Abstract
Reading and writing are the foundations of English learning as well as an important method of instruction. With the advancement of network technology and the onset of the information age, an increasing number of students have lost interest in traditional English reading and writing instruction in the classroom. Flipped classrooms have emerged as a result of this situation and have become the focus of research in one fell swoop. As a result, flipped classroom research at home and abroad has primarily focused on the theory and practical application of flipped classrooms, and flipped classroom application practice is primarily based on the overall classroom, with few separate discussions on the effects of flipped classroom students’ self‐learning. As a result, we developed a recurrent neural network‐based intelligent assisted learning algorithm for English flipped classrooms. There are two main characteristics of the model. First, it is a gated recurrent unit based on a variant structure of the recurrent neural network. The double‐gating mechanism fully considers the context and selects memory through weight assignment, and on this basis, it integrates the novel LeakyReLU function to improve the model’s training convergence efficiency. Second, by overcoming time‐consuming problems in the medium, the adoption of the connection sequence classification algorithm eliminates the need for prior alignment of speech and text data, resulting in a direct boost in model training speed. The experimental results show that in the English flipped classroom’s intelligent learning mode, students explore and discover knowledge independently, their enthusiasm and interest in learning are greatly increased, and the flipped classroom’s teaching effect is greatly improved.
Highlights
Education experts advocate a new teaching model in the context of the new curriculum reform [1,2,3], in which students are the main body and teachers are the leaders
To test the sexual superiority of GRU in relation to phonological recognition patterns in other languages, LSTM-HMM, LSTM-connectionist temporal classification (CTC), and GRUCTC were selected as the models for the comparative experiment
This set of comparison results shows that the introduction of the CTC method can help the performance of the model to a certain extent
Summary
Education experts advocate a new teaching model in the context of the new curriculum reform [1,2,3], in which students are the main body and teachers are the leaders This concept, cannot be fully reflected in classroom teaching in specific practical situations. Teachers should teach students professional knowledge and provide personalized guidance in the classroom to teach students the ability to learn. This is the requirement of the times and the direction of the future development of national education
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.