Study of Methods for Constructing Intelligent Learning Models Supported by Artificial Intelligence

Lijun Pan
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Abstract

INTRODUCTION: As the essential part of intelligent learning, innovative learning model construction is conducive to improving the quality of intelligent new teaching models, thus leading the deep integration of teaching and artificial intelligence and accelerating the change and development of teaching supported by artificial intelligence.OBJECTIVES: Aiming at the current intelligent teaching evaluation design method, there are problems such as more objectivity, poor precision, and a single method of evaluation indexes.METHODS: his paper proposes an intelligent learning construction method based on cluster analysis and deep learning algorithms. First of all, the intelligent learning model construction process is sorted out by clarifying the idea of clever learning model construction and extracting model elements; then, the intelligent learning model is constructed through a K-means clustering algorithm and deep compression sparse self-encoder; finally, the effectiveness and high efficiency of the proposed method is verified through simulation experiment analysis.RESULTS: Solved the problem that the intelligent learning model construction method is not objective enough, has poor accuracy and is not efficient enough.CONCLUSION: The results show that the proposed method improves the model’s accuracy.
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人工智能支持下的智能学习模型构建方法研究
引言:作为智能学习的重要组成部分,创新学习模式构建有利于提高智能新型教学模式的质量,从而引领教学与人工智能的深度融合,加速人工智能支持下的教学变革与发展:针对当前智能教学评价设计方法存在客观性较强、精准性较差、评价指标方法单一等问题。方法:本文提出了一种基于聚类分析和深度学习算法的智能学习构建方法。首先,通过理清智能学习模型构建思路,提取模型要素,梳理了智能学习模型构建流程;然后,通过K均值聚类算法和深度压缩稀疏自编码器构建了智能学习模型;最后,通过仿真实验分析验证了所提方法的有效性和高效性。结果:解决了智能学习模型构建方法不够客观、精度较差、效率不高等问题。
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