Applied Quantitative Methods for Trading and Investment 2003
DOI: 10.1002/0470013265.ch8
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Stochastic Volatility Models: A Survey with Applications to Option Pricing and Value at Risk

Abstract: This chapter presents an introduction to the current literature on stochastic volatility models. For these models the volatility depends on some unobserved components or a latent structure.Given the time-varying volatility exhibited by most financial data, in the last two decades there has been a growing interest in time series models of changing variance and the literature on stochastic volatility models has expanded greatly. Clearly, this chapter cannot be exhaustive, however we discuss some of the most impo… Show more

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Cited by 10 publications
(7 citation statements)
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References 109 publications
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“…Z t and u t are error terms for the asset return and log-normal volatility, respectively. Prior researches had argued that SVM models provide a better description of volatility than GARCH models, because the former imitate the volatility behaviours observed in financial markets (Andersen and Sørensen, 1996;Billio and Sartore, 2003). Many financial assets present clustering, time-varying, diffusion and jumping behaviours or they are generated with a noise term that depends on current returns.…”
Section: Volatility Modellingmentioning
confidence: 99%
“…Z t and u t are error terms for the asset return and log-normal volatility, respectively. Prior researches had argued that SVM models provide a better description of volatility than GARCH models, because the former imitate the volatility behaviours observed in financial markets (Andersen and Sørensen, 1996;Billio and Sartore, 2003). Many financial assets present clustering, time-varying, diffusion and jumping behaviours or they are generated with a noise term that depends on current returns.…”
Section: Volatility Modellingmentioning
confidence: 99%
“…En este sentido, emplear modelos más fl exibles y generales, que permiten recoger efectos asimétricos del precio sobre la volatilidad como son los FIEGARCH, FIAPARCH, SV (volatilidad estocástica) y otros similares, tal y como hace entre otros, Billio y Sartore (2003), Eberlein et al (2003), Sadorsky (2005), Chan et al (2007) y Bali y Theodossiou (2007), limitaría las posibles soluciones al problema de scaling tal y como se analiza más adelante.…”
Section: Modelo Aplicado a Los Rendimientos Del Mercadounclassified
“…By adopting this approach we are using the Kalman filter and its likelihood function as an optimisation method to obtain estimates for both the state variable h(t) and the state-space model parameters. Even though ξ(t) is non-Gaussian, this procedure will provide the best linear unbiased estimator of h(t) given r (t) [8,23]. We note that this approach for estimating volatility does have several limitations.…”
Section: Estimating Volatilitymentioning
confidence: 99%