识别那些真正需要补贴的人:数据驱动的方法

Chunyan Yu, Linfeng Gu, Guilin Chen, Aiguo Wang
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引用次数: 0

摘要

大学经常为经济困难的学生提供补贴和支持政策。然而,传统的申请-审查方法如何科学、准确地识别真正需要资助的学生是一项艰巨的任务。在智慧校园中,学生使用校园卡在食堂吃饭、洗澡、超市购物等日常生活事务上进行消费,消费记录潜在地反映了学生的经济水平和生活习惯。为此,我们提出了一种数据驱动的方法,将统计方法和机器学习模型(CSML)相结合,以准确识别真正需要经济援助的学生。CSML首先对消费数据进行预处理,提取出与饮食和洗浴费用密切相关的7个信息特征。其次,获得不同性别、年级、经济困难程度的整体消费画像,并根据平均消费排除假贫困和疑似贫困学生。第三,使用监督分类模型预测学生所属的经济困难类型,然后使用统计方法检查预测的经济困难学生是否花费更多。实验结果表明,CSML识别经济困难学生的准确率达到96%,显示了CSML在帮助评估补贴效果方面的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Those Who Really Need Subsidies: A Data-Driven Approach
Subsidies and supportive policies have been often offered by universities to students with financial difficulties. However, it is a non-trivial task to scientifically and accurately identify students who really need subsidies with the traditional apply-review method. In a smart campus, students use a campus card to spend money on affairs such as eating in the canteen, taking a bath, and shopping in the supermarket for their daily living, and the consumption records potentially reflect the economic level and the living habits of students. To this end, we herein propose a data-driven approach that combines statistical methods and machine learning models (CSML) to accurately identify students who really need financial aid. CSML first preprocesses the consumption data and extracts seven informative features that are closely related to eating and bath charges. Second, the overall consumption portraits of different gender, grade, and financial difficulty levels are obtained, and false poverty and suspected poverty students are excluded from the study based on the average consumption. Third, a supervised classification model is used to predict the type of financial difficulties a student belongs to, followed by a statistical method to check whether the student predicted with financial difficulties spends more. Experiment results show that CSML achieves a 96% precision in identifying students with financial difficulties, which reveals the power of CSML in helping evaluate the effect of subsidies.
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