TY - JOUR
T1 - Educational futures of intelligent synergies between humans, digital twins, avatars, and robots-the iSTAR framework
AU - Huang, Ronghuai
AU - Tlili, Ahmed
AU - Xu, Lin
AU - Chen, Ying
AU - Zheng, Lanqin
AU - Metwally, Ahmed Hosny Saleh
AU - Da, Ting
AU - Chang, Tingwen
AU - Wang, Huanhuan
AU - Mason, Jon
AU - Stracke, Christian M.
AU - Sampson, Demetrios
AU - Bonk, Curtis J.
N1 - Publisher Copyright:
© 2023. Ronghuai Huang, Ahmed Tlili, Lin Xu, Chen Ying, Lanqin Zheng, Ahmed Hosny Saleh Metwally, Da Ting, TingWen Chang, Huanhuan Wang, Jon Mason, Christian M. Stracke, Demetrios Sampson, and Curtis J. Bonk.
PY - 2023/6/29
Y1 - 2023/6/29
N2 - With the rapid advances of Artificial Intelligence (AI) and its technologies, human teachers and machines are now capable of collaborating to effectively achieve specified outcomes. In educational settings, such collaboration requires consideration of several dimensions to ensure safe, responsible, and ethical usage. While various research studies have discussed human-machine collaboration or cooperation in education, a framework is now needed that aligns with contemporary affordances. Providing such a framework can help to better understand how human teachers and machines can team up in education and what should be considered while doing so. To address this gap, this paper outlines the iSTAR (Intelligent human-machine Synergy in collaborative teaching: utilizing the digital Twins, Avatars/Agents and Robots) framework. iSTAR represents human-machine collaboration as an ecosystem that goes beyond the simple collaboration between human teachers and machines in education. Therefore, it presents core dimensions of DELTA (design, ethics, learning, teaching and assessments) that should be considered in designing safe, responsible, and ethical learning opportunities.
AB - With the rapid advances of Artificial Intelligence (AI) and its technologies, human teachers and machines are now capable of collaborating to effectively achieve specified outcomes. In educational settings, such collaboration requires consideration of several dimensions to ensure safe, responsible, and ethical usage. While various research studies have discussed human-machine collaboration or cooperation in education, a framework is now needed that aligns with contemporary affordances. Providing such a framework can help to better understand how human teachers and machines can team up in education and what should be considered while doing so. To address this gap, this paper outlines the iSTAR (Intelligent human-machine Synergy in collaborative teaching: utilizing the digital Twins, Avatars/Agents and Robots) framework. iSTAR represents human-machine collaboration as an ecosystem that goes beyond the simple collaboration between human teachers and machines in education. Therefore, it presents core dimensions of DELTA (design, ethics, learning, teaching and assessments) that should be considered in designing safe, responsible, and ethical learning opportunities.
KW - Artificial Intelligence (AI)
KW - future education
KW - human-machine collaboration
KW - human-machine interaction
KW - team roles
UR - http://www.scopus.com/inward/record.url?scp=85178964893&partnerID=8YFLogxK
U2 - 10.37074/jalt.2023.6.2.33
DO - 10.37074/jalt.2023.6.2.33
M3 - Article
AN - SCOPUS:85178964893
SN - 2591-801X
VL - 6
SP - 28
EP - 43
JO - Journal of Applied Learning & Teaching
JF - Journal of Applied Learning & Teaching
IS - 2
M1 - 1
ER -