Network Autonomous Learning Monitoring System Based on SVM Algorithm

Yujiao Wang, Haiyun Lin, Chunyu Li, L. She, Li Sun, Junwei Wang
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Abstract

The network autonomous learning monitoring system is a subsystem of the learning quality monitoring system in the network education platform. Based on the training objectives of network education and the course learning objectives of learners, and on the basis of educational evaluation theory, it makes value judgments on learners' attitudes, knowledge and ability development level in the whole learning process. Through the planning, inspection, evaluation, feedback, control and adjustment of learners' learning activities, timely guide learners to correct their learning attitude, adjust their learning strategies, and effectively use learning resources and modern information technology means to carry out autonomous learning, so as to achieve the expected learning goals. The network self-learning monitoring system is based on the database created by SQL Server platform, supports C/S structure, has good scalability and usability, and is used to extract and analyze data. SVM algorithm is used to extract system features, which has the advantages of low system load, low response delay and good performance. An accurate network autonomous learning monitoring system model is constructed. After system test, the network autonomous learning monitoring system based on SVM algorithm has high data analysis ability, easy to understand, easy to maintain, reasonable structure and easy to use, which meets the needs of learners. Using SVM algorithm for feature extraction, the evaluation performance of the algorithm is improved by more than 3.2%. When learners learn in the system, the system load is small, the response delay is low, and the performance is good. It is an accurate network autonomous learning monitoring system.
基于SVM算法的网络自主学习监控系统
网络自主学习监控系统是网络教育平台中学习质量监控系统的一个子系统。以网络教育的培养目标和学习者的课程学习目标为依据,以教育评价理论为基础,对学习者在整个学习过程中的态度、知识和能力发展水平进行价值判断。通过对学习者学习活动的规划、检查、评价、反馈、控制和调整,及时引导学习者端正学习态度,调整学习策略,有效利用学习资源和现代信息技术手段进行自主学习,从而达到预期的学习目标。网络自学习监控系统基于SQL Server平台创建的数据库,支持C/S结构,具有良好的可扩展性和可用性,用于数据的提取和分析。采用支持向量机算法提取系统特征,具有系统负载小、响应延迟小、性能好等优点。构建了一个精确的网络自主学习监控系统模型。经过系统测试,基于SVM算法的网络自主学习监控系统具有数据分析能力高、易于理解、易于维护、结构合理、使用方便等特点,满足了学习者的需求。采用SVM算法进行特征提取,算法的评价性能提高3.2%以上。学习者在系统中学习时,系统负载小,响应延迟低,性能好。它是一个精确的网络自主学习监控系统。
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