Abstract

In order to improve the accuracy of English education level evaluation, this paper puts forward a design method of associated estimation model of English education level based on artificial neural network. Establish a multiattribute decision-making constraint parameter model for the correlation assessment of English education level, and analyze the multi-attribute decision-making and quantitative characteristics of the correlation assessment of English education level combined with the multi-dimensional explanatory variable and control variable parameter identification methods. Combined with the artificial neural network modeling method, the feature clustering analysis of the English education level is carried out; the adaptive learning and training method of the artificial neural network is used to establish the attribute fusion set and the semantic ontology feature distribution set of the multi-attribute decision-making for the correlation evaluation of the English education level; using the artificial neural network The network output layer fusion control method realizes the optimization of the multiattribute decision-making process. The simulation results show that the method has a good effect on the intelligent decisionmaking of the correlation evaluation of English education level, and improves the accuracy of the evaluation results of English education level.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call