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Prediction of College Employment Rate Based on Big Data Analysis

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  • Xuhui Dong

Abstract

This paper uses big data technology to predict the employment rate of colleges and universities. In this paper, combined with the current rental price, daily life consumption, and college students’ personal interests and hobbies consumption and other indicators, the individual is simulated by big data, and the individual is associated by using the AI-driven edge fog computing service optimization algorithm to form a cluster, so as to realize the prediction from element to neural network cluster by using edge computing. In addition, this paper takes the employment data of colleges and universities in Hunan province from June 2020 to May 2021 as the research sample to test the prediction model and makes a comparative analysis with the CNN model and LSTM model. The edge fog computing model in this paper has more analytical indexes as tuples compared to the CNN model, so the results show that the prediction accuracy can reach 83.25%. In this case, there is little difference between the two models of data processing and predictive efficiency. Compared with the LSTM based classification prediction model, this model is edge computing, which greatly improves the data quality of model and data parameters, and the calculation efficiency can be increased by 45%–65%. Therefore, the use of big data technology can provide a reference for the research direction of higher education.

Suggested Citation

  • Xuhui Dong, 2021. "Prediction of College Employment Rate Based on Big Data Analysis," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-10, December.
  • Handle: RePEc:hin:jnlmpe:1421356
    DOI: 10.1155/2021/1421356
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