以数字化手段和技术哲学分析职业教育服务乡村振兴的实践路径

IF 3.1 Q1 Mathematics
Feifei Tian
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引用次数: 0

摘要

摘要本文基于数字化手段和技术理念,利用Light GBM模型中的直方图算法,对乡村振兴职业教育服务分析的原始数据进行浮点值计算,将其各个特征转化为直方图。为了防止LightGBM模型的特征训练过拟合问题,采用迭代树MPA算法对LightGBM模型进行优化,构建了基于IMPA-LightGBM的回归贫困风险预测模型。从职业教育服务乡村振兴的现状出发,提出研究假设,实现职业教育精准扶贫服务乡村振兴的研究设计,并结合数字技术对职业教育服务乡村振兴进行实例分析。结果表明,从模型性能上看,IMPA-LightGBM模型预测所得的返贫风险值的WAPE值均小于5.5%,预测效果较为满意,可以有效预测贫困户返贫风险值。在实践道路分析中,中国整体乡村振兴发展指数的标准差(SD)从0.63下降到0.52,说明乡村振兴的省际差异正在缩小。本研究透过培育新型职业农民,探讨职业教育与乡村振兴的利益共同体协同发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of the Practical Path of Vocational Education Serving Rural Revitalization by Digital Means and Philosophy of Technology
Abstract In this paper, based on digital means and technical philosophy, the histogram algorithm in the Light GBM model is used to calculate the floating point values of the raw data for the analysis of vocational education service for rural revitalization so that each of its features is converted into a histogram. In order to prevent the feature training overfitting problem of the Light GBM model, the LightGBM model is optimized by the iterative tree MPA algorithm, and the prediction model of returning to poverty risk based on IMPA-LightGBM is constructed. Starting from the current situation of vocational education service for rural revitalization, we put forward research hypotheses to realize the research design of vocational education accurate poverty alleviation service for rural revitalization and carry out an example analysis of vocational education service for rural revitalization combined with digital technology. The results show that in terms of model performance, the WAPE values of the return-to-poor risk values obtained from the prediction of the IMPA-LightGBM model are all lower than 5.5%, so the prediction effect is relatively satisfactory, and the return-to-poor risk values of poverty-eradicating households can be effectively predicted. On the practice road analysis, the standard deviation (SD) of the rural revitalization development index in China as a whole decreased from 0.63 to 0.52, which means that the differences in rural revitalization among provinces are decreasing. This study explores the synergistic development of the community of interest between vocational education and rural revitalization through the cultivation of new vocational farmers.
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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