Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time
A new algorithm is developed to provide a simulated maximum likelihood estimation of the GARCH diffusion model of Nelson (1990) based on return data only. The method combines two accurate approximation procedures, namely, the polynomial expansion of Ait-Sahalia (2008) to approximate the transition p...
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sg-smu-ink.soe_research-22312019-04-21T01:31:57Z Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time KLEPPE, Tore Selland YU, Jun SKAUG, Hans J. A new algorithm is developed to provide a simulated maximum likelihood estimation of the GARCH diffusion model of Nelson (1990) based on return data only. The method combines two accurate approximation procedures, namely, the polynomial expansion of Ait-Sahalia (2008) to approximate the transition probability density of return and volatility, and the Efficient Importance Sampler (EIS) of Richard and Zhang (2007) to integrate out the volatility. The first and second order terms in the polynomial expansion are used to generate a base-line importance density for an EIS algorithm. The higher order terms are included when evaluating the importance weights. Monte Carlo experiments show that the new method works well and the discretization error is well controlled by the polynomial expansion. In the empirical application, we fit the GARCH diffusion to equity data, perform diagnostics on the model fit, and test the finiteness of the importance weights. 2010-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/1232 https://ink.library.smu.edu.sg/context/soe_research/article/2231/viewcontent/sml_garchdiffusion01.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Efficient importance sampling GARC diffusion model Simulated Maximum likelihood Stochastic volatility Econometrics Finance |
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Efficient importance sampling GARC diffusion model Simulated Maximum likelihood Stochastic volatility Econometrics Finance KLEPPE, Tore Selland YU, Jun SKAUG, Hans J. Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time |
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A new algorithm is developed to provide a simulated maximum likelihood estimation of the GARCH diffusion model of Nelson (1990) based on return data only. The method combines two accurate approximation procedures, namely, the polynomial expansion of Ait-Sahalia (2008) to approximate the transition probability density of return and volatility, and the Efficient Importance Sampler (EIS) of Richard and Zhang (2007) to integrate out the volatility. The first and second order terms in the polynomial expansion are used to generate a base-line importance density for an EIS algorithm. The higher order terms are included when evaluating the importance weights. Monte Carlo experiments show that the new method works well and the discretization error is well controlled by the polynomial expansion. In the empirical application, we fit the GARCH diffusion to equity data, perform diagnostics on the model fit, and test the finiteness of the importance weights. |
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text |
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KLEPPE, Tore Selland YU, Jun SKAUG, Hans J. |
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KLEPPE, Tore Selland YU, Jun SKAUG, Hans J. |
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KLEPPE, Tore Selland |
title |
Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time |
title_short |
Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time |
title_full |
Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time |
title_fullStr |
Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time |
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Estimating the GARCH Diffusion: Simulated Maximum Likelihood in Continuous Time |
title_sort |
estimating the garch diffusion: simulated maximum likelihood in continuous time |
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Institutional Knowledge at Singapore Management University |
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2010 |
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https://ink.library.smu.edu.sg/soe_research/1232 https://ink.library.smu.edu.sg/context/soe_research/article/2231/viewcontent/sml_garchdiffusion01.pdf |
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