论文标题

基于改进的桦木算法的互动学习活动的聚类分析

Clustering Analysis of Interactive Learning Activities Based on Improved BIRCH Algorithm

论文作者

Xia, Xiaona

论文摘要

小组趋势是计算机辅助学习的研究分支。良好的学习行为的建设对于学习者的学习过程和学习效果至关重要,并且是数据驱动教育决策的关键基础。聚类分析是研究小组趋势的有效方法。因此,有必要获得多个时期和多课程的在线学习行为集,并将学习行为描述为多维学习互动活动。首先,在数据初始化和标准化的基础上,我们找到数据的分类条件,实现学习行为的差异化和集成,并形成要聚类的数据的多个数据集;其次,根据学习相互作用活动之间的拓扑相关性和依赖性,我们根据随机步行策略设计了改进的桦木聚类算法,该策略实现了取回评估和关键学习互动活动的数据;第三,通过对几个性能索引的计算和比较,改进的算法在学习交互式活动聚类中具有明显的优势,聚类过程和结果是可行且可靠的。这项研究的结论可用于参考,可以普及。它对教育大数据的研究和学习分析的实际应用具有实际意义。

Group tendency is a research branch of computer assisted learning. The construction of good learning behavior is of great significance to learners' learning process and learning effect, and is the key basis of data-driven education decision-making. Clustering analysis is an effective method for the study of group tendency. Therefore, it is necessary to obtain the online learning behavior big data set of multi period and multi course, and describe the learning behavior as multi-dimensional learning interaction activities. First of all, on the basis of data initialization and standardization, we locate the classification conditions of data, realize the differentiation and integration of learning behavior, and form multiple subsets of data to be clustered; secondly, according to the topological relevance and dependence between learning interaction activities, we design an improved algorithm of BIRCH clustering based on random walking strategy, which realizes the retrieval evaluation and data of key learning interaction activities; Thirdly, through the calculation and comparison of several performance indexes, the improved algorithm has obvious advantages in learning interactive activity clustering, and the clustering process and results are feasible and reliable. The conclusion of this study can be used for reference and can be popularized. It has practical significance for the research of education big data and the practical application of learning analytics.

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