharp criticism (McRae, 2014; 
Roberts-Mahoney et al., 2016; Selwyn & Facer, 2013), there is also a growing 
realisation of the unique opportunities that analytics provide in supporting 
contemporary teaching and learning. The 2017 Horizon K–12 report (Freeman et 
al., 2017) estimated 2–3 years as the time to broader adoption of learning 
analytics within primary and secondary domains, with main opportunities being 
to “predict learner outcomes, trigger interventions or curricular adaptations, 
and even prescribe new pathways or strategies to improve student success” (p. 
44). Similar benefits and opportunities were noted by the earlier US Department 
of Education report (Bienkowski et al., 2012) and also more recent Gonski 
report in Australia (Gonski et al., 2018), who emphasise the power of data and 
analytics to provide more personalised learning experiences and improve student 
learning outcomes. Moreover, there have been substantial developments within 
the learning analytics field itself; The development of multimodal learning 
analytics (MMLA)(Ochoa, 2017) as well novel classroom-based analytics systems 
(Lodge et al., 2018), provided analytical approaches that are far more suitable 
for primary and secondary school contexts use. Since 2018, a full-day 
pre-conference event on learning analytics adoption within schools has been 
running at LAK conference, witnessing strong interest by schoolteachers, 
administrators, policy makers, and industry representatives.

The goal of this special issue is to build upon the current momentum around 
learning analytics use within schools and provide a place for researchers to 
report their current efforts in this domain. We invite research studies, 
practitioner reports, and data and tool reports that focus on the use of 
learning analytics for supporting primary and secondary school learning. The 
aim is to showcase the latest developments in learning analytics use within 
schools, and empirical evidence on the effectiveness of its use for supporting 
learning and teaching in the school context. We also seek studies that aim to 
foster innovative pedagogical approaches through the adoption of learning 
analytics as well as improve theoretical understanding of teaching and learning 
in these spaces. Finally, given the early stage of learning analytics adoption 
within schools, we especially encourage studies which provide practical 
suggestions for the implementation of analytical systems in school settings and 
examination of the barriers of their adoption and areas for future work.

TOPICS OF INTEREST
Some areas of interest are, but not limited to, one of the following topics:

Analytics tools and systems: Studies that focus on new and state-of-the-art 
learning analytics tools and platforms for supporting school learning and 
teaching (e.g., teacher dashboards).

School adoption, implementation and scale-up: Studies that provide insights 
into the current state of analytics adoption in schools, key challenges and 
opportunities on an institutional and professional level, as well as reports on 
the current learning analytics adoption efforts.

Practical implications: Studies that focus on developing recommendations for 
practice using robust empirical evidence around analytics use within primary 
and secondary schools.

Theory building: Contributions that focus on advancing theoretical 
understanding of learning analytics use for supporting learning and teaching 
within school settings by building upon existing educational and learning 
science-related theories.

Methods: Contributions that describe methodological approaches and challenges 
that are grounded in theory, and serve the purpose of combining different 
multimodal data for using learning analytics within the primary and secondary 
school context.

Critical perspectives: Contributions which provide critical and balanced 
assessment and examination of learning analytics use and adoption within school 
settings.

SUBMISSION INSTRUCTIONS
Prospective authors may contact the section editors with queries. Final 
submissions will take place through JLA’s online submission system at 
http://learning-analytics.info<http://learning-analytics.info/> When submitting 
a paper, select the section “Special Section: Learning Analytics for Primary 
and Secondary Schools". All submissions should follow JLA’s standard manuscript 
guidelines and template available on the journal website and will undergo 
double-blind peer review.

TIMELINE
Full manuscripts due:  September 20, 2020
Completion of first review round:  November 2020
Revised/final manuscripts due:  December 2020
Completion of second review round (if needed):  February 2021
Revised/final manuscripts due:  March 2021
Publication of special issue:  July/August 2021, Issue 8(2)

REFERENCES
Bienkowski, M. A., Feng, M., & Means, B. (2012). Enhancing Teaching and 
Learning Through Educational Data Mining and Learning Analytics: An Issue 
Brief. U.S. Department of Education.
Freeman, A., Adams Becker, S., Cummins, M., Davis, A., & Hall Giesinger, C. 
(2017). NMC/CoSN Horizon Report: 2017 K–12 Edition. The New Media Consortium.
Gonski, D., Arcus, T., Boston, K., Gould, V., Johnson, W., O’Brien, L., Perry, 
L.-A., & Roberts, M. (2018). Through Growth to Achievement: Review to Achieve 
Educational Excellence in Australian Schools. Department of Education and 
Training.
Gunawardena, A. (2017). Brief survey of analytics in K12 and higher education. 
International Journal on Innovations in Online Education, 1(1). 
https://doi.org/10.1615/IntJInnovOnlineEdu.v1.i1.80
Horn, M. B., & Staker, H. (2011). The rise of K-12 blended learning. Innosight 
Institute. 
https://www.christenseninstitute.org/wp-content/uploads/2013/04/The-rise-of-K-12-blended-learning.emerging-models.pdf
Li, K. C., Lam, H. K., & Lam, S. S. (2015). A review of learning analytics in 
educational research. In J. Lam, K. K. Ng, S. K. S. Cheung, T. L. Wong, K. C. 
Li, & F. L. Wang (Eds.), Technology in Education. Technology-Mediated Proactive 
Learning (pp. 173–184). Springer. https://doi.org/10.1007/978-3-662-48978-9_17
Lodge, J. M., Horvath, J. C., & Corrin, L. (Eds.). (2018). Learning Analytics 
in the Classroom: Translating Learning Analytics Research for Teachers. 
Routledge.
McRae, P. (2014). Rebirth of the teaching machine through the seduction of data 
analytics: This time it’s personal. Revista Intercambio, 6, 28–32.
Ochoa, X. (2017). Multimodal learning analytics. In C. Lang, G. Siemens, A. F. 
Wise, & D. Gaševic (Eds.), The Handbook of Learning Analytics (1st ed., pp. 
129–141). Society for Learning Analytics Research (SoLAR). 
http://solaresearch.org/hla-17/hla17-chapter1
Roberts-Mahoney, H., Means, A. J., & Garrison, M. J. (2016). Netflixing human 
capital development: Personalized learning technology and the corporatization 
of K-12 education. Journal of Education Policy, 31(4), 405–420. 
https://doi.org/10.1080/02680939.2015.1132774
Sancho, M.-R., Cañabate, A., & Sabate, F. (2015). Contextualizing learning 
analytics for secondary schools at micro level. 2015 International Conference 
on Interactive Collaborative and Blended Learning (ICBL), 70–75. 
https://doi.org/10.1109/ICBL.2015.7387638
Selwyn, N., & Facer, K. (2013). The Politics of Education and Technology: 
Conflicts, Controversies, and Connections. Springer.
Singer, N. (2014). InBloom Student Data Repository to Close. The New York Times 
Bits Blog. 
http://bits.blogs.nytimes.com/2014/04/21/inbloom-student-data-repository-to-close/
Voogt, J., Knezek, G., Christensen, R., & Lai, K.-W. (2018). Developing an 
understanding of the impact of digital technologies on teaching and learning in 
an ever-changing landscape. In J. Voogt, G. Knezek, R. Christensen, & K.-W. Lai 
(Eds.), Second Handbook of Information Technology in Primary and Secondary 
Education (pp. 3–12). Springer International Publishing. 
https://doi.org/10.1007/978-3-319-71054-9_113

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