Research on the Construction and Application of an Intelligent Education Learner Model Based on the UTAUT Theory

Qing Gao
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Abstract

With the rapid development of computer technology, a new educational model, the innovative education learner model, has emerged as a product of the deep integration of technology and education. In this paper, we will begin by organizing the theories and models related to technology acceptance. We will select the UTAUT model, known for its high explanatory power, as the theoretical framework. Subsequently, we will comprehensively analyze the dataset and conduct in-depth habit mining. The effectiveness of applying K-means concepts to address the classification of clusters of learners’ learning habits is confirmed. The feasibility of the LSTM algorithm in predicting learners for exercise responses is also demonstrated. Next, a learning cluster construction method based on intelligent learner clustering is proposed. The methods of MDS+K-means and spectral clustering are selected for clustering. Learning clusters are constructed, and the performance of the two types of algorithms is compared and analyzed. Finally, the enhanced text feature extraction algorithm is utilized to design and implement the corresponding system for the practical application of the innovative educational learner model. The final experiment proves that the text features extracted by the model are effective, with an error rate of only about 2.8%, thus demonstrating that the intelligent educational learning model in this paper is reasonable.
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基于UTAUT理论的智能教育学习者模型构建与应用研究
随着计算机技术的飞速发展,作为技术与教育深度融合的产物,一种新的教育模式--创新教育学习者模式应运而生。在本文中,我们将首先整理与技术接受相关的理论和模型。我们将选择以高解释力著称的UTAUT模型作为理论框架。随后,我们将全面分析数据集,并进行深入的习惯挖掘。应用 K-means 概念解决学习者学习习惯聚类分类的有效性得到了证实。此外,还证明了 LSTM 算法在预测学习者练习反应方面的可行性。接下来,提出了一种基于智能学习者聚类的学习聚类构建方法。选择 MDS+K-means 和光谱聚类方法进行聚类。构建了学习簇,并对两种算法的性能进行了比较和分析。最后,利用增强型文本特征提取算法设计并实现了相应的系统,用于创新教育学习者模型的实际应用。最后的实验证明,模型提取的文本特征是有效的,错误率仅约为 2.8%,从而证明本文的智能教育学习模型是合理的。
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