提高高校精准拨款准确性的有效方法

Heng Li, Xiao Zhang, Xia Li, Yanqiu Wang
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引用次数: 1

摘要

在现有的精准补贴制度中,如何通过分析大量学生校园消费数据,准确选择需要补贴的学生,成为一个难题。我们详细分析了5505名学生的校园消费数据,并将不同学院、年级、性别学生的消费差异可视化。我们提出了K-means聚类和条件表达式的结合,充分考虑了上学天数、用餐频率和平均每日消费。根据该算法的分析结果,100多名学生获得了资助。实验数据和反馈结果表明,该算法具有较好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Method to Improve the Accuracy of Precise Funding in Campus
In the existing precise subsidy system, how to accurately select the students who need to be subsidized by analyzing a large number of student campus consumption data has become a difficult problem. We analyzed the campus consumption data of 5505 students in detail, and visualized the consumption differences of students in different colleges, grades and genders. We proposed a combination of K-means clustering and conditional expression, taking full account of days at school, frequency of meals and average daily consumption. According to the analysis results of this algorithm, more than 100 students were funded. The experimental data and the feedback received indicate that the algorithm has better accuracy.
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