REGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD

Spatial regression is a regression that takes into account spatial factors in the model. Ordinary regression cannot be done on data in the presence of spatial influences due to regression’s asumption of independence error which is violated. Spatial regression can be done on data lattice so it can be...

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Main Author: Mulyarahardja Madjiah, Andreas
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/39137
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:39137
spelling id-itb.:391372019-06-24T10:21:38ZREGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD Mulyarahardja Madjiah, Andreas Indonesia Final Project percentage of poverty, fisheries, regression spatial, SAR, CAR, Moran’s I, spatial factors, MLE INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/39137 Spatial regression is a regression that takes into account spatial factors in the model. Ordinary regression cannot be done on data in the presence of spatial influences due to regression’s asumption of independence error which is violated. Spatial regression can be done on data lattice so it can be applied to see the relationship of fisheries to the percentage of poverty. Poverty itself is a serious problem that occurs in every country in the world. Poverty means someone's inability to fulfill their needs. One of the factors that influenced proverty is the quality of the workforce and inefficient use of human resources. Indonesia’s geographical location as one of the largest maritime countries that has a vast and rich sea makes it easy for the Indonesian population to make a living in the fisheries sector. Based on this, the influence of fisheries want to be seen in the percentage of proverty in Indonesia, especially the Java islands. The spatial regression model used is Simultaneous Autoregressive (SAR) and Conditional Autoregressive (CAR). Maximum Likelihood Estimation (MLE) is used to estimate the parameters in this model. The Moran’s I test was used to test for spatial factors in the response variable. The results obtained show that there is spatial factors in data with significant Moran’s I test result. The spatial regression model is better than ordinary regression with some fisheries having a significant influence on the percentage of proverty. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Spatial regression is a regression that takes into account spatial factors in the model. Ordinary regression cannot be done on data in the presence of spatial influences due to regression’s asumption of independence error which is violated. Spatial regression can be done on data lattice so it can be applied to see the relationship of fisheries to the percentage of poverty. Poverty itself is a serious problem that occurs in every country in the world. Poverty means someone's inability to fulfill their needs. One of the factors that influenced proverty is the quality of the workforce and inefficient use of human resources. Indonesia’s geographical location as one of the largest maritime countries that has a vast and rich sea makes it easy for the Indonesian population to make a living in the fisheries sector. Based on this, the influence of fisheries want to be seen in the percentage of proverty in Indonesia, especially the Java islands. The spatial regression model used is Simultaneous Autoregressive (SAR) and Conditional Autoregressive (CAR). Maximum Likelihood Estimation (MLE) is used to estimate the parameters in this model. The Moran’s I test was used to test for spatial factors in the response variable. The results obtained show that there is spatial factors in data with significant Moran’s I test result. The spatial regression model is better than ordinary regression with some fisheries having a significant influence on the percentage of proverty.
format Final Project
author Mulyarahardja Madjiah, Andreas
spellingShingle Mulyarahardja Madjiah, Andreas
REGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD
author_facet Mulyarahardja Madjiah, Andreas
author_sort Mulyarahardja Madjiah, Andreas
title REGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD
title_short REGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD
title_full REGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD
title_fullStr REGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD
title_full_unstemmed REGRESSION ANALYSIS SPATIAL USING SIMULTANEOUS AUTOREGRESSION AND CONDITIONAL AUTOREGRESSION METHOD
title_sort regression analysis spatial using simultaneous autoregression and conditional autoregression method
url https://digilib.itb.ac.id/gdl/view/39137
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