基于大数据的用户学习风格模型识别研究与实践

Rao Xue-jun, Zhang Ya-ni, Zhao Wei-Hu, Wang Xiao-shuang
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引用次数: 2

摘要

“互联网+”时代的新教育理念要求教育者关注用户的个性化学习和发展。由于网络中海量的学习资源,用户很难根据自己的学习特点和习惯做出科学的选择,导致学习效率低下。如何利用教育大数据分析技术为用户提供精准服务,本文采用大数据分析方法构建用户学习风格识别模型,根据数据预处理、大数据关键参数拟合优化、KNN算法识别用户学习风格,为精准推送个性化学习资源和路径提供技术手段。最后,根据用户动态学习行为数据,基于Felder-Silverman学习风格模型理论,通过两个教学班的实验对比,表明研究成果能够满足学习需求,为用户提供有效的指导,有助于提高学习效率,促进个性化发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research and Practice of User Learning Style Model Recognition Based on Big Data
The new education concept in the “Internet plus” era requires educators to focus on the personalized learning and development of users. Due to the massive learning resources in the network, it is difficult for users to make scientific choices according to their own learning characteristics and habits, resulting in low learning efficiency. How to use education big data analysis technology to provide accurate services for users, this paper uses big data analysis method to build user learning style recognition model, according to data preprocessing, big data key parameters fitting optimization, KNN algorithm to identify user learning style, and provide technical means for accurately pushing personalized learning resources and paths. Finally, according to the dynamic learning behavior data of users, based on the theory of Felder-Silverman learning style model, through the experimental comparison of two teaching classes, it shows that the research results can meet the learning needs, provide effective guidance for users, help to improve learning efficiency and promote personalized development.
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