Teaching Mode Design and Effect Evaluation Method of Visual Communication Design Course from the Perspective of Big Data

Author:

Xiong Ding12,Soikun Teddy Marius2ORCID,Wang Jijun13

Affiliation:

1. Faculty of Information and Statistics, Guangxi University of Finance and Economics, Guangxi, Nanning 530003, China

2. Academy of Art and Creative Technology, Universiti Malaysia Sabah (UMS), Kota Kinabalu, Sabah 88400, Malaysia

3. Faculty of Computing and Informatics, Universiti Malaysia Sabah (UMS), Kota Kinabalu, Sabah 88400, Malaysia

Abstract

Traditional visual communication design teaching courses only use books and courseware for teaching, which greatly limits students understanding and perception of visual communication design art courses. The visual communication design course is different from the teaching of other subjects; it requires students to have a deep understanding of the content of the video and the experience of emotion. Relying on courseware and book teaching methods will not only limit students’ imagination, but also make students tired of learning psychological activities. The teaching of visual communication design technology is to transmit the images, colors, words, and emotions of artworks to students in the form of video, which is a relatively abstract course. With the development of big data technology, this brings new opportunities for the teaching of visual communication design technology courses. In this study, data mining technology will be used to evaluate the effect of visual communication design teaching. And CNN will be used to predict the content characteristics of visual communication design teaching, which is part of the visual communication design teaching system. The research results show that the big data method has better performance in the visual communication design technology course; both the classification and prediction errors are within the acceptable range for the artwork of the visual communication design course. Big data technology can well predict the relevant features in visual communication design; the largest prediction error is only 2.66%, and the smallest error is only 1.21%.

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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