Penerapan Data Mining Untuk Klasifikasi Penerima Dana Bantuan Sosial Dengan Menggunakan Algoritma K-Nearest Neighbor

Agung Triayudi
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Abstract

The Social Assistance Fund (Bansos) is a government program carried out to assist in eradicating community poverty in Indonesia and improving the welfare of families in Indonesia. Social Assistance Funds (Bansos) are distributed from the central ministry, then forwarded to local social services and then distributed to the community through each sub-district office. After data collection is carried out, the process of determining and selecting the families who receive Social Assistance Funds (Bansos) is carried out. However, in the implementation process there were several obstacles, one of which was that the provision of Social Assistance Funds (Bansos) was still not on target for families who deserved to receive Social Assistance Funds (Bansos). This problem is an important matter that must be resolved, this is because the main aim of the Social Assistance Fund (Bansos) program is to help eradicate poverty in Indonesia. Reviewing and processing data again based on previous data can be completed using one of the computer techniques. Data mining is a technique used to reprocess data. Data processing returns to data mining based on data previously stored in a data collection or data warehouse. Classification is part of data mining which aims to find out certain models of data so that they can be divided into several classes or groups. The K-Nearest Neighbor (K-NN) algorithm is part of a data mining technique which aims to divide data into certain groups. The results obtained in the research are the K value used in the research, namely K=7, the result of the family data grouping process which has just determined that the family received Social Assistance Funds (Bansos).
使用 K 近邻算法对社会援助基金受助人进行分类的数据挖掘应用
社会援助基金(Bansos)是一项政府项目,旨在帮助消除印度尼西亚的社区贫困,改善印度尼西亚家庭的福利。社会援助基金(Bansos)由中央部门分发,然后转交给地方社会服务机构,然后通过每个街道办事处分发给社区。数据收集工作完成后,就开始确定和选择领取社会援助基金的家庭。但是,在执行过程中存在着一些障碍,其中之一是社会援助基金(班索斯)的提供仍然没有达到应该获得社会援助基金(班索斯)的家庭的目标。这是一个必须解决的重要问题,因为社会援助基金(Bansos)计划的主要目的是帮助消除印度尼西亚的贫困。根据以前的数据重新审查和处理数据可以使用一种计算机技术完成。数据挖掘是一种用于重新处理数据的技术。数据处理返回到基于先前存储在数据集合或数据仓库中的数据的数据挖掘。分类是数据挖掘的一部分,其目的是找出数据的某些模型,以便将它们分成几个类或组。k -最近邻(K-NN)算法是数据挖掘技术的一部分,旨在将数据划分为特定的组。本研究得到的结果为本研究使用的K值,即K=7,即刚刚确定该家庭获得社会救助基金(Bansos)的家庭数据分组过程的结果。
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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