Determination of households benefits from subsidies by using data mining approaches

IF 2.6 2区 社会学 Q1 COMMUNICATION
S. M. Alavi A., O. Ebadati E., S. Masoud Alavi A., Towhid Firoozan Sarnaghi
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引用次数: 1

Abstract

ABSTRACT Poverty, known as a widespread economic and political challenge (specifically at the times of crisis, like COVID-19), is a very complicated problem, which many countries have been trying for a long time to eradicate. Cash-subsidy allocation procedure using traditional statistical vision is the famous approach, which articles have targeted. Inefficiency of these solutions besides the fact that a pair of households with exact same situation will not be existing leads us to inadequacy and inaccuracy of these methods. This study, by putting data mining and machine learning (as well-known majors in IT and computer Science) visions together, draws a path to overcome this challenge. For this aim, the social, income and expenditure dimensions of a dataset are surveyed from 18885 households considered to measure the population poverty ratio (a fuzzy look at on their eligibility). In respect to the different experimental mode, the effective features are being filtered to use in FCM algorithm in order to determine to what extend the households in the poor or wealthy. Moreover, Genetic Algorithm displays its efficiency in the role of optimizer. Finally, the evaluation results show more accurate outcomes from the feature selection technique (on normalized data) and get the optimized clusters.
利用数据挖掘方法确定家庭补贴收益
贫困被认为是一个广泛存在的经济和政治挑战(特别是在危机时期,如COVID-19),是一个非常复杂的问题,许多国家长期以来一直在努力消除贫困。使用传统统计视觉的现金补贴分配程序是著名的方法,这是文章所针对的。这些解决方案的效率低下,而且不会存在一对情况完全相同的家庭,这导致了这些方法的不充分和不准确。本研究通过将数据挖掘和机器学习(作为IT和计算机科学的知名专业)的愿景结合在一起,绘制了一条克服这一挑战的道路。为此目的,从18885个家庭中调查了一个数据集的社会、收入和支出维度,这些家庭被认为是衡量人口贫困率(对其资格的模糊看法)。对于不同的实验模式,有效特征被过滤用于FCM算法,以确定贫穷或富裕的家庭扩展到什么程度。此外,遗传算法在优化器的作用下显示了其有效性。最后,评估结果显示特征选择技术(在归一化数据上)的结果更准确,并得到优化的聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.60
自引率
7.70%
发文量
31
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