Ordinal stochastic volatility (OSV) models were recently developed and fitted by M¨uller
and Czado (2008) to account for the discreteness of financial price changes, while allowing
for stochastic volatility (SV). The model allows for exogenous factors both on the mean and
volatility level. A Bayesian approach using Markov Chain Monte Carlo (MCMC) is followed
to facilitate estimation in these parameter driven models. In this paper the applicability of
the OSV model to financial stocks with different levels of trading activity is investigated and
the influence of time between trades, volume, day time and the number of quotes between
trades is determined. In a second focus we compare the performance of OSV models to SV
models by developing model selection criteria. This analysis shows that the discreteness of
price changes should not be ignored.
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Ordinal stochastic volatility (OSV) models were recently developed and fitted by M¨uller
and Czado (2008) to account for the discreteness of financial price changes, while allowing
for stochastic volatility (SV). The model allows for exogenous factors both on the mean and
volatility level. A Bayesian approach using Markov Chain Monte Carlo (MCMC) is followed
to facilitate estimation in these parameter driven models. In this paper the applicability of
the OSV model to financial stocks with d...
»