Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology

The state of the art in signal extraction gradually evolved from the use of a mechanical form of moving average filters to the present sophisticated model-based techniques capable of performing automatic modeling and signal extraction involving hundreds or even thousands of time series in one produc...

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Main Author: Rufino, Cesar C.
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Published: Animo Repository 2012
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/3581
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-45832024-05-03T04:57:33Z Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology Rufino, Cesar C. The state of the art in signal extraction gradually evolved from the use of a mechanical form of moving average filters to the present sophisticated model-based techniques capable of performing automatic modeling and signal extraction involving hundreds or even thousands of time series in one production run. The leading edge of technology is being shared by two ARIMA model-based systems: ARIMA X12 of the US Bureau of Census and the twin programs TRAMO-SEATS developed at the Bank of Spain. These specialized expert systems have been adopted by most statistical agencies of advanced OECD countries and the European community. The Philippines on the other hand is using the ARIMA X11 system modified by the Bank of Canada in its routine seasonal adjustment and time series decomposition tasks. This study is an attempt to implement the ARIMA model-based (AMB) approach of extracting unobserved signals from 194 quarterly national accounts statistics of the Philippines using the TRAMO-SEATS system in a fully automatic modeling mode. The successful result of the application adequately demonstrates the feasibility of adopting a system being used routinely by countries in more advanced economies. © 2012 De La Salle University, Philippines. 2012-12-01T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/3581 Faculty Research Work Animo Repository Autoregression (Statistics) Inflation (Finance)--Philippines Economics
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Autoregression (Statistics)
Inflation (Finance)--Philippines
Economics
spellingShingle Autoregression (Statistics)
Inflation (Finance)--Philippines
Economics
Rufino, Cesar C.
Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology
description The state of the art in signal extraction gradually evolved from the use of a mechanical form of moving average filters to the present sophisticated model-based techniques capable of performing automatic modeling and signal extraction involving hundreds or even thousands of time series in one production run. The leading edge of technology is being shared by two ARIMA model-based systems: ARIMA X12 of the US Bureau of Census and the twin programs TRAMO-SEATS developed at the Bank of Spain. These specialized expert systems have been adopted by most statistical agencies of advanced OECD countries and the European community. The Philippines on the other hand is using the ARIMA X11 system modified by the Bank of Canada in its routine seasonal adjustment and time series decomposition tasks. This study is an attempt to implement the ARIMA model-based (AMB) approach of extracting unobserved signals from 194 quarterly national accounts statistics of the Philippines using the TRAMO-SEATS system in a fully automatic modeling mode. The successful result of the application adequately demonstrates the feasibility of adopting a system being used routinely by countries in more advanced economies. © 2012 De La Salle University, Philippines.
format text
author Rufino, Cesar C.
author_facet Rufino, Cesar C.
author_sort Rufino, Cesar C.
title Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology
title_short Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology
title_full Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology
title_fullStr Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology
title_full_unstemmed Signal extraction from the Philippine national accounts statistics using ARIMA model-based methodology
title_sort signal extraction from the philippine national accounts statistics using arima model-based methodology
publisher Animo Repository
publishDate 2012
url https://animorepository.dlsu.edu.ph/faculty_research/3581
_version_ 1800918813847322624