Research on Optimization of University English Practice Teaching Mode Based on Graph Structure in Online Learning Environment

Author:

Wang Linyan1,Zhang Xinyu1

Affiliation:

1. School of Foreign Languages , Chaohu University , Hefei , Anhui , , China .

Abstract

Abstract This study investigates effective integration of node and edge features through N-way K-shot problem definition and iterative updating of graph structure information. The flexibility and effectiveness of the model are enhanced by using the gate function of the adaptive layer to control the degree of neighborhood aggregation and optimize the edge features through the double stochastic normalization technique. The introduction of the LGACN model strengthens the clustering performance through the Attention Network, and improves the adaptability and accuracy of the teaching model. The empirical Analysis shows that compared with the traditional method, the model has outstanding performance in enhancing students’ knowledge understanding, skill application and vocational quality, especially the student satisfaction in practical teaching effect and student-student mutual evaluation is significantly improved. Among the 256 students in the experimental class, the comprehensive satisfaction score increased from 68.15-80.21 to 80.21-89.89, significantly improving teaching effectiveness. By deeply optimizing the practical teaching mode of college English, this study provides new perspectives and effective strategies for language teaching in online learning environments, which helps to improve teaching effectiveness and student satisfaction.

Publisher

Walter de Gruyter GmbH

Reference21 articles.

1. Peng, B. (2017). Construction and application of the best teaching mode of college english in big data. International Journal of Emerging Technologies in Learning, 12(9), 41.

2. Yu, Y., Zhao, S., Liu, L., & Liu, J. (2017). An innovative model of college english teaching based on webbased learning resources and mooc. Boletin Tecnico/Technical Bulletin, 55(8), 310-317.

3. Liu, F. (2022). A new hybrid teaching platform for college english based on iot. International journal of continuing engineering education and life-long learning.

4. Feng, T. (2017). Research on teaching model of mooc-based college english flipped classroom. Boletin Tecnico/Technical Bulletin, 55(20), 503-508.

5. Xiaojun, Z. (2017). The application of computer technology in mongolian college english teaching. International Journal of Emerging Technologies in Learning (iJET), 12(02), 52.

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