新冠肺炎大流行期间大学生过度消费的KPAG分析

Bin Zhao, Jinming Cao
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引用次数: 0

摘要

随着新冠肺炎疫情的到来,一些地区被封闭管理,人们的消费方式发生了变化。这也导致了一些人的过度消费,尤其是大学生。为了对不合理消费行为进行预警,本研究设计了KPAG算法对消费风险进行预警。采用粒子群优化(PSO)核主成分分析(KPCA)参数优化、最优多项式核删除数据信息,以及蚁群遗传算法(关联)聚类分析对数据降维,根据大学生消费行为将其分为三类,为大学生消费行为构建预警模型。通过对真实数据的分类和验证实验,结果表明,与传统的PCA数据拟合方法相比,本文模型的准确率可达到90%,比传统算法更可靠,模型的准确率提高了近20%,可用于有效预警。
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 Excess Consumption in College Students by KPAG Method During the COVID-19 Pandemic
With the arrival of COVID-19, some areas are under closed management, bringing about changes in the way people consume. It also leads to the excessive consumption of some people, especially college students. In order to give early warning to unreasonable consumption behavior, this study designed KPAG algorithm to give early warning to consumption risk. Using particle swarm optimization (PSO) kernel principal component analysis (KPCA) parameter optimization, optimal polynomial kernel to delete data information, and ant colony genetic algorithm (association) clustering analysis of data dimensionality reduction, according to the consumption behavior of college students are divided into three categories, for the consumption behavior of college students to build an early warning model. Through the classification and verification experiment of real data, the results show that compared with the traditional PCA data fitting method, the accuracy of the model in this paper can reach 90%, which is more reliable than the traditional algorithm, and the accuracy of the model is improved by nearly 20%, which can be used for effective early warning.
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