Grants and Contracts Details
Description
Abstract:
Practice-based experiences such as microteaching provide opportunities for pre and in
service teachers to rehearse content and practice instructional strategies before they
engage P-12 learners in clinical ?eld placements (Kamman et al., 2014). To microteach, the
pre and in service teacher plans a lesson and teaches it while the instructor provides
coaching and feedback.
Mixed virtual reality (MVR) simulations allow the opportunity to practice pedagogy in a
unique format during these microteaching opportunities. The MVR format is a virtual
classroom with avatar students controlled by a trained actor (Dieker et al., 2014b).
Predesigned sessions serve as microteaching opportunities and allow the pre and in
service teacher to practice in a safe environment with instructor support by way of
coaching and immediate feedback during the interaction. During the simulation, the pre
and in service teacher can practice a single skill multiple times until mastery because the
simulation can be paused and re-started. The extraneous variables that occur during
microteaching with peers and in clinical ?eld placements are controlled during simulations
providing consistency across opportunities. Each participant practices the same teacher
behaviors in the same setting with the same students who respond in the same manner.
The proposed research will signi?cantly contribute to the current research base on
practice-based opportunities through determining the e ectiveness of using MVR
simulations. There is evidence supporting well-developed practice-based opportunities as
necessary in preparing pre and in service teachers to be ready for the classroom (Reisman
et al., 2018), but there little is known regarding the value-added nature of using MVR
simulations as these practice-based opportunities.
Status | Finished |
---|---|
Effective start/end date | 12/1/24 → 6/30/25 |
Funding
- University of Louisville: $18,663.00
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