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Poverty classification using Analytic Hierarchy Process and k-means clustering

机译:使用分析层次过程和K-Means群集的扶贫分类

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The successfulness of poverty alleviation programs depends on the accuracy of poverty data. The government needs to collect poverty data and analyze them to determine which poverty alleviation programs should be delivered to. A data collection process is often done by conducting a survey that consists of 14 survey variables. However, raw data collected from surveys are not useful if they are presented as is. These survey data need to be processed further to support decision making. This paper presents a method to process survey data into categories using Analytic Hierarchy Process (AHP) and k-means clustering method. The categories consist of three poverty levels, such as near poor, poor, and very poor. We also present a workflow of survey and a implementation of this method to collect and process poverty data.
机译:扶贫方案的成功取决于贫困数据的准确性。政府需要收集贫困数据,并分析他们,以确定应提供哪些扶贫计划。经常通过进行14个调查变量组成的调查来完成数据收集过程。但是,如果从调查中收集的原始数据如果按原样呈现,则无用。这些调查数据需要进一步处理以支持决策。本文介绍了使用分析层次处理(AHP)和K-Means聚类方法将调查数据处理调查数据的方法。这些类别由三个贫困水平组成,例如差距,差,差,非常差。我们还提供了调查的工作流程和该方法的实施,以收集和处理贫困数据。

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