结合数据分析的管理技术在大学生课程评价与学业预警中的优化与实施

IF 3.6
Xinxin Yang
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引用次数: 0

摘要

教育管理者需要课程评价结果和学术警示来丰富教育管理内容。本研究将数据分析技术融入到教育教学中,利用关联规则挖掘课程评价各维度元素之间的内在关系。结果表明,有兴趣度的Apriori算法性能较好,可减少15条错误规则。关联规则生成的结果表明,教学设计要注重网络资源的建设,教学内容的改革需要高素质教师的提升。学术预警模型采用GA-BP模型对成绩进行预测,然后根据成绩制定预警指标。结果表明,该预测模型的平均准确率为89.12%,优于其他模型,对潜在预警学生群体的预测准确率为76.1%。与最终成绩相比,预测实验结果的拟合度达到97.3%,表明该模型的性能满足学术预警的需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization and implementation of management technology integrated with data analysis for college students' course evaluation and academic early warning
Educational managers need curriculum evaluation results and academic warnings to enrich educational management content. The study integrates data analysis technology into education and teaching, and uses association rules to mine the internal relationship of each dimension element of course evaluation. The results show that the performance of the Apriori algorithm with interest degree is better, and it can reduce 15 wrong rules. The results of association rules generation show that teaching design should pay attention to the construction of network resources, and the reform of teaching content needs the promotion of high-quality teachers. The academic early warning model uses the GA-BP model to predict grades, and then formulates an early warning index based on the grades. The results show that the average accuracy rate of the prediction model is 89.12 %, which is better than other models, and the prediction accuracy rate of the potential early warning student group is >76.1 %. Compared with the final grades, the fitting degree of the prediction experiment results reaches 97.3 %, which shows that the performance of the model meets the needs of academic early warning.
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