Empirical volatility changes in time and exhibits tails, which are heavier than normal. Moreover, empirical volatility has - sometimes quite substantial- upwards jumps and clusters on high levels. We investigate classical and non-classical stochastic volatility models with respect to their extreme behavior.
We show that classical stochastic volatility models driven by Brownian motion
can model heavy tails, but obviously they are not able to model volatility jumps. Such phenomena can be modelled by Lévy driven volatility processes
as, for instance, by Lévy driven Ornstein-Uhlenbeck models. They can capture
heavy tails and volatility jumps. Also volatility clusters can be found in such
models, provided the driving Lévy process has regularly varying tails. This
results then in a volatility model with similarly heavy tails. As the last class
of stochastic volatility models, we investigate a continuous time GARCH(1,1)
model. Driven by an arbitrary Lévy process it exhibits regularly varying tails,
volatility upwards jumps and clusters on high levels.
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Empirical volatility changes in time and exhibits tails, which are heavier than normal. Moreover, empirical volatility has - sometimes quite substantial- upwards jumps and clusters on high levels. We investigate classical and non-classical stochastic volatility models with respect to their extreme behavior.
We show that classical stochastic volatility models driven by Brownian motion
can model heavy tails, but obviously they are not able to model volatility jumps. Such phenomena can be modelle...
»