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Research on Mining of Applied Mathematics Educational Resources Based on Edge Computing and Data Stream Classification

机译:基于边缘计算和数据流分类的应用数学教育资源开采研究

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Facing the massive data of higher education institutions, data mining technology is an intelligent information processing technology that can effectively discover knowledge from the massive data and can discover important information that people have previously ignored from the huge data information. This article is dedicated to the development of applied mathematics education resource mining technology based on edge computing and data stream classification. First of all, this article establishes a resource system architecture suitable for existing applied mathematics education through edge computing technology, which can effectively improve the efficiency of data mining. Secondly, the data stream classification algorithm is used for information extraction and classification integration of massive applied mathematical education data. This method provides potential and valuable information for decision-makers and education practitioners. Finally, the simulation and performance test of the system verify that it has the functions of mathematical information mining and data processing. This system will provide strong support for applied mathematics education reform.
机译:面对高等教育机构的大规模数据,数据挖掘技术是一种智能信息处理技术,可以有效地发现来自大规模数据的知识,并且可以发现人们先前从巨大的数据信息中忽略的重要信息。本文致力于基于边缘计算和数据流分类的应用数学教育资源挖掘技术的开发。首先,本文通过边缘计算技术建立了适用于现有应用数学教育的资源系统架构,可以有效提高数据挖掘的效率。其次,数据流分类算法用于大规模应用数学教育数据的信息提取和分类集成。这种方法为决策者和教育从业者提供了潜在和有价值的信息。最后,系统的仿真和性能测试验证了它具有数学信息挖掘和数据处理的功能。该系统将为应用数学教育改革提供强有力的支持。

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