South Africa and United States stock prices and the Rand/Dollar exchange rate

This paper seeks to examine the dynamic causal relations between the two major financial assets, stock prices of the US and South Africa and the rand/US$ exchange rate. The study uses a mixed bag of time series approaches such as cointegration, Granger causality, impulse response functions and forec...

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Main Author: Matthew Ocran
Format: Article
Language:English
Published: AOSIS 2010-09-01
Series:South African Journal of Economic and Management Sciences
Online Access:https://sajems.org/index.php/sajems/article/view/106
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spelling doaj-201fe2a3db234da68c1f387c78f583e42020-11-24T20:50:14ZengAOSISSouth African Journal of Economic and Management Sciences1015-88122222-34362010-09-0113336237510.4102/sajems.v13i3.10611South Africa and United States stock prices and the Rand/Dollar exchange rateMatthew Ocran0Nelson Mandela Metropolitan UniversityThis paper seeks to examine the dynamic causal relations between the two major financial assets, stock prices of the US and South Africa and the rand/US$ exchange rate. The study uses a mixed bag of time series approaches such as cointegration, Granger causality, impulse response functions and forecasting error variance decompositions.  The paper identifies a bi-directional causality from the Standard & Poor’s 500 stock price index to the rand/US$ exchange rate in the Granger sense. It was also found that the Standard & Poor’s stock price index accounts for a significant portion of the variations in the Johannesburg Stock Exchange’s All Share index. Thus, while causality in the Granger sense could not be established for the relationship between the price indices of the two stock exchanges it can argued that there is some relationship between them. The results of the study have implications for both business and Government.https://sajems.org/index.php/sajems/article/view/106
collection DOAJ
language English
format Article
sources DOAJ
author Matthew Ocran
spellingShingle Matthew Ocran
South Africa and United States stock prices and the Rand/Dollar exchange rate
South African Journal of Economic and Management Sciences
author_facet Matthew Ocran
author_sort Matthew Ocran
title South Africa and United States stock prices and the Rand/Dollar exchange rate
title_short South Africa and United States stock prices and the Rand/Dollar exchange rate
title_full South Africa and United States stock prices and the Rand/Dollar exchange rate
title_fullStr South Africa and United States stock prices and the Rand/Dollar exchange rate
title_full_unstemmed South Africa and United States stock prices and the Rand/Dollar exchange rate
title_sort south africa and united states stock prices and the rand/dollar exchange rate
publisher AOSIS
series South African Journal of Economic and Management Sciences
issn 1015-8812
2222-3436
publishDate 2010-09-01
description This paper seeks to examine the dynamic causal relations between the two major financial assets, stock prices of the US and South Africa and the rand/US$ exchange rate. The study uses a mixed bag of time series approaches such as cointegration, Granger causality, impulse response functions and forecasting error variance decompositions.  The paper identifies a bi-directional causality from the Standard & Poor’s 500 stock price index to the rand/US$ exchange rate in the Granger sense. It was also found that the Standard & Poor’s stock price index accounts for a significant portion of the variations in the Johannesburg Stock Exchange’s All Share index. Thus, while causality in the Granger sense could not be established for the relationship between the price indices of the two stock exchanges it can argued that there is some relationship between them. The results of the study have implications for both business and Government.
url https://sajems.org/index.php/sajems/article/view/106
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