An Improved Back-Propagation Neural Network for the Prediction of College Students’ English Performance
Wei Liu, General Education Department, Shandong University of Arts
iJET Volume 14, Number 16, ISSN 1863-0383 Publisher: International Association of Online Engineering, Kassel, Germany
The global economic boom has greatly boosted the need for communication be-tween different cultures and difference countries. The effective communication requires good command of foreign languages, especially English. This paper highlights the necessity to predict the English performance of college students, and sums up the types and features of neural network (NN) models. On this ba-sis, the backpropagation (BP) NN was selected to predict the English perfor-mance of college students. The Spearman’s R correlation test was conducted to analyze how the English performance is affected by the following factors: the score in National College Entrance Examination (NCEE), gender, age and learn-ing attitude. Then, the improved BPNN was adopted to predict the English per-formance of college students. The results show that the NCEE score has the greatest impact on English performance, followed in descending order by learn-ing attitude and gender, while age does not greatly affect English scores; the im-proved BPNN achieved a desirable effect in predicting the English performance of college students. The research findings shed new lights on college English teachers and learners.
Liu, W. (2019). An Improved Back-Propagation Neural Network for the Prediction of College Students’ English Performance. International Journal of Emerging Technologies in Learning (iJET), 14(16), 130-142. Kassel, Germany: International Association of Online Engineering.