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Quantitative Ethnography (QE) Masterclass

Abstract: This QE Masterclass Series is designed to help researchers in learning analytics, policy analysis, and the social sciences more generally learn this emerging research methodology. The QE Masterclass consists of two parts: a talk on “Quantitative Ethnography: Human Science in the Age of Big Data” by our special guest Prof. David Williamson Shaffer, and followed by an “Introduction to Epistemic Network Analysis” workshop. Interested parties are welcome to participate in the International Conference for Quantitative Ethnography (ICQE23) at Monash University in Melbourne Australia.

The course does not assume any prior knowledge of Quantitative Ethnography, although an interest in education, STEM education, health and healthcare, and/or policy research and practice would be good, as those are the main areas QE have been used in.

Organisers:

University of Wisconsin, Monash University, and the Centre for Learning Enhancement And Research (CLEAR) at The Chinese University of Hong Kong

Talk: Talk - Quantitative Ethnography: Human Science in the Age of Big Data
Date: 15 February 2023 (Wednesday)
Time: 2:00 pm - 3:00 pm (HKT)
Speaker: Prof. David Williamson Shaffer, Sears Bascom Professor of Learning Analytics and the Vilas Distinguished Achievement Professor of Learning Sciences, Department of Educational Psychology, University of Wisconsin

Workshop: Workshop - Introduction to Epistemic Network Analysis
Date: 15 February 2023 (Wednesday)
Time: 3:15 pm - 5:30 pm (HKT)
Speakers:
  • Dr. YJ Kim, Assistant Professor of Curriculum and Instruction, University of Wisconsin
  • Prof. Mike Phillips, Professor of Curriculum, Teaching and Inclusive Education, Monash University
  • Dr. Zachari Swiecki, Lecturer in Human Centered Computing, Data Futures Institute, Monash University


  • Venue: Online via Zoom

    Registration: https://cuhk.qualtrics.com/jfe/form/SV_3Ow9iBVbJUr3qmy

    Please click here for the event poster.


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