利用GIS绘制巴厘岛的贫困发生率及其决定因素

N. Maharani
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摘要

在本报告中,分析了印度尼西亚巴厘岛的贫困发生率原因,并生成了贫困数据及其决定因素的可视化。使用回归斜率检验来确定所选择的作为潜在贫困决定因素的自变量是否与贫困发生率有统计学显著的关联,并在R软件中执行。使用R软件计算每个潜在贫困决定因素与贫困发生率的相关系数,以查看关联的方向(正或负)。QGIS软件用于将数据可视化成地图。这将使数据易于理解,并易于检测数据的模式或趋势。通过回归斜率检验发现,人的发展指数、平均上学时间、大学入学率、识字率、GRDP和酒店数量与贫困发生率在5%显著水平上显著相关。利用QGIS软件将地图数据(底图)与表格数据进行联接,生成各县/市贫困人口百分比专题地图及显著相关变量作为数据可视化。还分析了点和线等空间向量层与贫困发生率的关系。还提供了巴厘岛的卫星图像,从上面可以看到巴厘岛的总体概况。总之,减贫战略也可以通过关注显著相关的变量/因素而得到加强,与贫困有关的数据的可视化有助于容易地发现数据的模式或趋势。
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Mapping the Poverty Incidence in Bali and Its Determinants using GIS
In this report, poverty incidence causes in Bali, Indonesia is analyzed, and the visualization of the poverty data and its determinants are generated. Regression slope test is used to determine whether the chosen independent variables as potential poverty determinants has a statistically significant association with the poverty incidence in which is executed in R software. The correlation coefficient of each potential poverty determinant with the poverty incidence also calculated using R software to see the direction of the association (positive or negative). QGIS software is used to visualize the data into a map. This will enable the easy understanding of the data and to detect pattern or trends of the data easily. From the regression slope test, it is found that human development index, average duration of attending school, university enrolment ratio, literacy rate, GRDP and number of hotels have significant association with the poverty incidence at 5% significant level. The thematic maps of poor people percentage by regency/municipality and the significantly associated variables are generated as the visualization of data by using QGIS software in which the join between the map data (base map) and the tabular data is conducted. Spatial vector layers such as points and lines are also analyzed in relation with poverty incidence. The satellite image of Bali is also presented to see the general overview of Bali island from the above. In conclusion, poverty reduction strategies can be enhanced by also focusing on the significantly associated variables/factors and the visualization of poverty related data is useful to easily discover the pattern or trends of the data.
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