2010
DOI: 10.1108/20400701011073482
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Modelling the time‐varying volatility of equities returns in Kenya

Abstract: PurposeThe paper seeks to investigate the relationship between stock volatility and returns in the Nairobi Stock Exchange, Kenya. It uses daily returns data over the period January 2006 to April 2009.Design/methodology/approachEmpirical analysis is based on quantitative analysis with emphasis on descriptive statistics, and advanced econometrics models which are well suited to capture the time‐varying volatility. The models utilised in this study fall into the family of generalised autoregressive conditional he… Show more

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Cited by 13 publications
(11 citation statements)
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“…If γ = 0 then it shows no asymmetry and the model transforms to the standard GARCH model. If γ > 0 and is significant, it reflects the presence of a leverage effect[26] (Nyamongo and Misati, 2010). The coefficient β 1 reflects a clustering effect in volatility, and a persistence in volatility regarding the shock is reflected by α 1 + β 1 + γ /2 (Kalu and Friday, 2012)[27].…”
Section: Models For Measuring Volatilitymentioning
confidence: 99%
“…If γ = 0 then it shows no asymmetry and the model transforms to the standard GARCH model. If γ > 0 and is significant, it reflects the presence of a leverage effect[26] (Nyamongo and Misati, 2010). The coefficient β 1 reflects a clustering effect in volatility, and a persistence in volatility regarding the shock is reflected by α 1 + β 1 + γ /2 (Kalu and Friday, 2012)[27].…”
Section: Models For Measuring Volatilitymentioning
confidence: 99%
“…To test the calendar anomalies on share returns and volatility for the Islamic months, GARCH model is used to find the presence of volatility on the KSE-100 index Nyamongo & Misati, 2010;Halari et al, 2015). Daily data of KSE-100 Index is used from November 2 nd 1991 to June 19 th 2014 i.e., 24…”
Section: Methodsmentioning
confidence: 99%
“…Single regime GARCH models are the principal tools of choice for volatility modeling in the frontier markets in sub-Saharan Africa. Some recent papers are Carsamer (2016), Uyaebo, Atoi and Usman (2015), Chinzara and Slyper (2013), Esman Nyamongo and Misati (2010), Adjasi (2009), among others.…”
Section: Introductionmentioning
confidence: 99%