Multi-objective Optimization Algorithm for Multimedia English Teaching (MOAMET) Based on computer network traffic prediction model

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Abstract

In order to solve the problem of multi-objective optimization for multimedia English teaching, this paper proposes a multi-objective optimization algorithm for multimedia English teaching (MOAMET) based on computer network traffic prediction model, which is based on the computer network traffic prediction model strategy. This algorithm establishes time series for individuals correlated to same reference points, and for such time series through computer network traffic model optimizes multimedia English teaching objectives. Meanwhile, it feeds back the prediction error of the historical moment to the current prediction to improve the accuracy of the optimization, and adds disturbance in each optimized individual to increase the diversity of initial multimedia English teaching so as to speed up the convergence speed of the algorithm in the new environment. Through experiments it teats the algorithm, also makes comparison and analysis with two existing algorithms, the results show that the proposed algorithm can maintain good performance in dealing with multi-objective optimization for multimedia English teaching.

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APA

Feng, W. (2018). Multi-objective Optimization Algorithm for Multimedia English Teaching (MOAMET) Based on computer network traffic prediction model. International Journal of Emerging Technologies in Learning, 13(3), 58–70. https://doi.org/10.3991/ijet.v13i03.8372

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