Evaluation of Online Teaching Quality of Basic Education Based on Artificial Intelligence

Authors

  • Moyan Li Shantou Polytechnic, Shantou 515000, China
  • Yawen Su The Education University of Hong Kong, Hong Kong 999077, China

DOI:

https://doi.org/10.3991/ijet.v15i16.15937

Abstract


In the age of the Internet, basic education faces several new challenges: the lack of deep integration of artificial intelligence (AI), and the relatively poor quality of online teaching. To cope with these challenges, this paper designs an evaluation method for online teaching quality of basic education in the context of the AI. Firstly, the application of the AI in basic education was analyzed, and the promoting effect of online teaching on basic education was confirmed. On this basis, the entropy weight method and grey clustering analysis were introduced to evaluate the online teaching quality of basic ed-ucation. Based on the proposed model, several strategies were proposed to improve the quality of online teaching in basic education. The research re-sults provide a good reference for the application of online teaching and AI in basic education.

Author Biographies

Moyan Li, Shantou Polytechnic, Shantou 515000, China

Moyan Li was born in Shantou, China in 1986. He is a doctoral student at The Education University of Hong Kong, and works at Shantou Polytechnic, China (galaxyli@foxmail.com). His research interest includes E-learning, second lan-guage acquisition.

Yawen Su, The Education University of Hong Kong, Hong Kong 999077, China

Yawen Su was born in Xiamen, China in 1988. She is a doctoral student at The Education University of Hong Kong. (suyawen 0209@163.com). Her research interest includes Chinese education, practical teaching.

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Published

2020-08-28

How to Cite

Li, M., & Su, Y. (2020). Evaluation of Online Teaching Quality of Basic Education Based on Artificial Intelligence. International Journal of Emerging Technologies in Learning (iJET), 15(16), pp. 147–161. https://doi.org/10.3991/ijet.v15i16.15937

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Papers