Identification of the distribution village maturation: Village classification using Density-based spatial clustering of applications with noise

O. Okfalisa, Angraini Angraini, Sh Novi, Hidayati Rusnedy, Lestari Handayani, M. Mustakim
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引用次数: 2

Abstract

The rural development measurement is undoubtedly not easy due to its particular needs and conditions. This study classifies village performance from social, economic, and ecological indices. One thousand five hundred ninety-one villages from the Community and Village Empowerment Office at Riau Province, Indonesia, are grouped into five village maturation classes: very under-developed village, under-developed village, developing village, developed village, and independent village. To date, Density-based spatial clustering of applications with noise (DBSCAN) is utilized in mining 13 of the villages’ attributes. Python programming is applied to analyze and evaluate the DBSCAN activities. The study reveals the grouping’s silhouette coefficient values at 0.8231, thus indicating the well-being clustering performance. The epsilon and minimum points values are considered in DBSCAN evaluation with percentage splits simulation. This grouping can be used as guidelines for governments in analyzing the distribution of rural development subsidies more optimal.
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分布村落成熟度的识别:基于密度的含噪声空间聚类的村落分类应用
农村发展测量由于其特殊的需要和条件,无疑是不容易的。本研究从社会、经济和生态指标对村庄绩效进行分类。印度尼西亚廖内省社区和村庄赋权办公室的一千五百九十一个村庄被分为五个村庄成熟阶段:非常不发达的村庄、不发达的村庄、发展中村庄、发达村庄和独立村庄。迄今为止,利用基于密度的带噪声应用空间聚类(DBSCAN)方法对13个村庄属性进行了挖掘。Python编程应用于分析和评估DBSCAN活动。研究发现,分组的剪影系数值为0.8231,表明幸福感聚类绩效。在百分比分割模拟的DBSCAN评估中考虑了最小值和最小值。这种分组可以作为政府分析农村发展补贴分配更优的指导方针。
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