普通教育与职业教育招生比例预测模型的比较研究

Qiongqiong Chen
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摘要

通识教育和职业教育招生比例的预测研究对于优化区域人才结构和调整产业结构具有重要意义。通识教育和职业教育的合理招生比例,对调整整体就业结构和区域经济发展也具有重要作用。因此,寻求一种更为准确可靠的通识教育与职业教育招生比例预测模型迫在眉睫。基于灰色预测模型、指数平滑模型、ARIMA模型和BP神经网络,以2010 - 2018年全国各地区招生比例数据为数据样本,对2019年各地区招生比例进行预测。通过与实际值的比较,发现指数平滑模型对普通教育和职业教育招生比例的预测具有最好的准确性和稳定性。采用指数平滑模型对高中招生人数和职业教育招生人数进行预测,对保证各地区人力资源结构合理,促进教育系统协调发展具有重要意义。
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A Comparative Study on the Forecast Models of the Enrollment Proportion of General Education and Vocational Education
Predictive research on the enrollment proportion of general education and vocational education is crucial to optimizing the regional talent structure and industrial structure adjustment. The reasonable enrollment proportion of general education and vocational education also plays an important role in the adjustment of the overall employment structure and the development of the regional economy. Therefore, it is imminent to seek a more accurate and reliable prediction model of the enrollment proportion of general education and vocational education. Based on the grey prediction model, exponential smoothing model, ARIMA model and BP neural network, and with the data of the enrollment proportion of all regions in China from 2010 to 2018 as the data sample, the enrollment proportion of each region in 2019 is predicted. By comparing the predicted values with the real values, it is found that the exponential smoothing model has the best accuracy and stability for the enrollment proportion of general education and vocational education forecast. Exponential smoothing model is used to predict the number of high school enrollment and vocational education enrollment, which is of great significance to ensure the reasonable structure of human resources in various regions and promote the coordinated development of the education system.
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