2. LEARNING OUTCOMES
β’To understand the nature of risk in order to measure risk
β’To understand how risk factors are incorporated into
modelling risk
β’To understand the properties of componentVaR
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3. The Question Being Asked inVaR
βWhat loss level is such that we are X% confident it will not be
exceeded in N business days?β
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4. VaR and Regulatory Capital
β’ Regulators base the capital they require banks to keep on
VaR
β’ The market-risk capital has traditionally been calculated
from a 10-dayVaR estimated where the confidence level is
99%
β’ Credit risk and operational risk capital are based on a one-
year 99.9%VaR
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5. Advantages ofVaR
β’ It captures an important aspect of risk
in a single number
β’ It is easy to understand
β’ It asks the simple question: βHow bad can things get?β
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6. VaR vs. Expected Shortfall
β’ VaR is the loss level that will not be exceeded with a specified
probability
β’ Expected shortfall (ES) is the expected loss given that the loss
is greater than theVaR level (also called C-VaR andTail Loss)
β’ Regulators have indicated that they plan to move from using
VaR to using ES for determining market risk capital
β’ Two portfolios with the sameVaR can have very different
expected shortfalls
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8. Coherent Risk Measures
β’ Define a coherent risk measure as the amount of cash that
has to be added to a portfolio to make its risk acceptable
β’ Properties of coherent risk measure
β’ If one portfolio always produces a worse outcome than another
its risk measure should be greater
β’ If we add an amount of cash K to a portfolio its risk measure
should go down by K
β’ Changing the size of a portfolio by l should result in the risk
measure being multiplied by l
β’ The risk measures for two portfolios after they have been
merged should be no greater than the sum of their risk measures
before they were merged 8
9. VaR vs Expected Shortfall
β’ VaR satisfies the first three conditions but not the fourth one
β’ ES satisfies all four conditions.
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10. Spectral Risk Measures
1. A spectral risk measure assigns weights to quantiles of the loss
distribution
2. VaR assigns all weight to Xth percentile of the loss distribution
3. Expected shortfall assigns equal weight to all percentiles
greater than the Xth percentile
4. For a coherent risk measure weights must be a non-decreasing
function of the percentiles
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11. Normal Distribution Assumption
β’ When losses (gains) are normally distributed with
mean m and standard deviation s
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)
1
(
2
ES
)
(
VaR
2
1
2
X
e
X
N
Y
ο
ο«
ο½
ο«
ο½
ο
ο
ο°
s
m
s
m
12. Changing theTime Horizon
β’ If losses in successive days are independent, normally distributed, and have
a mean of zero
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T
T
T
ο΄
ο½
ο΄
ο½
ES
day
-
1
ES
day
-
T
VaR
day
-
1
VaR
day
-
13. Choice ofVaR Parameters
β’ Time horizon should depend on how quickly portfolio can be
unwound. Regulators are planning to move toward a system
where ES is used and the time horizon depends on liquidity.
β’ Confidence level depends on objectives. Regulators use 99% for
market risk and 99.9% for credit/operational risk.
β’ A bank wanting to maintain a AA credit rating might use
confidence levels as high as 99.97% for internal calculations.
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14. AggregatingVaRs
An approximate approach that seems to works well is
whereVaRi is theVaR for the ith segment,VaRtotal is the totalVaR, and rij is the coefficient
of correlation between losses from the ith and jth segments
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ο₯ο₯ r
ο½
i j
ij
j
iVaR
VaR
VaRtotal
15. Properties of ComponentVaR
β’ The componentVaR is approximately the same as the incrementalVaR
β’ The totalVaR is the sum of the componentVaRβs (Eulerβs theorem)
β’ The componentVaR therefore provides a sensible way of allocatingVaR to
different activities
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16. Back-testing
β’ Back-testing aVaR calculation methodology involves
looking at how often exceptions (loss >VaR) occur
β’ Alternatives: a) compareVaR with actual change in portfolio
value and b) compareVaR with change in portfolio value
assuming no change in portfolio composition
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17. Bunching
β’ Bunching occurs when exceptions are not evenly spread throughout the
back testing period
β’ Statistical tests for bunching have been developed by Christoffersen
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