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2020 | OriginalPaper | Chapter

High-Quality Extraction Method of Education Resources Based on Block Chain Trusted Big Data

Authors : Hao Zhang, Bin Zhao, Ji-shun Ma

Published in: e-Learning, e-Education, and Online Training

Publisher: Springer International Publishing

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Abstract

In order to improve the level of educational administration, it is necessary to extract educational resources with high quality Based on the block chain trust, a high-quality education resource extraction method is proposed, and a model function of high-quality education resource extraction is designed by using the spatial distribution resource scheduling model. In order to judge the convergence of high-quality education resource extraction process, a statistical analysis model of high-quality education resource extraction is established. The method of quantitative feature analysis and fuzzy information clustering is used to extract and control the high quality of educational resources. The root game equilibrium optimization algorithm realizes the optimization of the high quality of educational resources. The simulation results show that the optimization ability of using this method to extract the high quality of educational resources is better, and the scheduling process has strong convergence, it improves the ability of optimal scheduling and acquisition of educational resources.

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Metadata
Title
High-Quality Extraction Method of Education Resources Based on Block Chain Trusted Big Data
Authors
Hao Zhang
Bin Zhao
Ji-shun Ma
Copyright Year
2020
DOI
https://doi.org/10.1007/978-3-030-63955-6_8

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