基于大数据分析的教育管理平台自动化集成终端研究

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Advances in Data Science and Adaptive Analysis Pub Date : 2022-03-30 DOI:10.1142/s2424922x22500036
Huizhong Zhang, Fanrong Meng, Guizhen Wang, Beenu Mago, Thendral Puyalnithi
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引用次数: 2

摘要

教育是一个动态的系统,学生通过这个系统认识到使他们适应社会所必需的因素。教育主要是有意识的学习,培养个人在成年后的生活中取得成功。教学技术评价、课程管理、沟通和学生监控是当今教育系统的主要特征。为了规划学校和学院的教育管理课程,需要实施MS-BDA。教学技巧和教学管理评估的发展过程包括使用情感分析法,通过管理课程质量来评估学生学习课程的情感感受。结合通信系统和学生监控系统,开发了基于MNN的大数据分析。本系统对MS-BDA中提供的用于学生交流评价的监控模型进行了评价,并将画外音与交流语言处理系统相结合。基于可达性、适应性和效率进行了仿真分析,验证了该框架的可靠性。因此,与现有方法相比,该系统输出的准确率为99.1%。
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Research on the Automation Integration Terminal of the Education Management Platform Based on Big Data Analysis
Education is a dynamic system by which students perceive the factors necessary to fit them into the society. Education is mainly intentional learning that grooms individuals to achieve success in their adult lives. Evaluation of teaching techniques, course management (CM), communication, and student monitoring are the main characteristics of today’s education system. The aim to plan the curriculum of education management in both schools and colleges leads to the implementation of an MS-BDA. The development process for evaluation of teaching techniques and CM includes the use of the sentiment analysis method, which assesses the emotional feelings of students studying the course by managing curriculum quality. The big data analysis with MNN is developed by considering the communication and student monitoring system. This system evaluates the monitoring model provided in MS-BDA for assessing student communication on merging the voice-over with the communication language processing system. The simulation analysis is performed based on accessibility, adaptability, and efficiency, proving the proposed framework’s reliability. Therefore, the system outputs an accuracy of 99.1% when compared to the existing methods.
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来源期刊
Advances in Data Science and Adaptive Analysis
Advances in Data Science and Adaptive Analysis MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
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