首页> 外文期刊>Journal of Mathematics and Statistics >MAPPING OF ILLITERACY AND INFORMATION AND COMMUNICATION TECHNOLOGY INDICATORS USING GEOGRAPHICALLY WEIGHTED REGRESSION | Science Publications
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MAPPING OF ILLITERACY AND INFORMATION AND COMMUNICATION TECHNOLOGY INDICATORS USING GEOGRAPHICALLY WEIGHTED REGRESSION | Science Publications

机译:地理加权回归映射文盲与信息通信技术指标科学出版物

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> Geographically Weighted Regression (GWR) is a technique that brings the framework of a simple regression model into a weighted regression model. Each parameter in this model is calculated at each point geographical location. The significantly parameter can be used for mapping. In this research GWR model use for mapping Information and Communication Technology (ICT) indicators which influence on illiteracy. This problem was solved by estimation GWR model. The process was developing optimum bandwidth, weighted by kernel bisquare and parameter estimation. Mapping of ICT indicators was done by P-value. This research use data 29 regencies and 9 cities in East Java Province, Indonesia. GWR model compute the variables that significantly affect on illiteracy (? = 5%) in some locations, such as percent households members with a mobile phone (x2), percent of household members who have computer (x3) and the percent of households who access the internet at school in the last month (x4). Ownership of mobile phone was significant (? = 5%) at 20 locations. Ownership of computer and internet access were significant at 3 locations. Coefficient determination at all locations has R2 between 73.05-92.75%. The factors which affecting illiteracy in each location was very diverse. Mapping by P-value or critical area shows that ownership of mobile phone significantly affected at southern part of East Java. Then, the ownership of computer and internet access were significantly affected on illiteracy at northern area. All the coefficient regression in these locations was negative. It performs that if the number of mobile phone ownership, computer ownership and internet access were high then illiteracy will be decrease.
机译: >地理加权回归(GWR)是一种将简单回归模型的框架引入加权回归模型的技术。该模型中的每个参数都是在每个点的地理位置上计算的。有效参数可用于映射。在本研究中,GWR模型用于映射影响文盲的信息和通信技术(ICT)指标。通过估计GWR模型解决了该问题。该过程正在开发最佳带宽,并通过内核双平方和参数估计进行加权。 ICT指标的映射是通过P值完成的。这项研究使用了印度尼西亚东爪哇省的29个地区和9个城市的数据。 GWR模型计算出对某些地区的文盲率有显着影响的变量(?= 5%),例如拥有手机的家庭成员百分比(x 2 ),拥有计算机的家庭成员百分比(x 3 )和最近一个月在学校访问互联网的家庭百分比(x 4 )。在20个地点中,手机的拥有率很高(?= 5%)。 3个地点的计算机和互联网访问权都很重要。在所有位置确定系数的R 2 在73.05-92.75%之间。影响每个地区文盲的因素非常不同。通过P值或关键区域进行映射显示,在东爪哇省的南部,手机的所有权受到重大影响。然后,北部地区的文盲率显着影响了计算机和互联网访问权。这些位置的所有系数回归均为负。它得出的结论是,如果手机拥有量,计算机拥有量和互联网访问数量很高,那么文盲率将会降低。

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