Integration Development of Civic Education and Student Management in Colleges and Universities Based on Combining Data Fusion Model in the Context of Exquisite Parenting

IF 3.1 Q1 Mathematics
Yangjun Jing
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引用次数: 0

Abstract

Abstract This paper focuses on the design of an educational early warning mechanism based on the fusion of ideological education and multi-featured data so as to manage the educational situation of students in colleges and universities efficiently and accurately. In this paper, the wavelet transform, discrete Fourier transform, and lag sequence analysis algorithms are used to effectively extract temporal features of students’ behaviors. PageRank and Hit’s algorithms are employed to extract features related to student concept maps. The emotional tendencies recognition interface provided by Tencent Cloud was used to obtain the emotional features of students’ speeches. Following this, a multi-feature fusion was performed to depict the students’ learning. A Hive-based data warehouse is used to integrate heterogeneous data from multiple sources. Finally, the education early warning model based on multi-feature data fusion is introduced, and the operation mechanism of early warning mechanism for ideological and political education in colleges and universities is established. To verify the effect of this paper’s model against other algorithms, this paper’s model achieves the optimal performance in the F1 score in negative samples, which is 0.91, followed by the TPA-LSTM algorithm, which is 0.88. Before the optimization of the early warning mechanism, the average per capita absenteeism of the students was 1.32 sessions, and the rate of disciplinary actions was 0.0291. At the end of the academic year, the average per capita absence rate decreases to 1.24 sessions, and the disciplinary action rate decreases to 0.0245.
精致育人背景下基于数据融合模型的高校思政教育与学生管理融合发展
摘要:本文重点设计了一种基于思想教育与多特征数据融合的教育预警机制,以实现对高校学生教育状况的高效、准确管理。本文采用小波变换、离散傅立叶变换和滞后序列分析算法,有效提取学生行为的时间特征。利用PageRank和Hit算法提取学生概念图的相关特征。利用腾讯云提供的情感倾向识别界面,获取学生演讲的情感特征。在此之后,进行多特征融合来描述学生的学习。基于hive的数据仓库用于集成来自多个数据源的异构数据。最后,介绍了基于多特征数据融合的教育预警模型,建立了高校思想政治教育预警机制的运行机制。为了验证本文模型与其他算法的对比效果,本文模型在负样本F1得分上达到最优,为0.91,其次是TPA-LSTM算法,为0.88。优化预警机制前,学生人均旷课1.32次,违纪率0.0291次。学年结束时,人均缺勤率降至1.24次,违纪处分率降至0.0245次。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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