Workshop: Measuring Classroom Talk

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Speakers: Professor Lauren Resnick, University of Pittsburgh, Dr. Gaowei Chen, The University of Hong Kong
Date: February 27, 2014 (Thursday)
Time: 11:00 am -1:00pm
Venue: Room 206, Rumme Shaw Building, HKU
Language: EnglishAbstract

The speakers will consider the requirements of measuring classroom talk for two related but separable purposes: 1) Research aimed at understanding and documenting the role of Accountable Talk and related classroom discussion systems in student learning. The speakers will examine examples of coding systems for interactive classrooms. These can range from qualitative anthropological-style descriptions to quantitative sociolinguistic analyses. 2) Research aimed at developing tools for teacher development in the skills of discussion-based teaching. The speakers will describe relatively new efforts to create “mirrors” that allow teachers to examine and analyze aspects of their own teaching within a few days (perhaps eventually hours) of the teaching event. These can range from visual displays of sequences of “turn taking” to quick-take videos with guidelines for professional analysis and discussion. The speakers will discuss how the requirements for these two uses (research reporting and mirrors for improving teaching) overlap and differ and how technologies for both are developing. These technologies range from relatively simple graphing techniques to (semi)-automated coding systems to speech recognition.

Participants are encouraged to bring examples of classroom data they are analyzing or interested in analyzing.

About the speakers

Lauren Resnick_photo

Lauren Resnick is a Distinguished University Professor of Psychology and Cognitive Science and also of Learning Sciences and Education Policy at the University of Pittsburgh. She is an internationally known scholar in the cognitive science of learning and instruction and was Director of the Learning Research and Development Center at the University of Pittsburgh from 1977 to 2008. She has researched and written widely on the learning and teaching of literacy, mathematics, and science. Her recent work focuses on school reform, assessment, effort-based education, the nature and development of thinking abilities, and the role of talk and discourse in learning. Dr. Resnick is founder and Co-Director of the Institute for Learning, which bridges the domains of research and practice by conveying to educators the best of current knowledge about learning processes, principles of instruction, and the design of school systems. Dr. Resnick also co-founded the New Standards Project (1990-1999), which developed performance-based standards and assessments that widely influenced state and school district practice. Dr. Resnick is a prolific author, a respected editor, and a frequent consultant, with appointments to many national education boards, commissions, and associations.  Recognized both nationally and internationally, Dr. Resnick has received multiple awards for her research. Educated at Radcliffe and Harvard, Dr. Resnick has been an Overseer of Harvard University and a member of the Smithsonian Council. She is also an elected member of the American Academy of Arts and Sciences.

Gaowei Chen_Photo

Gaowei Chen is an assistant professor in the Faculty of Education, University of Hong Kong. Before joining HKU, Dr. Chen spent three years as a postdoctoral associate in the Learning Research and Development Center, University of Pittsburgh and also in Pittsburgh Science of Learning Center. By applying statistical and machine learning models to studies of classroom and online discussions, he examined how teacher-student and student-student interactions help produce strong effects on learning. His research interests include teacher-student interaction and classroom processes, teacher professional development, educational statistics, learning analytics, and computer supported collaborative learning. Dr. Chen received his PhD in educational psychology from the Chinese University of Hong Kong.

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