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Cornish-Fisher VaR 101 Print E-mail
25/11/2007
Brian Peterson, knowledge leader at US-based Diamond Management &
Technology Consultants, answers this week's questions on Cornish-Fisher
VaR.

1. What is Cornish-Fisher VaR and how does it differ from VaR?

Value-at-Risk (VaR) is a measure of the likely loss at a given confidence
level (quantile). Historical VaR is calculated by simply ranking
the observed returns and looking at the loss at the desired confidence.
J.P. Morgan's RiskMetrics parametric mean-VaR was published in 1994
and this methodology for estimating parametric mean-VaR has become
what most literature generally refers to as "VaR" (J.P.Morgan/Reuters,
1996). Parametric VaR works by assuming a distribution to more precisely
estimate the unobserved risk at the tails of the distribution; the
RiskMetrics approach assumes a Gaussian normal distribution. In this
case, estimation of VaR requires the mean return R, and the standard
deviation of the returns ó. In the most common case, parametric VaR
is thus calculated by



where qp is the p% confidence quantile of the distribution.
Zangari (1996), Campbell et al. (2001) and Favre and Galeano (2002)
provide a modified VaR calculation that takes the higher moments (skewness,
the directionality or tilt of the returns and kurtosis, the measurement
of the "fat-tailed" nature of the returns) of non-normal distributions into
account through the use of a Cornish and Fisher (1937) expansion, better
approximating the shape of the true distribution.

They arrive at their modified VaR calculation in the following manner:


where S is the skewness and K is the kurtosis of the return series. In
a portfolio context, the moments may be calculated utilizing either the
historical returns of the whole portfolio (i.e. univariate), or by using a
multivariate estimate of the moments for a more accurate representation
of the portfolio VaR. Cornish-Fisher VaR will give a larger loss estimate
than traditional VaR when returns are negatively skewed or highly kurtotic
fat-tailed),and, conversely, will give a smaller loss magnitude when returns
are positively skewed or leptokurtotic.

Cornish-Fisher VaR collapses to traditional mean-VaR when returns are
normally distributed. This measure is now widely cited and used in the
literature, and is usually referred to as "Modified VaR" or "Modified
Cornish-Fisher VaR".

2. What are the advantages and constraints of using VaR as part
of a trading or investment strategy?

VaR is one of the most widely used measures of downside risk. In general,
a good VaR estimate should provide a manager with a view on the likely
loss at a given confidence level. This is why calculating VaR is required
by most regulatory regimes such as Basel II to set capital reserves. When
you have a good estimate of what your likely loss may be, you can reserve
enough capital to cover those losses and remain solvent. VaR estimates
can inform a portfolio manager whether observed losses are within normal
or expected bounds.

On the other hand, VaR is typically not a "coherent risk measure".
Artzner et al. (1997) defines the properties of a coherent risk measure,
significantly including the property of sub-additivity: the risk of an
individual component should add up to the risk of the portfolio. To overcome
this problem, Artzner and others developed Expected Shortfall
(sometimes also called Conditional VaR). Expected Shortfall measures
the mean loss when the loss is greater than the VaR. Another subadditive
measure based on VaR is called Component VaR, which examines the
contribution to the VaR of the portfolio by each individual component
of the portfolio. Another limitation of both traditional mean-VaR and
Cornish-Fisher VaR in its main form (above) is that it is not suitable for
modelling the risk of complex structured products with non-continuous
return-generating functions.

3. Is Cornish-Fisher VaR superior to the nonparametric method
in estimating Expected Shortfall and Tail Risk? Why?

They measure different things in very different ways. Historical measures
are always limited to the observed returns, and will not deviate from
observations already seen. Parametric methods such as Cornish-Fisher
VaR attempt to mathematically predict the shape of the tail, even when
such extreme returns have not been previously observed.

Many managers use Expected Shortfall as a replacement for VaR because
of the perceived inaccuracy of traditional historical or parametric VaR.
Cornish-Fisher VaR will produce superior estimates to traditional parametric
VaR. Asset managers should still use nonparametric (historical)
analyses as part of the examination of scenario risk around specific
historical events (Russian bond default, Black Tuesday, the recent credit
crunch and volatility spike, etc.). Expected Shortfall (either parametric or
nonparametric)or some other coherent VaR measure will be more useful
in portfolio optimization than univariate Cornish-Fisher VaR. Cornish-
Fisher VaR, in general, will be more useful for risk measurement and
prediction for individual assets.

4. Finally, what kind of investors should use Cornish Fisher VaR?

VaR estimates are estimates of downside risk. Because Cornish-Fisher
VaR will give the same answer as traditional VaR when returns are normally
distributed, Cornish-Fisher VaR may be substituted in all cases
where VaR would normally be used, and may be expected to give a more
accurate estimate of downside risk in almost all cases. Use of Cornish-
Fisher VaR can inform a manager when an asset is riskier than might
be apparent by examining only the standard deviation of the returns.
Cornish-Fisher VaR will give a larger loss estimate than traditional VaR
when returns are negatively skewed or highly kurtotic (fat-tailed) and,
conversely, will give a smaller loss magnitude when returns are positively
skewed or leptokurtotic. In this way Cornish-Fisher VaR more accurately
accounts for expected investor preferences for positive skew and
predictable ranges of returns.

References:
Artzner, Philippe, Freddy Delbaen, Jean-Marc Eber, and David Heath. 1997.
Thinking Coherently. RISK 10(10):68–71.

Campbell, Rachel, Ronald Huisman, and Kees Koedijk. 2001. Optimal Portfolio
Selection in a Value at Risk Framework. Jornal of Banking and Finance
25:1789–1804.

Cornish, Edmund A., and Ronald A. Fisher. 1937. Moments and Cumulants
in the Specification of Distributions. Revue de l'Institut International de
Statistique 5(4):307–320.

Favre, Laurent, and Jose-Antonio Galeano. 2002. Mean-Modified Value-at-
Risk Optimization with Hedge Funds. Journal of Alternative Investment
Fall, 5(2):2–21.

J.P.Morgan/Reuters. 1996. RiskMetrics Technical Document. Tech. Rep.
Fourth Edition, J.P. Morgan/Reuters, New York.

Zangari, Peter. 1996. A VaR Methodology for Portfolios that include Options.
RiskMetrics Monitor First Quarter:4–12.



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