大数据环境下改进型 Apriori 算法在体育自适应在线教学系统中的应用研究

Yan Yang, Jingang Fan, Jiabao Liu
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引用次数: 0

摘要

自适应教育系统中的每个学生在知识背景、能力水平和认知风格等方面都存在显著差异。因此,要构建自适应教学系统,就必须明确学生的能力和差异,建立可操作的、合理的、个性化的学生模型。大数据下的改进型Apriori算法是最经典的关联规则算法,它由一组候选项生成,采用分层搜索的迭代方法遍历事务数据库中的一组频率项。找到频率项集合后,根据信任规则选择关联。本文研究了如何将改进的 Apriori 算法应用于大数据环境下的自适应在线教育系统。采用进化代数,平均拟合度为 80,种群规模为 20,平均拟合度为 0.28,种群规模为 60,平均拟合度为 0.26,种群规模为 80,平均拟合度为 0.25,平均种群规模为 0.25。人口数量为 200,平均拟合值为 0.24。误差越大,说明试卷各指标与用户指定的相应值之间的误差越小。大数据环境下改进后的Apriori算法设计了五个主题的规则挖掘,主要用于班级管理:班级联系、班级类别联系、学生基本信息联系、授课与基本信息联系、授课模式联系。它们发挥着教学助手的作用,具有特定的作用。
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Research on the Application of Improved Apriori Algorithm in Sport-Adaptive Online Teaching System Under Big Data Environment
Each student in an adaptive education system has significant differences in knowledge background, ability level and cognitive style. Therefore, to build an adaptive teaching system, it is necessary to establish an operable, reasonable and individualized student model by clarifying students’ abilities and differences. The improved Apriori algorithm under big data is the most classic association rule algorithm, which is generated by a set of candidates, and it uses the iterative method of hierarchical search to traverse a set of frequency items in the transaction database. After finding the set of frequency items, select the association according to the trust rules. This paper studies how to apply the improved Apriori algorithm to an adaptive online education system in a big data environment. An evolutionary algebra is taken with mean fit of 80, population size of 20, mean fit of 0.28, population size of 60, mean fit of 0.26, population size of 80, mean fit of 0.25, mean population size of 0.25. The population size is 200, and the average fitting is 0.24. The larger the error, the smaller the error between each indicator of the test paper and the corresponding value specified by the user. The improved Apriori algorithm in the big data environment has designed five themes of rule mining, which are mainly used for class management: class linkage, class category linkage, student basic information linkage, lecture and basic information linkage, and lecture mode linkage. They play the role of teaching assistants with a specific role.
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来源期刊
International Journal of High Speed Electronics and Systems
International Journal of High Speed Electronics and Systems Engineering-Electrical and Electronic Engineering
CiteScore
0.60
自引率
0.00%
发文量
22
期刊介绍: Launched in 1990, the International Journal of High Speed Electronics and Systems (IJHSES) has served graduate students and those in R&D, managerial and marketing positions by giving state-of-the-art data, and the latest research trends. Its main charter is to promote engineering education by advancing interdisciplinary science between electronics and systems and to explore high speed technology in photonics and electronics. IJHSES, a quarterly journal, continues to feature a broad coverage of topics relating to high speed or high performance devices, circuits and systems.
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