Home| Contact Us| New Journals| Browse Journals| Journal Prices| For Authors|

Print ISSN: 0976-4127
Online ISSN:
0976-4135


  About JMPT
  DLINE Portal Home
Home
Aims & Scope
Editorial Board
Current Issue
Next Issue
Previous Issue
Sample Issue
Upcoming Conferences
Self-archiving policy
Alert Services
Be a Reviewer
Publisher
Paper Submission
Subscription
Contact us
 
  How To Order
  Order Online
Price Information
Request for Complimentary
Print Copy
 
  For Authors
  Guidelines for Contributors
Online Submission
Call for Papers
Author Rights
 
 
RELATED JOURNALS
Journal of Digital Information Management (JDIM)
International Journal of Computational Linguistics Research (IJCL)
International Journal of Web Application (IJWA)

 

 
Journal of Multimedia Processing and Technologies
 

 

Employing Multimedia Content Networks for English Teaching Systems
Tang Jun
Sichuan Vocational and Technical College of Chemical Engineering Luzhou, 646000, Sichuan China
Abstract: This article studies the teaching mode of college English in a network environment based on genetic algorithms and multimedia technology. With the development of information technology, the online environment provides new opportunities and challenges for English teaching. In this environment, students can access more learning resources, but at the same time, they also need to have a certain level of information literacy and learning ability. Therefore, exploring teaching models that adapt to this environment has important practical significance. The study adopted methods based on genetic algorithms and multimedia technology to analyze the English learning process in a network environment and develop a teaching plan more aligned with students' needs. This plan fully considers factors such as students' learning styles and cognitive levels and adopts various teaching strategies, such as situational and cooperative learning. At the same time, the study also utilizes multimedia technologies such as speech recognition and artificial intelligence to provide students with a more personalized and intelligent learning experience. This teaching model improves students' English proficiency and cultivates their autonomous and cooperative learning abilities.
Keywords: Genetic Algorithm, College English, Teaching Mode, Research Employing Multimedia Content Networks for English Teaching Systems
DOI:https://doi.org/10.6025/jmpt/2023/14/3/69-77
Full_Text   PDF 1.39 MB   Download:   83  times
References:

[1] Dobri, G, Stojanovi, Z, Stojkovi, Z. (2015). The application of genetic algorithm in diagnostics of metal-oxide surge arrester. Electric Power Systems Research, 119, 76-82.
[2] Hu, M M, Zhang, Y, Yuan, S W. (2015). Research and Application of Milling Parameters Optimization Based on Genetic Algorithm. Advanced Materials Research, 1095, 820-823.
[3] Yingyong, Z, Guangbin, Y, Yongde, Z, et al. (2016). Research on the Application of Genetic Algorithm in License Plate Recognition System. Journal of Computational & Theoretical Nanoscience, 13(9), 6088-6097.
[4] Xu, S, Zhang, M, Zeng, F, et al. (2015). Application of Genetic Algorithm (GA) in History Matching of the Vapour Extraction (VAPEX) Heavy Oil Recovery Process. Natural Resources Research, 24(2), 221-237.
[5] Çankal, A, Yakut, E. (2016). Portfolio Optimization Using of Methods Multi-Objective Genetic Algorithm and Goal Programming: An Application in BIST-30. Business & Economics Research Journal, 7(2), 43-43.
[6] Li, H, Di, H, Li, J, et al. (2016). Research on the application of the improved genetic algorithm in the electroencephalogram-based mental workload evaluation for miners. Journal of Algorithms & Computational Technology, 10(3).
[7] Min H. (2015). Genetic algorithm for supply chain modeling: Basic concepts and applications. International Journal of Services & Operations Management, 22(5), 143-163.
[8] Boultif, A, Kabouche, A, Ladjel, S. (2016). Application of Genetic Algorithms (GA) and Threshold Acceptance (TA) to a Ternary Liquid-Liquid Equilibrium System. International Review on Modelling & Simulations, 9(1), 29.
[9] Jiang P, Li X, Dong Y. (2015). Research and Application of a New Hybrid Forecasting Model Based on Genetic Algorithm Optimization: A Case Study of Shandong Wind Farm in China. Mathematical Problems in Engineering, 2015(2015-1-8), 1-14.
[10] Yu B, Yan Z H, Wang L T, et al. (2017). The application research on improvement of genetic algorithm in linear CCD detection. International Journal of Services & Operations Management, 12, 191-195.


Home | Aim & Scope | Editorial Board | Author Guidelines | Publisher | Subscription | Previous Issue | Contact Us |Upcoming Conferences|Sample Issues|Library Recommendation Form|

 

Copyright © 2011 dline.info