COMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD

The GSTAR model or commonly known as generalized space-time autoregressive is a space-time model that not only calculates in terms of observation time, but also calculates in terms of the influence between locations. The influence between locations is identified by the spatial weight matrix variable...

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Main Author: Raeva Maulana, Fauzan
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/57736
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:57736
spelling id-itb.:577362021-08-26T09:15:48ZCOMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD Raeva Maulana, Fauzan Indonesia Final Project correlation, COVID-19, disaggregation method, GSTAR, weight matrix INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/57736 The GSTAR model or commonly known as generalized space-time autoregressive is a space-time model that not only calculates in terms of observation time, but also calculates in terms of the influence between locations. The influence between locations is identified by the spatial weight matrix variable. Each spatial effect is compared with each other in order to obtain the best GSTAR model that describes the data at the location under review. The GSTAR model is disaggregated by using the disaggregation method. The disaggregation method is used to predict data at lower levels. In this final project, the increase in COVID-19 cases in each sub-district in the East Jakarta Administrative City is modeled with an observation time from September 2, 2020 to January 28, 2021 to obtain results from additional cases of COVID-19 at the urban villages level. The GSTAR model uses three kinds of weight matrices, namely uniform, Euclidean distance, and normalized cross-correlation. The GSTAR model uses GSTAR(1;1) which means time order 1 and spatial order 1. Each GSTAR model is disaggregated by selecting a dummy variable that is positively correlated with COVID-19 case data. The results of the GSTAR model with the disaggregation method are compared with the actual data. As a result, by analyzing MAE, MSE, and MAPE, it is found that the GSTAR(1;1) model for each weight matrix is not much different. This is due to the very random movement of population between residents in East Jakarta. 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 The GSTAR model or commonly known as generalized space-time autoregressive is a space-time model that not only calculates in terms of observation time, but also calculates in terms of the influence between locations. The influence between locations is identified by the spatial weight matrix variable. Each spatial effect is compared with each other in order to obtain the best GSTAR model that describes the data at the location under review. The GSTAR model is disaggregated by using the disaggregation method. The disaggregation method is used to predict data at lower levels. In this final project, the increase in COVID-19 cases in each sub-district in the East Jakarta Administrative City is modeled with an observation time from September 2, 2020 to January 28, 2021 to obtain results from additional cases of COVID-19 at the urban villages level. The GSTAR model uses three kinds of weight matrices, namely uniform, Euclidean distance, and normalized cross-correlation. The GSTAR model uses GSTAR(1;1) which means time order 1 and spatial order 1. Each GSTAR model is disaggregated by selecting a dummy variable that is positively correlated with COVID-19 case data. The results of the GSTAR model with the disaggregation method are compared with the actual data. As a result, by analyzing MAE, MSE, and MAPE, it is found that the GSTAR(1;1) model for each weight matrix is not much different. This is due to the very random movement of population between residents in East Jakarta.
format Final Project
author Raeva Maulana, Fauzan
spellingShingle Raeva Maulana, Fauzan
COMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD
author_facet Raeva Maulana, Fauzan
author_sort Raeva Maulana, Fauzan
title COMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD
title_short COMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD
title_full COMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD
title_fullStr COMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD
title_full_unstemmed COMPARATIVE ANALYSIS OF THE GOODNESS OF GSTAR IN SPATIAL DEPENDENCY WITH DISAGGREGATION METHOD
title_sort comparative analysis of the goodness of gstar in spatial dependency with disaggregation method
url https://digilib.itb.ac.id/gdl/view/57736
_version_ 1822002746161627136