Long Memory Analysis: An Empirical Investigation

This study is an attempt to review the theory and applications of autoregressive fractionally integrated moving average (ARFIMA) and fractionally integrated generalized autoregressive conditional heteroskedasticity (FIGARCH) models, mainly for the purpose of the description of the observed persisten...

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Main Authors: Rafik Nazarian, Esmaeil Naderi, Nadiya Gandali Alikhani, Ashkan Amiri
Format: Article
Language:English
Published: EconJournals 2014-03-01
Series:International Journal of Economics and Financial Issues
Subjects:
Online Access:https://dergipark.org.tr/tr/pub/ijefi/issue/31961/351975?publisher=http-www-cag-edu-tr-ilhan-ozturk
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spelling doaj-46084c3ea8894e3981960186a0160cd12020-11-25T00:27:13ZengEconJournalsInternational Journal of Economics and Financial Issues2146-41382014-03-014116261032Long Memory Analysis: An Empirical InvestigationRafik NazarianEsmaeil NaderiNadiya Gandali AlikhaniAshkan AmiriThis study is an attempt to review the theory and applications of autoregressive fractionally integrated moving average (ARFIMA) and fractionally integrated generalized autoregressive conditional heteroskedasticity (FIGARCH) models, mainly for the purpose of the description of the observed persistence in the mean and volatility of a time series. The long memory feature in FIGARCH models makes them a better candidate than other conditional heteroskedasticity models for modeling volatility in financial series. ARFIMA model also has a considerable capacity for modeling the return behavior of these time series. The daily data related to Tehran Stock Exchange (TSE) index was used for the purpose of this study. Considering the fact that the existence of conditional heteroskedasticity effects were confirmed in the stock return series, robust regression technique was used for estimation of different ARFIMA models. Furthermore, different GARCH-type models were also compared. The results of ARFIMA model are indicative of the absence of long memory in return series of the TSE index and the results from FIGARCH model show evidence of long memory in conditional variance of this series.https://dergipark.org.tr/tr/pub/ijefi/issue/31961/351975?publisher=http-www-cag-edu-tr-ilhan-ozturkstock market long memory arfima figarch.
collection DOAJ
language English
format Article
sources DOAJ
author Rafik Nazarian
Esmaeil Naderi
Nadiya Gandali Alikhani
Ashkan Amiri
spellingShingle Rafik Nazarian
Esmaeil Naderi
Nadiya Gandali Alikhani
Ashkan Amiri
Long Memory Analysis: An Empirical Investigation
International Journal of Economics and Financial Issues
stock market
long memory
arfima
figarch.
author_facet Rafik Nazarian
Esmaeil Naderi
Nadiya Gandali Alikhani
Ashkan Amiri
author_sort Rafik Nazarian
title Long Memory Analysis: An Empirical Investigation
title_short Long Memory Analysis: An Empirical Investigation
title_full Long Memory Analysis: An Empirical Investigation
title_fullStr Long Memory Analysis: An Empirical Investigation
title_full_unstemmed Long Memory Analysis: An Empirical Investigation
title_sort long memory analysis: an empirical investigation
publisher EconJournals
series International Journal of Economics and Financial Issues
issn 2146-4138
publishDate 2014-03-01
description This study is an attempt to review the theory and applications of autoregressive fractionally integrated moving average (ARFIMA) and fractionally integrated generalized autoregressive conditional heteroskedasticity (FIGARCH) models, mainly for the purpose of the description of the observed persistence in the mean and volatility of a time series. The long memory feature in FIGARCH models makes them a better candidate than other conditional heteroskedasticity models for modeling volatility in financial series. ARFIMA model also has a considerable capacity for modeling the return behavior of these time series. The daily data related to Tehran Stock Exchange (TSE) index was used for the purpose of this study. Considering the fact that the existence of conditional heteroskedasticity effects were confirmed in the stock return series, robust regression technique was used for estimation of different ARFIMA models. Furthermore, different GARCH-type models were also compared. The results of ARFIMA model are indicative of the absence of long memory in return series of the TSE index and the results from FIGARCH model show evidence of long memory in conditional variance of this series.
topic stock market
long memory
arfima
figarch.
url https://dergipark.org.tr/tr/pub/ijefi/issue/31961/351975?publisher=http-www-cag-edu-tr-ilhan-ozturk
work_keys_str_mv AT rafiknazarian longmemoryanalysisanempiricalinvestigation
AT esmaeilnaderi longmemoryanalysisanempiricalinvestigation
AT nadiyagandalialikhani longmemoryanalysisanempiricalinvestigation
AT ashkanamiri longmemoryanalysisanempiricalinvestigation
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