Stock market price forecasting using the Arima Model: an application to Istanbul, Turkiye
Because of its critical position in open economies and its extremely high volatility, the stock market price index has been a popular subject of market research. In modern financial markets, traders and practitioners have had trouble predicting the stock market price index. In order to solve this pr...
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Published in | İktisat politikasi araştırmaları dergisi Vol. 9; no. 2; pp. 439 - 454 |
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Main Author | |
Format | Journal Article |
Language | English |
Published |
İstanbul Üniversitesi Yayınları
01.07.2022
Istanbul University Press |
Subjects | |
Online Access | Get full text |
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Summary: | Because of its critical position in open economies and its extremely high
volatility, the stock market price index has been a popular subject of
market research. In modern financial markets, traders and practitioners
have had trouble predicting the stock market price index. In order to
solve this problem, some methods have been researched by researchers
and suitable methods have been found. To analyze and forecast monthly
stock market price index, a variety of statistical and econometric models
are extensively used. Thus, this study aims to investigate the application
of autoregressive integrated moving averages (ARIMA) for forecasting
monthly stock market price index in Istanbul for the period from 2009-
M01 to 2021-M03. As compared to all other tentative models, the
research showed that the ARIMA (3,1,5) model is the best fit model for
predicting the stock market price index. Forecasting is conducted by
using the developed model ARIMA (3,1,5) and the results indicated that
the forecasted values are very similar to the actual ones, reducing forecast
errors. In general, the stock market price index in Istanbul; showed a
downwards trend over the forecasted period. The results of the study
can set an example for researchers and practitioners working in the stock
market and can be a guide for economic decision units and investors in
the stock market. |
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ISSN: | 2148-3876 2148-3876 |
DOI: | 10.26650/JEPR1056771 |