Do Generation Z Pre-Service ESL Teachers Perceive Artificial Intelligence Negatively? Rasch Analysis
DOI:
https://doi.org/10.59698/afeksi.v6i4.502Keywords:
Artifical Intelligence, Educational Technology, Generation Z, Pre-servuce ESL Teacher, Rasch AnalysisAbstract
References
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