Abstract
The work used the current mature computer technology, machine learning technology, and other higher technologies to explore the comprehensive application of educational information management under the internet to provide educational scientific researchers with a retrieval platform for educational statistical information. Deep learning was used to extract useful network features more effectively and make the machine learning model fully consider the constraints of satisfying the constraints and optimization objectives in the problem. Based on the classification of the restricted Boltzmann machine, the Gauss-binary conditional classification of the restricted Boltzmann machine model was proposed as the routing decision unit with the given specific training algorithm of the model.
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Yang, B. (2022). An Empirical Study on the Application of Machine Learning for Higher Education and Social Service. Journal of Global Information Management, 30(7), 1–16. https://doi.org/10.4018/JGIM.296723
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