An Empirical Study of AIGC Enabled High School English Listening Class in China
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Keywords

AIGC (AI-Generated Content)
high school;
listening teaching;
SPSS analysis

How to Cite

Jiang , L., Wei, M., Zhai, Y., Wang, R., & Mi, L. (2025). An Empirical Study of AIGC Enabled High School English Listening Class in China. International Theory and Practice in Humanities and Social Sciences, 2(6), 8–22. https://doi.org/10.70693/itphss.v2i6.368
Received 2025-01-14
Accepted 2025-05-22
Published 2025-06-08

Abstract

With the rapid development of AIGC (Artificial Intelligence Generated Content) technology, it is increasingly widely used in education. This study investigates the effectiveness of AIGC technology in high school English listening classes. By comparing the changes in English listening levels in the experimental group (AIGC technology-assisted teaching) and the control group (traditional listening teaching method), SPSS software was analyzed to verify the positive influence of AIGC technology on students' English listening ability. The research results show that AIGC technology can significantly improve students' listening levels, and has a positive impact on stimulating students' interest in learning and enhancing teaching efficiency.

https://doi.org/10.70693/itphss.v2i6.368
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Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright (c) 2025 Li Jiang (Author); Meng Wei, Yanan Zhai, Ruoyu Wang, Lan Mi (Co-Authors)

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