Application of the Spatial Autoregressive (SAR) Method in Analyzing Poverty in Indonesia and the Self Organizing Map (SOM) Method in Grouping Provinces Based …

U Islamy, A Novianti, FP Hidayat… - … International Journal of …, 2021 - journal.uii.ac.id
U Islamy, A Novianti, FP Hidayat, MHS Kurniawan
Enthusiastic: International Journal of Applied Statistics and Data Science, 2021journal.uii.ac.id
The economy is a benchmark to determine the extent of the development of a country.
Indonesia, which is now a developing country, is ranked 5th as the poorest country in
Southeast Asia. Of course, the government must pay attention because until now, poverty
has become one of Indonesia's main problems. Ending poverty everywhere and in all its
forms is goal 01 of the Sustainable Development Goals (SDGs) program. One of the efforts
that can be done is by planning as part of the implementation of the target, namely …
Abstract
The economy is a benchmark to determine the extent of the development of a country. Indonesia, which is now a developing country, is ranked 5th as the poorest country in Southeast Asia. Of course, the government must pay attention because until now, poverty has become one of Indonesia's main problems. Ending poverty everywhere and in all its forms is goal 01 of the Sustainable Development Goals (SDGs) program. One of the efforts that can be done is by planning as part of the implementation of the target, namely eliminating poverty and appropriate social protection for all levels of society so that the SDGs are achieved. Therefore, it is important to do a spatial analysis by making a model of poverty estimation in Indonesia and grouping to identify areas in Indonesia that have the highest poverty mission. The clustering method used in this grouping is Self Organizing Map (SOM). In this study, Spatial Autoregressive (SAR) analysis was used to create a predictive model. This is because poverty is very likely to have a spatial influence or be influenced by location to other areas in the vicinity. The results of the SAR model that can be formed are. Furthermore, the region with the highest mission is grouped using the Self Organizing Map (SOM) clustering based on variables that significantly affect the amount of poverty in Indonesia. From the results of the analysis obtained four clusters, each of which has its characteristics to classify 34 provinces in Indonesia. The clusters formed include cluster 1 consisting of 17 provinces, cluster 2 consisting of 9 provinces, cluster 3 consisting of 1 province, and cluster 4 consisting of 7 provinces.
journal.uii.ac.id
以上显示的是最相近的搜索结果。 查看全部搜索结果