Visual Knowledge Graph Construction of Self-directed Learning Ability Driven by Interdisciplinary Projects

Xiangying Kou
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Abstract

INTRODUCTION: The application of interdisciplinary information technology is becoming more and more widespread, and the application of visual knowledge mapping in the process of students' independent learning is also becoming more and more important; therefore, in this context, takes the history discipline as a starting point to study the construction of visual knowledge mapping of students' independent learning ability under the drive of interdisciplinary projects.OBJECTIVES: To enrich the means of student independent learning aids in China's history discipline and enhance the modernization level of China's history discipline construction; to solve the problem that student independent learning ability under the drive of China's interdisciplinary projects can not be visualized and observed; to further improve China's distance education environment and to enhance the educational capacity of the history discipline.METHODS: Firstly, the relevant modeling uses a visual knowledge map. Secondly, the neural network model assesses students' independent learning ability in history learning. Finally, the convolutional neural network model is used to assess the efficiency of the knowledge map.RESULTS: The Sig and Tanh function models have better robustness, and the ReLU and PReLU functions have weaker interdisciplinary driving performance. However, the iterative Knownledge1 and Knownledge2 models have better robustness of the visualized knowledge graph.CONCLUSION: In studying history, the interdisciplinary, project-driven, and independent learning ability of students could be more vital, and our country should vigorously develop new information network technology to improve the status quo of history discipline education in China.
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跨学科项目驱动下自主学习能力的可视化知识图谱构建
引言:跨学科信息技术的应用越来越广泛,可视化知识图谱在学生自主学习过程中的应用也越来越重要,因此,在此背景下,以历史学科为切入点,研究跨学科项目驱动下的学生自主学习能力可视化知识图谱的构建:丰富我国历史学科学生自主学习辅助手段,提升我国历史学科建设现代化水平;解决我国跨学科项目驱动下学生自主学习能力无法可视化观察的问题;进一步改善我国远程教育环境,提升历史学科教育能力。方法:首先,利用可视化知识图谱建立相关模型;其次,利用神经网络模型评估学生在历史学习中的自主学习能力。结果:Sig 和 Tanh 函数模型具有较好的鲁棒性,ReLU 和 PReLU 函数的跨学科驱动性能较弱。结论:在历史学习中,学生的跨学科、项目驱动、自主学习能力可以发挥更大的作用,我国应大力发展新型信息网络技术,改善我国历史学科教育现状。
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