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Type :Article
Subject :N Visual arts (General) For photography, see TR
ISBN :2772-9419
Main Author :Muhamad Firdaus Ramli
Title :Design and optimization of an open personalized human-computer interaction system for New Year Painting based on the learner
Hits :69
Place of Production :Tanjung Malim
Publisher :Fakulti Seni, Kelestarian & Industri Kreatif
Year of Publication :2024
Notes :Systems and Soft Computing
Corporate Name :Universiti Pendidikan Sultan Idris
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Abstract : Universiti Pendidikan Sultan Idris
With the rapid development of information technology such as big data and learning analytics, intelligent systems, a product of the deep integration of technology and education, have emerged. In this paper, a human-computer interaction teaching system for traditional New Year Painting is proposed based on the learner model. Firstly, the attention mechanism based long and short term memory network is used to mine the emotion from the course review text of learners, and the association rule algorithm and ID3 algorithm are used to initialize and dynamically update the text. Constructing a personalized HCI teaching system with the learner as the center. Based on the smart learning model, the functional modules of the human-computer interaction teaching system are analyzed and designed in detail, including online learning, online testing and educational information. The design of the database of the intelligent teaching system is proposed, and the design process of the database is fully demonstrated in terms of both database relationship design and database table structure design, taking into account the security of the database. Finally, the learner model and personalized human-computer interaction system that incorporate the emotions of this paper are tested for performance, and the results show that the prediction accuracy of this paper's model is about 3 % higher than the standard model DKT on the 2009 dataset, about 3 % higher than the standard model DKT on the AUC index, and about 4 % lower than the standard model DKT on the RMSE index. Students learn through the personalized human-computer interaction system, and their mastery of the traditional art of New Year's Paintings is more thorough, and the learning effect is significantly improved. © 2023

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