School of Marxism, Lanzhou City University, Lanzhou, Gansu 730070, China.
Comput Intell Neurosci. 2022 Jul 20;2022:8161596. doi: 10.1155/2022/8161596. eCollection 2022.
This paper aims to design and implement the online political and ideological teaching system based on personalized recommendation in order to more accurately recommend teaching resources appropriate for students' learning, thus improving the learning efficiency and teaching quality of the online political and ideological teaching system. First, the design of the online political and ideological education system is detailed, along with its basic framework, functional modules, hierarchical structure, and database. A personalized recommendation approach based on knowledge map is proposed. The algorithm is applied to the online political and ideological teaching system to understand the differences of students' interests in different teaching resources, establish a student interest transfer model, and effectively improve the transfer of students' interests. On the basis of knowledge map, the matrix decomposition method is introduced, matched with the knowledge map to obtain the recommendation prediction score, and the feedback model is established and extended. Measure the dynamic transformation of the recommended ideological and political teaching content, and comprehensively consider the long-term and short-term preferences of students, so as to realize the personalized recommendation of ideological and political teaching resources. Experiments show that the personalized recommendation online political and ideological teaching system designed in this paper has good overall performance, the accuracy of the proposed recommendation approach is high, and the recommendation time is fast, so as to improve the teaching quality of the teaching system.
本文旨在设计并实现基于个性化推荐的在线思想政治教学系统,以便更准确地推荐适合学生学习的教学资源,从而提高在线思想政治教学系统的学习效率和教学质量。首先详细设计了在线思想政治教育系统,包括其基本框架、功能模块、层次结构和数据库。提出了一种基于知识图的个性化推荐方法。将该算法应用于在线思想政治教学系统中,了解学生对不同教学资源的兴趣差异,建立学生兴趣转移模型,有效提高学生兴趣的转移。在知识图的基础上,引入矩阵分解方法,与知识图相匹配,得到推荐预测得分,并建立和扩展反馈模型。衡量推荐思想政治教学内容的动态变化,综合考虑学生的长期和短期偏好,从而实现思想政治教学资源的个性化推荐。实验表明,本文设计的个性化推荐在线思想政治教学系统整体性能良好,提出的推荐方法准确性高,推荐时间快,从而提高了教学系统的教学质量。