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Construction of Data Resource Sharing Platform in College Students’ Ideological and Political Education Based on Deep Learning

Published: 01 January 2022 Publication History

Abstract

At present, the irrational allocation of IPE (ideological and political education) resources in universities reflects the dilemma of university’s control of university students’ IPE system. In order to make educational big data really useful to us and really promote the sharing of educational resources and improve the utilization rate of resources, this paper discusses the construction of data resource sharing platform for college students in IPE field based on DL (Deep learning) based on the characteristics and existing problems of educational big data. Based on DL, the collected data are parameterized, the matching algorithm parameters are determined, the dynamic data sample subset is incrementally reduced, the discernibility matrix and logical analytic formula are established, the conjunctive normal form is obtained through calculation, and the kernel attribute is introduced into each conjunctions to realize incremental mining of dynamic data. The results show that the model in this paper achieves the best classification effect on six samples, with an average classification accuracy of 88.81%. The results show that the comprehensive shared data matching algorithm based on DL can realize the matching in a short time, and the matching process has high stability.

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cover image Wireless Communications & Mobile Computing
Wireless Communications & Mobile Computing  Volume 2022, Issue
2022
25226 pages
This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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John Wiley and Sons Ltd.

United Kingdom

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Published: 01 January 2022

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