12 research outputs found
Simple approximations for option pricing under mean reversion and stochastic volatility
This paper provides simple approximations for evaluating option prices and implied volatilities under stochastic volatility. Simple recursive formulae are derived that can easily be implemented in spreadsheets. The traditional random walk assumption, dominating in the analysis of financial markets, is compared with mean reversion which is often more relevant in commodity markets. Deterministic components in the mean and volatility are taken into consideration to allow for seasonality, another frequent aspect of commodity markets. The stochastic volatility is suitably modelled by GARCH. An application to electricity options shows that the choice between a random walk and a mean reversion model can have strong effects for predictions of implied volatilities even if the two models are statistically close to each other
Testing for vector autoregressive dynamics under heteroskedasticity
In this paper we introduce a bootstrap procedure to test parameter
restrictions in vector autoregressive models which is robust in
cases of conditionally heteroskedastic error terms. The adopted
wild bootstrap method does not require any parametric
specification of the volatility process and takes contemporaneous
error correlation implicitly into account. Via a Monte Carlo
investigation empirical size and power properties of the new
method are illustrated. We compare the bootstrap approach with
standard procedures either ignoring heteroskedasticity or adopting
a heteroskedasticity consistent estimation of the relevant
covariance matrices in the spirit of the White correction. In
terms of empirical size the proposed method clearly outperforms
competing approaches without paying any price in terms of size
adjusted power. We apply the alternative tests to investigate the
potential of causal relationships linking daily prices of natural
gas and crude oil. Unlike standard inference ignoring time varying
error variances, heteroskedasticity consistent test procedures do
not deliver any evidence in favor of short run causality between
the two series
Semiparametric multivariate volatility models
Estimation of multivariate volatility models is usually carried out by quasi maximum likelihood (QMLE), for which consistency and asymptotic normality have been proven under quite general conditions. However, there may be a substantial efficiency loss of QMLE if the true innovation distribution is not multinormal. We suggest a nonparametric estimation of the multivariate innovation distribution, based on consistent parameter estimates obtained by QMLE. We show that under standard regularity conditions the semiparametric efficiency bound can be attained. Without reparametrizing the conditional covariance matrix (which depends on the particular model used), adaptive estimation is not possible. However, in some cases the efficiency loss of semiparametric estimation
with respect to full information maximum likelihood decreases as the dimension increases.
In practice, one would like to restrict the class of possible density functions to avoid the curse of dimensionality. One way of doing so is to impose the constraint that the density belongs to the class of spherical distributions, for which we also derive the semiparametric efficiency bound and an estimator that attains this bound. A simulation experiment demonstrates the efficiency gain of the proposed estimator compared with QMLE
Estimation of temporally aggregated multivariate GARCH models
This paper investigates the performance of quasi maximum likelihood (QML) and nonlinear least squares (NLS) estimation applied to temporally aggregated GARCH models.
Since these are known to be only weak GARCH, the conditional variance of the aggregated process is in general not known. Thus, one major condition that is often used in proving the consistency of QML, the correct specification of the first two moments, is absent. Indeed, our results suggest that QML is not consistent, with a
substantial bias if both the initial degree of persistence and the aggregation level are high. In other cases, QML might be taken as an approximation with only a small bias. Based on results for univariate GARCH models, NLS is likely to be consistent, although inefficient, for weak GARCH models. Our simulation study reveals that NLS does not reduce the bias of QML in considerably large samples. As the variation of NLS estimates is much higher than that of QML, one would clearly prefer QML in most practical situations. An empirical example illustrates some of the results
Testing for causality in variance using multivariate GARCH models
Tests of causality in variance in multiple time series
have been proposed recently, based on residuals of estimated
univariate models. Although such tests are applied frequently
little is known about their power properties. In this paper we
show that a convenient alternative to residual based testing is to
specify a multivariate volatility model, such as multivariate
GARCH (or BEKK), and construct a Wald test on noncausality in
variance. We compare both approaches to testing causality in
variance in terms of asymptotic and finite sample properties. The
Wald test is shown to have superior power properties under a
sequence of local alternatives. Furthermore, we show by simulation
that the Wald test is quite robust to misspecification of the
order of the BEKK model, but that empirical power decreases
substantially when asymmetries in volatility are ignored
Analytical quasi maximum likelihood inference in multivariate volatility models
Quasi maximum likelihood estimation and inference in multivariate volatility models remains a challenging computational task if, for example, the dimension is high. One of the reasons is that typically numerical procedures are used to compute the score and the Hessian, and often they are numerically unstable. We provide analytical formulae for the score and the Hessian and show in a simulation study that they clearly outperform numerical methods. As an example, we use the popular BEKK-GARCH model, for which we
derive first and second order derivatives
Temporal aggregation of multivariate GARCH processes
This paper derives results for the temporal aggregation of multivariate GARCH processes in the general vector specification. It is shown that the class of weak multivariate GARCH processes is closed under temporal aggregation. Fourth moment characteristics turn out to be crucial for the low frequency dynamics for both stock and flow variables.
It is shown that spurious instantaneous causality in variance will only appear in degenerated cases, but that spurious Granger causality will be more common.
Forecasting volatility, it is generally advisable to aggregate forecasts of the disaggregate series rather than forecasting the aggregated series directly, and unlike for VARMA processes the advantage does not diminish for large forecast horizons. Results are derived for the distribution of multivariate realized volatility if the high frequency process follows multivariate GARCH. Finally, the estimation problem is discussed. A numerical example illustrates some of the results
A generalized dynamic conditional correlation model for many asset returns
In this paper we put forward a generalization of the Dynamic Conditional Correlation (DCC) Model of Engle (2002). Our model allows for asset-specific correlation sensitivities, which is useful in particular if one aims to summarize a large number of asset returns. The resultant GDCC model is considered for daily data on 18 German stock returns, which are all included in the DAX, and for 25 UK stock returns in the FTSE. We find convincing evidence that the GDCC model improves on the DCC model and also on the CCC model of Bollerslev (1990)
Ridge regression revisited
We argue in this paper that general ridge (GR) regression implies no major complication compared with simple ridge regression. We introduce a generalization of an explicit GR estimator derived by Hemmerle and by Teekens and de Boer and show that this estimator, which is more conservative, performs better than the Hoerl and Kennard estimator in terms of a weighted quadratic loss criterion
The Euro Introduction and Non-Euro Currencies
This paper documents the existence of large structural breaks in the unconditional correlations among the British pound, Norwegian krone, Swedish krona, Swiss franc, and euro exchange rates (against the US dollar) during the period 1994-2003. Using the framework of dynamic conditional correlation (DCC) models, we find that such breaks occurred both at the time the formal decision to proceed with the euro was made in December 1996 and at the time of the actual introduction of the euro in January 1999. In particular, we document that most correlations were substantially lower during the intermittent period. We also find breaks in unconditional volatilities at the same points in time, but these are of a much smaller magnitude comparatively