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LAK 2021: International Conference on Learning Analytics & Knowledge

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투고 마감일:
2020-10-01
통보일:
2020-12-01
개최일:
2021-04-11
개최지:
Newport Beach, California, USA
개최 횟수:
11
ICORE: A   조회: 19548   팔로우: 3   참가: 0

논문 모집

LAK 2021 (International Conference on Learning Analytics & Knowledge) is a ICORE A conference held in Newport Beach, California, USA on 2021-04-11. The paper submission deadline is 2020-10-01. Acceptance notifications are sent on 2020-12-01.

General Call The 2021 edition of The International Conference on Learning Analytics & Knowledge (LAK21) will take place in Newport Beach, California! LAK21 is organised by the Society for Learning Analytics Research (SoLAR) with location host University of California, Irvine. LAK21 is a collaborative effort by learning analytics researchers and practitioners to share learning analytics research and practice. The theme for the 11th annual LAK conference, “The impact we make: The contributions of learning analytics to learning”. As academic fields concerned with the human condition develop and mature, their impact on advancing scientific understanding and practical application becomes an important marker of success. As an integrated and multi-disciplinary research topic, learning analytics is presented with questions regarding its contributions in two areas: 1. the respective fields from which it draws, 2. its own development as a research domain. Given the rapid global adoption of technology and online learning, due to COVID-19, we are additionally soliciting learning analytics research related to the classroom, teaching, learning, and organizational impact of this transition. The areas of research could include learning design practices, faculty and student response, and the role of learning analytics in supporting and informing the move to online for all stakeholders involved. The LAK conference is intended for both researchers and practitioners. We invite both researchers and practitioners of learning analytics to come and join a proactive dialogue around the future of learning analytics and its practical adoption. We further extend our invite to educators, leaders, administrators, government and industry professionals interested in the field of learning analytics and related disciplines. Conference theme and topics We welcome submissions from both research and practice, covering different theoretical, methodological, empirical and technical contributions to the learning analytics field. Specifically, this year, we invite contributors to think about how learning analytics is contributing to our understanding of learning and learning processes. Learning research occurs in many distinct academic fields, including psychology, learning sciences, education, neuroscience, and computer science. Since its inception, LA has reflected a tight coupling between research and practice. What has been the impact of the methods, the approaches, the studies, and related outputs of the LA field? For our 11th Annual conference, we encourage authors to address some of the following questions: How is LA contributing to our understanding of learning? What does impact mean in the context of online, blended, and in-classroom learning analytics? How have learning-related discoveries and research by the LA field influenced learning practices? What are the practical and scholarly implications of the presented work for the future? What are the challenges of the presented work we need to address to improve its impact in the future? We also explicitly encourage research that validates, replicates and examines the generalisability of previously published findings, as well as the aspects of practical adoption of the existing learning analytics methods and approaches. Some of the topics of interest include, (but are not limited) are: Capturing Learning & Teaching: Finding evidence of learning: Studies that identify and explain useful data for analysing, understanding and optimising learning and teaching. Assessing student learning: Studies that assess learning progress through the computational analysis of learner actions or artefacts. Analytical and methodological approaches: Studies that introduce analytical techniques, methods, and tools for capturing and modelling student learning. Technological infrastructures for data storage and sharing: Proposals of technical and methodological procedures to store, share and preserve learning and teaching traces. Understanding Learning & Teaching: Data-informed learning theories: Proposals of new learning/teaching theories or revisions/reinterpretations of existing theories based on large-scale data analysis. Insights into specific learning processes: Studies to understand particular aspects of a learning/teaching process through the use of data science techniques. Learning and teaching modeling: Creating mathematical, statistical or computational models of a learning/teaching process, including its actors and context. Systematic reviews: Studies that provide a systematic and methodological synthesis of the available evidence in an area of learning analytics. Impacting Learning & Teaching: Providing decision support and feedback: Studies that evaluate the impact of feedback or decision-support systems based on learning analytics (dashboards, early-alert systems, automated messages, etc.). Practical evaluations of learning analytics efforts: Empirical evidence about the effectiveness of learning analytics implementations or educational initiatives guided by learning analytics. Personalised and adaptive learning: Studies that evaluate the effectiveness and impact of adaptive technologies based on learning analytics. Implementing Change in Learning & Teaching: Ethical issues around learning analytics: Analysis of issues and approaches to the lawful and ethical capture and use of educational data traces; tackling unintended bias and value judgements in the selection of data and algorithms; perspectives and methods for value-sensitive, participatory design that empowers stakeholders. Learning analytics adoption: Discussions and evaluations of strategies to promote and embed learning analytics initiatives in educational institutions and learning organisations. Learning analytics strategies for scalability: Discussions and evaluations of strategies to scale the capture and analysis of information at the program, institution or national level; critical reflections on organisational structures that promote analytics innovation and impact in an institution.
최종 수정: Dou Sun ()

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관련 저널

CCF정식 명칭영향력 지수출판사ISSN
AIEEE Transactions on Multimedia9.7IEEE1520-9210
CKnowledge-Based Systems7.2Elsevier0950-7051
BSoftware & Systems Modeling3.2Springer1619-1366
AIEEE Transactions on Computers3.8IEEE0018-9340
CFuture Generation Computer Systems6.1Elsevier0167-739X
CNeurocomputing6.5Elsevier0925-2312
CPattern Recognition Letters3.9Elsevier0167-8655
BPattern Recognition7.6Elsevier0031-3203
IEEE Access3.6IEEE2169-3536
AIEEE Transactions on Dependable and Secure Computing7.5IEEE1545-5971

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