Algorithm Model of K-means for Poor Households Classifying
Abstract
Poverty is a complex problem experienced by majority of world’s nations especially in the developing
countries such as Indonesia. Poverty countermeasure has become the main country development program
as one of the indicators of development success is the decrease of poverty rate. Various programs either
in national or regional scale have been made as the government’s attempt to reduce the poverty rate.
However, there have been a lot of news reports covering the government’s programs which are less
precise and even not on the target. Thus, it is essential to have a method which can be implemented to
help the planning process of those poverty alleviation programs. This study aims at explaining the
formation of K-means algorithm model for classifying poor households; taking a study case in Banyumas
Regency, Central Java. The result of this study was K-means algorithm model which has been adapted to
the poverty concept from the Statistics Indonesia (BPS) as well as the factors affecting the household
poverty. The information obtained from each cluster formed is household characteristics, estimation of
household number, and estimation of population experiencing poverty.
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- LSP-Jurnal Ilmiah Dosen [7301]