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Return shows the dynamic property that allow the behaviour change from one state <br /> <br /> <br /> to another state or called regime-switching phenomenon. Threshold stochastic <br /> <br /> <br /> model is developed to accommodate this phenomenon. Threshold...
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id-itb.:230032017-09-27T11:43:15Z#TITLE_ALTERNATIVE# DITA AGISTIA ( NIM: 10113043), MAULIA Indonesia Final Project INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/23003 Return shows the dynamic property that allow the behaviour change from one state <br /> <br /> <br /> to another state or called regime-switching phenomenon. Threshold stochastic <br /> <br /> <br /> model is developed to accommodate this phenomenon. Threshold is used as <br /> <br /> <br /> delimiter between regimes. In other words, for different regime, it is allowed to <br /> <br /> <br /> have another different time series model. In this final project, used variant of AR <br /> <br /> <br /> model and GARCH model with a threshold value, TAR(p) and TGARCH(1,1). <br /> <br /> <br /> In constructing both models, parameter estimation is required. The estimation <br /> <br /> <br /> methods are least square method for TAR(p) and maximum likelihood method for <br /> <br /> <br /> TGARCH(1,1). <br /> <br /> <br /> TAR separates the return into several regimes and used for return prediction. <br /> <br /> <br /> Different from TAR, regimes on TGARCH are separated based on the volatility. <br /> <br /> <br /> Volatility is an important aspect of the study of return, so that, besides having a <br /> <br /> <br /> good return prediction accuracy, a model also needs to have an ability to accommodate <br /> <br /> <br /> volatility aspect. In this final project, GARCH(1,1) and TGARCH(1,1) <br /> <br /> <br /> volatility models are used to predict the volatility. Using three stock indices, <br /> <br /> <br /> TGARCH(1,1) model gives more accurate volatility prediction than GARCH(1,1) <br /> <br /> <br /> model. It indicates that a threshold in TGARCH(1,1) model can improve the <br /> <br /> <br /> accuracy of the volatility prediction result. text |
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Return shows the dynamic property that allow the behaviour change from one state <br />
<br />
<br />
to another state or called regime-switching phenomenon. Threshold stochastic <br />
<br />
<br />
model is developed to accommodate this phenomenon. Threshold is used as <br />
<br />
<br />
delimiter between regimes. In other words, for different regime, it is allowed to <br />
<br />
<br />
have another different time series model. In this final project, used variant of AR <br />
<br />
<br />
model and GARCH model with a threshold value, TAR(p) and TGARCH(1,1). <br />
<br />
<br />
In constructing both models, parameter estimation is required. The estimation <br />
<br />
<br />
methods are least square method for TAR(p) and maximum likelihood method for <br />
<br />
<br />
TGARCH(1,1). <br />
<br />
<br />
TAR separates the return into several regimes and used for return prediction. <br />
<br />
<br />
Different from TAR, regimes on TGARCH are separated based on the volatility. <br />
<br />
<br />
Volatility is an important aspect of the study of return, so that, besides having a <br />
<br />
<br />
good return prediction accuracy, a model also needs to have an ability to accommodate <br />
<br />
<br />
volatility aspect. In this final project, GARCH(1,1) and TGARCH(1,1) <br />
<br />
<br />
volatility models are used to predict the volatility. Using three stock indices, <br />
<br />
<br />
TGARCH(1,1) model gives more accurate volatility prediction than GARCH(1,1) <br />
<br />
<br />
model. It indicates that a threshold in TGARCH(1,1) model can improve the <br />
<br />
<br />
accuracy of the volatility prediction result. |
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DITA AGISTIA ( NIM: 10113043), MAULIA |
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DITA AGISTIA ( NIM: 10113043), MAULIA #TITLE_ALTERNATIVE# |
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DITA AGISTIA ( NIM: 10113043), MAULIA |
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DITA AGISTIA ( NIM: 10113043), MAULIA |
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https://digilib.itb.ac.id/gdl/view/23003 |
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1821120943485878272 |