UNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX)

The Time Series Modeling is used to analyze data by taking into account of the effects of the data in the previous periods. Time Series Modeling can be used for both the univariate and multivariate time series models. The Autoregressive Moving-Average (ARMA) Model is a predictive analysis model o...

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Main Author: Widyanti, Devina
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/47689
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:47689
spelling id-itb.:476892020-06-17T10:02:33ZUNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX) Widyanti, Devina Indonesia Final Project time series regression, VARMA Model, Transfer Function Model, VARMAX Model. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/47689 The Time Series Modeling is used to analyze data by taking into account of the effects of the data in the previous periods. Time Series Modeling can be used for both the univariate and multivariate time series models. The Autoregressive Moving-Average (ARMA) Model is a predictive analysis model of univariate time series data. The ARMA Model only takes into account the endogenous variables in the previous periods without considering the dependency of other variables. The Univariate ARMA Model that is generalized to handle multivariate time series is called the Vector Autoregressive Moving-Average (VARMA) Model. In an event that there are several factors influencing the event, then it is necessary to predict by adding exogenous variables to the model. Time series modeling that involves exogenous variables is also called as time series regression modeling. In this Thesis, the Transfer Function Model is used to model univariate time series regression, while the Vector Autoregressive Moving-Average with Exogenous Regressors (VARMAX) is used to model multivariate time series regression. The VARMAX Model is the ARMAX Model or the Transfer Function Model for multivariate. In this Thesis, a case study of five different data is conducted to determine which data type is suitable for the two models. The case study result shows that both the Function Transfer Model and VARMAX Model can be used for data that have outliers or interventions and data that have patterns or trends. The VARMAX Model is not affected by the size of the data observation, while The Transfer Function Model seems to be more suitable for data with a large observation size. 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 Time Series Modeling is used to analyze data by taking into account of the effects of the data in the previous periods. Time Series Modeling can be used for both the univariate and multivariate time series models. The Autoregressive Moving-Average (ARMA) Model is a predictive analysis model of univariate time series data. The ARMA Model only takes into account the endogenous variables in the previous periods without considering the dependency of other variables. The Univariate ARMA Model that is generalized to handle multivariate time series is called the Vector Autoregressive Moving-Average (VARMA) Model. In an event that there are several factors influencing the event, then it is necessary to predict by adding exogenous variables to the model. Time series modeling that involves exogenous variables is also called as time series regression modeling. In this Thesis, the Transfer Function Model is used to model univariate time series regression, while the Vector Autoregressive Moving-Average with Exogenous Regressors (VARMAX) is used to model multivariate time series regression. The VARMAX Model is the ARMAX Model or the Transfer Function Model for multivariate. In this Thesis, a case study of five different data is conducted to determine which data type is suitable for the two models. The case study result shows that both the Function Transfer Model and VARMAX Model can be used for data that have outliers or interventions and data that have patterns or trends. The VARMAX Model is not affected by the size of the data observation, while The Transfer Function Model seems to be more suitable for data with a large observation size.
format Final Project
author Widyanti, Devina
spellingShingle Widyanti, Devina
UNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX)
author_facet Widyanti, Devina
author_sort Widyanti, Devina
title UNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX)
title_short UNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX)
title_full UNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX)
title_fullStr UNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX)
title_full_unstemmed UNIVARIATE AND MULTIVARIATE TIME SERIES REGRESSION USING TRANSFER FUNCTION MODEL AND VECTOR AUTOREGRESSIVE MOVING-AVERAGE WITH EXOGENOUS REGRESSORS (VARMAX)
title_sort univariate and multivariate time series regression using transfer function model and vector autoregressive moving-average with exogenous regressors (varmax)
url https://digilib.itb.ac.id/gdl/view/47689
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