
Professor Carol Alexander
This page
contains downloadable versions of a selection of recent discussion papers that
have not yet appeared in print. For a full list of my discussion
papers since 2000 see the ICMA Centre Discussion Papers in Finance
Diversification
of Equity with VIX Futures: Personal Views and Skewness Preference
Co-author: Dimitris
Korovilas
A
comprehensive description of the trading and statistical characteristics of VIX
futures and their exchange-traded notes motivates our study of their benefits
to equity investors seeking to diversify their exposure. We analyze
when diversification into VIX futures is ex-ante optimal for standard
mean-variance investors, then extend this to include
(a) skewness preference, and (b) a moderation of personal forecasts by
equilibrium returns, as in the Black-Litterman framework. An empirical study
shows that skewness preference increases the frequency of diversification, but
out-of-sample the optimally-diversified portfolios rarely out-perform equity
alone, even according to a generalized Sharpe ratio that incorporates skewness
preference, except during an extreme crisis period or when the investor has
personal access to accurate forecasts of VIX futures returns.
A
General Approach to Real Option Valuation with Applications to Real Estate
Investments
Co-author: Xi Chen
We model
investment opportunities with a single source of uncertainty, i.e. the market
price of the investment. Investment cost can be predetermined or perfectly
correlated with the market price. The common paradigm for risk-neutral
real-option pricing is a special case encompassed within our general framework,
and we analyse the relationship between standard real option prices and the
more general risk-averse real option values. Numerical examples illustrate how
these general values depend on the frequency of decision opportunities, the
investor's risk tolerance and its sensitivity to wealth, his expected return
and volatility of the underlying asset, and the price of the asset relative to
initial wealth. Specific applications to real estate include property
investment under `boom-bust' or mean-reverting price scenarios, and buy-to-let
or land-development opportunities.
Co-authors: Adrian Bell, Chris Brooks and
Tony Moore
This paper
develops a model to analyse the financial relationship between Henry III, king
of England between 1216 and 1272, and one group of creditors, namely the
Flemish merchants that provided cloth to the royal wardrobe. From the surviving
royal documents, we have reconstructed the credit advanced to the royal wardrobe
by the merchants of Ypres and Douai for each year between 1247 and 1270,
together with the arrears owed by the king at certain points. The model is
flexible and able to capture the dynamics of the actual number of merchants
trading in England as well as the extent to which the king made debt
repayments.
Model
Risk in Variance Swap Rates
Co-author: Stamatis Leontsinis
Different
theoretical and numerical methods for calculating the fair-value of a variance
swap give rise to systematic biases that are most pronounced during volatile
periods. For instance, differences of 10-20 percentage points would have been
observed on fair-value index variance swap rates during the banking crisis in
2008, depending on the formula used and its implementation. Our empirical study
utilizes more than 16 years of FTSE 100 daily options prices to compare three
fair-value variance swap rates. The exchange's variance swap rate formula, used
to quote volatility indices such as VIX, has an upward bias induced by Riemann
sum numerical integration that empirically outweighs the negative jump and
discrete monitorization biases that are inherent in this fair-value formula. On
average, the exchange's methodology provides less accurate predictors of
discretely-monitored realised volatility than the approximate swap rate formula
introduced in this paper, which we implement using an almost exact analytical
integration technique.
Analytic
Approximations to GARCH Aggregated Returns Distributions
Co-authors: Emese Lazar and Silvia Stanescu
It is widely
accepted that some of the most accurate predictions of aggregated asset returns
are based on an appropriately specified GARCH process. As the forecast horizon
is greater than the frequency of the GARCH model, such predictions either
require time-consuming simulations or they can be estimated using a recent
development in the GARCH literature, viz. quasi-analytic GARCH returns
distributions based on analytic moment formulae for GARCH aggregated returns.
We demonstrate that this new methodology yields robust and rapid calculations
of the Value-at-Risk (VaR) generated by a GARCH process that can be well over
100 times faster than using Monte Carlo simulation. Our extensive empirical
study applies normal and Student-t, symmetric and asymmetric (GJR) GARCH
processes to returns data on different financial assets, validates the accuracy
of the quasi-analytic approximations to GARCH aggregated returns and thus
derives GARCH VaR estimates that are shown to be highly accurate over multiple
horizons and significance levels.
ROM
Simulation with Rotation Matrices
Co-author: Daniel Ledermann
This paper
explores the properties of random orthogonal matrix (ROM) simulation when the
random matrix is drawn from the class of rotational matrices. We describe the
characteristics of ROM simulated samples that are generated using random
Hessenberg, Cayley and exponential matrices and compare the computational
efficiency of parametric ROM simulations with standard Monte Carlo techniques.
Analytic
Moments for GARCH Processes
Co-authors: Emese Lazar and Silvia Stanescu
Conditional
returns distributions generated by a GARCH process, which are important for
many problems in market risk assessment and portfolio optimization, are
typically generated via simulation. This paper extends previous research on
analytic moments of GARCH returns distributions in several ways: we consider a
general GARCH model - the GJR specification with a generic innovation
distribution; we derive analytic expressions for the first four conditional
moments of the forward return, of the forward variance, of the aggregated
return and of the aggregated variance - corresponding moments for some specific
GARCH models largely used in practice are recovered as special cases; we derive
the limits of these moments as the time horizon increases, establishing
regularity conditions for the moments of aggregated returns to converge to
normal moments; and we demonstrate empirically that some excellent approximate
predictive distributions can be obtained from these analytic moments, thus
precluding the need for time-consuming simulations.
The
Hazards of Volatility Diversification
Co-author: Dimitris
Korovilas
Recent
research advocates volatility diversification for long equity investors. It can
even be justified when short-term expected returns are highly negative, but
only when its equilibrium return is ignored. Its advantages during stock market
crises are clear but we show that the high transactions costs and negative
carry and roll yield on volatility futures during normal periods would outweigh
any benefits gained unless volatility trades are carefully timed. Our analysis
highlights the difficulty of predicting when volatility diversification is
optimal. Hence institutional investors should be sceptical of studies that
extol its benefits. Volatility is better left to experienced traders such as
speculators, vega hedgers and hedge funds.
Endogenizing Model Risk in Quantile Estimates
Co-author: Jose Maria Sarabia
We quantify
and endogenize the model risk associated with
quantile estimates using a maximum entropy distribution (MED) as benchmark. Moment-based
MEDs cannot have heavy tails, however generalized beta generated distributions
have attractive properties for popular applications of quantiles. These are
MEDs under three simple constraints on the parameters that explicitly control
tail weight and peakness. Model risk arises because
analysts are constrained to use a model distribution that is not the MED. Then
the model's alpha quantile differs from the alpha quantile of the MED so the
tail probability under the MED associated with the model's alpha quantile is
not alpha, it is a random variable. Model risk is endogenized
by parameterizing the uncertainty about this random variable, whence the
model's alpha quantile becomes a generated random variable. To obtain a point
model-risk-adjusted quantile, the generated distribution is used to adjust the
model's alpha quantile for any systematic bias and uncertainty due to model
risk. An illustration based on Value-at-Risk (VaR) computes a
model-risk-adjusted VaR for risk capital reserves which encompass both
portfolio and VaR model risk.
VIX Dynamics with Stochastic Volatility of Volatility
Co-author: Andreas Kaeck
This paper
examines the ability of several different continuous-time
one and two-factor jump-diffusion models to capture the dynamics of the VIX
volatility index for the period between 1990 and 2010. For the one-factor
models we study affine and non-affine specifications, possibly augmented with
jumps. Jumps in one-factor models occur frequently, but add surprisingly little
to the ability of the models to explain the dynamic of the VIX. We present a
stochastic volatility of volatility model that can explain all the time-series
characteristics of the VIX studied in this paper. Extensions demonstrate that
sudden jumps in the VIX are more likely during tranquil periods and the days
when jumps occur coincide with major political or economic events. Using
several statistical and operational metrics we find that non-affine one-factor
models outperform their affine counterparts and modeling
the log of the index is superior to modeling the VIX
level directly.
Markov Switching GARCH Diffusion
Co-author: Emese Lazar
Abstract:
GARCH option pricing models have the advantage of a well-established
econometric foundation. However, multiple states need to be introduced as
single state GARCH and even Lévy processes are unable
to explain the term structure of the moments of financial data. We show that
the continuous time version of the Markov switching GARCH(1,1)
process is a stochastic model where the volatility follows a switching process.
The continuous time switching GARCH model derived in this paper, where the
variance process jumps between two or more GARCH volatility states, is able to
capture the features of implied volatilities in an intuitive and tractable
framework.
Weak GARCH Diffusion
Co-author: Emese Lazar
Abstract:Discrete time volatility analysis has focussed almost
exclusively on GARCH processes, which are very flexible models for time varying
conditional variance. The continuous limit of these processes is therefore of
considerable interest for continuous time volatility modelling. Unfortunately,
progress in this area has been hampered by conflicting results. The limit of
the symmetric normal GARCH model is fundamental for limits of other GARCH
processes, yet even this has been the point of much debate amongst
econometricians. Nelson (1990) derived the limit of the strong GARCH model as a
stochastic volatility process that is uncorrelated with the price process, so
this limit has limited applicability. However, since the strong GARCH process
is not time aggregating one should question whether it is sensible to derive
its continuous limit at all. This paper derives the continuous limit of the
weak GARCH process, which is time aggregating. Moreover the limit model is a
stochastic volatility model with non-zero price volatility correlation in which
both the variance diffusion coefficient and the price-volatility correlation
are related to the skewness and kurtosis of the physical returns density. When
returns are normally distributed this limit model reduces to Nelson’s strong
GARCH diffusion, however, more generally it has the flexibility to fit most
short term volatility skews without adding jumps in either the price or the
volatility process.
A Primer on the Orthogonal GARCH Model
The
orthogonal GARCH model is a multivariate, factor GARCH model based on principal
components analysis. It is my preferred approach for constructing large
dimensional GARCH covariance matrices for highly correlated systems, such as
term structures of interest rates or commodity futures. I wrote this primer,
more than 10 years ago, as a simple introduction to the model, aimed at inexerienced users. Although I have since published many
more advanced articles on the subject, I have made this little primer available
on my website by popular demand.
Examples
for the OGARCH Primer
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