Abstract

Background. English is one of the courses offered in all colleges and universities. The quality of English teaching is directly related to the quality of talent training and the development of students themselves. “Teaching quality evaluation” specifically refers to the education evaluation with teaching as the evaluation object. It is the core and foundation of the whole education evaluation. Teaching quality evaluation is based on certain teaching objectives and teaching norms and standards, through the systematic detection and assessment of teaching and learning. Evaluate its teaching effect and the degree of realization of teaching objectives, and use scientific and feasible methods to make corresponding value judgments to improve the process of teaching. To improve the accuracy of English teaching ability evaluation, an English teaching ability evaluation algorithm based on frequency effect is proposed. Methods. The paper proposes an English teaching ability evaluation algorithm based on frequency effect. Firstly, it constructs the evaluation index system of English teaching ability, including expert evaluation system, student evaluation system, and teacher evaluation system. Then, the indexes affecting the evaluation of English teaching ability are quantified by fuzzy synthesis, and the evaluation indexes are refined. Finally, the basic principle of frequency effect is analyzed, combined with the convolutional neural network. Results. The convolutional neural network evaluation model is constructed, the teaching ability indicators are input into the model, the final evaluation results are output, and the design of the English teaching ability evaluation algorithm based on frequency effect is completed. Conclusions. The experimental results show that this method has high accuracy and efficiency.

Highlights

  • Improving the quality of English teaching and promoting the long-term development of English teachers are one of the focuses of the school’s work

  • Because of the shortcomings of the above methods, this paper proposes an English teaching ability evaluation algorithm based on frequency effect. e technical route of this paper is as follows: Step 1: construct the evaluation index system of English teaching ability, including expert evaluation system, student evaluation system, and teacher evaluation system

  • Step 3: analyze the basic principle of frequency effect, combine it with convolution neural network, construct convolution neural network evaluation model, input the teaching ability index into the model, output the final evaluation results, and complete the design of the English teaching ability evaluation algorithm based on frequency effect [10]

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Summary

Background

English is one of the courses offered in all colleges and universities. e quality of English teaching is directly related to the quality of talent training and the development of students themselves. “Teaching quality evaluation” refers to the education evaluation with teaching as the evaluation object. To improve the accuracy of English teaching ability evaluation, an English teaching ability evaluation algorithm based on frequency effect is proposed. E paper proposes an English teaching ability evaluation algorithm based on frequency effect. It constructs the evaluation index system of English teaching ability, including expert evaluation system, student evaluation system, and teacher evaluation system. E convolutional neural network evaluation model is constructed, the teaching ability indicators are input into the model, the final evaluation results are output, and the design of the English teaching ability evaluation algorithm based on frequency effect is completed. Conclusions. e experimental results show that this method has high accuracy and efficiency

Introduction
Methods
Evaluation Algorithm of English Teaching Ability Based on Frequency Effect
Evaluation index of English teaching ability
Evaluation of English teaching ability
Experimental Analysis
Conclusion
Full Text
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