Mixed-Reality Simulation to Support Practice Learning of Preservice Teachers

Author:

Gravett Sarah1ORCID,Van der Merwe Dean1,Ramsaroop Sarita1,Tshabalala Pamela1,Bremner Casey1,Mello Pumzile1

Affiliation:

1. Department of Childhood Education, Faculty of Education, University of Johannesburg, Johannesburg 1809, South Africa

Abstract

Before the COVID-19 pandemic, providing high-quality practice learning experiences for preservice teachers was already taxing due to the heavy reliance on school practicum, which is often besieged with challenges. Given these challenges, there is a growing urgency to explore alternative avenues for offering practice learning experiences to preservice teachers in addition to school practicum. With this backdrop, a qualitative study was conducted, employing observation and interviews as data collection methods to explore the potential of mixed-reality simulation (MRS) to strengthen the practice learning experiences of preservice teachers. The core teaching practice of questioning was chosen to explore the affordances of MRS for improving preservice teachers’ understanding of and proficiency in utilizing questioning. This study found that MRS provides a low-risk learning environment that preservice teachers perceive as authentic. For these reasons, this environment is conducive to improvement, and it enables deliberate practice, which is vital for nurturing metacognition and adaptive expertise. The findings also highlight the importance of coaching for maximizing MRS advantages. The absence of coaching will most likely limit the affordances of MRS as an approximation of teaching practice. While our findings are promising, the resource-intensive nature of MRS implementation means that scalability requires further investigation.

Funder

The University of Johannesburg

South African Department of Higher Education and Training

Publisher

MDPI AG

Subject

Public Administration,Developmental and Educational Psychology,Education,Computer Science Applications,Computer Science (miscellaneous),Physical Therapy, Sports Therapy and Rehabilitation

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