基于集成学习的精准扶贫贫困户识别

Pengtao Jiang
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引用次数: 0

摘要

扶贫一直是困扰国家经济发展和人民生活的重大问题。通过对精准扶贫的研究,希望找到一种可行的方式、运行机制和原则,从而提高精准扶贫的效果。本文旨在研究基于集成学习的精准扶贫贫困户识别问题。本文介绍了目前精准扶贫的研究现状以及集成学习算法在各个领域的应用,并讨论了boosting和XGBoost在分类方面的一些优势,为下面的内容做铺垫。结合M县的实际情况,对算法指标体系进行了扩充,以更好地反映农民的贫困状况。将集成学习方法应用于贫困识别问题,并采用模型评价标准来衡量多个模型的有效性和稳定性。实验结果表明,本文的XGBoost模型在贫困户识别中具有最佳的应用效果,准确率达到98.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Poor Households in Precision Poverty Alleviation Based on Ensemble Learning
Poverty alleviation has always been a major problem that plagues national economic development and people's livelihood. Through the research on precise poverty alleviation, it is hoped to find a feasible way, its operating mechanism and principle, so as to improve the effect of poverty alleviation. The purpose of this paper is to study the identification of poor households in precision poverty alleviation based on ensemble learning. This paper introduces the current research status of precise poverty alleviation and the application of ensemble learning algorithms in various fields, and discusses some advantages of boosting and XGBoost in classification, paving the way for the following. Combined with the actual situation of M County, the algorithm index system has been expanded to better reflect the poverty status of farmers. The ensemble learning method is applied to the poverty identification problem, and the model evaluation standard is used to measure the effectiveness and stability of multiple models. The experimental results show that the XGBoost model in this paper has the best application effect in the identification of poor households, with an accuracy rate of 98.2%.
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