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Chaos Process Testing (Time-Series in The Frequency Domain) in Predicting Stock Returns in Tehran Stock Eechange

نویسنده:
ابوالفضل قدیری مقدم
,
مهدی جباری نوقابی
,
M. M. Rounaghi
,
M. H. Hafezi
,
M. Ayyoubi
,
A. Danaei
,
M. Gholami
,
Abolfazl Ghadiri Moghadam
,
Mehdi Jabbari Nooghabi
سال
: 2014
چکیده: Nowadays, the benefits of predicting are undeniably accepted in decision and policy making from different dimensions. Recently, structural models which were relatively successful in explaining the current situation have not been paid much attention in the field of forecasting. Most statistical observations have applied the tests which brought about wrong findings, and made them draw this conclusion that the obtained data from chaos-basis tests are random. However, these data are derived from systematic regulations which are accompanies with trivial disorders. Therefore, some other tests such as time-series tests in the frequency domain have been proposed. This test was utilized to assess the existence of chaotic processes in daily time-series on Tehran Stock Exchange over a period from 2007 to 2013. The achieved findings clearly demonstrate such processes during the process of this indicator.
یو آر آی: https://libsearch.um.ac.ir:443/fum/handle/fum/3350011
کلیدواژه(گان): Chaos Analysis,Stock Exchange,Time-series in Frequency Domain,Stock Return,Predicting
کالکشن :
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    Chaos Process Testing (Time-Series in The Frequency Domain) in Predicting Stock Returns in Tehran Stock Eechange

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contributor authorابوالفضل قدیری مقدمen
contributor authorمهدی جباری نوقابیen
contributor authorM. M. Rounaghien
contributor authorM. H. Hafezien
contributor authorM. Ayyoubien
contributor authorA. Danaeien
contributor authorM. Gholamien
contributor authorAbolfazl Ghadiri Moghadamfa
contributor authorMehdi Jabbari Nooghabifa
date accessioned2020-06-06T13:19:12Z
date available2020-06-06T13:19:12Z
date issued2014
identifier urihttps://libsearch.um.ac.ir:443/fum/handle/fum/3350011
description abstractNowadays, the benefits of predicting are undeniably accepted in decision and policy making from different dimensions. Recently, structural models which were relatively successful in explaining the current situation have not been paid much attention in the field of forecasting. Most statistical observations have applied the tests which brought about wrong findings, and made them draw this conclusion that the obtained data from chaos-basis tests are random. However, these data are derived from systematic regulations which are accompanies with trivial disorders. Therefore, some other tests such as time-series tests in the frequency domain have been proposed. This test was utilized to assess the existence of chaotic processes in daily time-series on Tehran Stock Exchange over a period from 2007 to 2013. The achieved findings clearly demonstrate such processes during the process of this indicator.en
languageEnglish
titleChaos Process Testing (Time-Series in The Frequency Domain) in Predicting Stock Returns in Tehran Stock Eechangeen
typeJournal Paper
contenttypeExternal Fulltext
subject keywordsChaos Analysisen
subject keywordsStock Exchangeen
subject keywordsTime-series in Frequency Domainen
subject keywordsStock Returnen
subject keywordsPredictingen
journal titleIndian Journal of Scientific Researchfa
pages202-210
journal volume4
journal issue6
identifier linkhttps://profdoc.um.ac.ir/paper-abstract-1042020.html
identifier articleid1042020
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