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Value at risk

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Title: Value at risk


1
Value at risk
  • Anton Velkov Iliya Tsekov

2
Risk Definition
  • Uncertainty lack of certainty with
    understanding that there exists other
    possibilities of outcomes
  • There is 90 chance that the market goes up
    tomorrow ? there is 10 uncertainty
  • Risk State of uncertainty with understanding
    that at least one outcome involves a loss
  • There is 10 chance that my investment will lose
    money today

3
Value at Risk (VaR)
  • We are X percent certain that we will not lose
    more than V dollars in time T.
  • Function of confidence level X and time T

4
Brief History
  • Increasing need for risk management after the
    1987 market crash
  • J.P. Morgan employees credited for developing VaR
  • Known as the 415pm report
  • RiskMetrics spinoff in 1994
  • CreditMetrics and CorporateMetrics

5
How to calculate VaR
  • Historical Simulation
  • Variance-Covariance Method
  • Monte-Carlo Simulation

6
Historical Simulation
  • Forecasting VaR based on past data
  • Example 1
  • Calculate 1-day VaR at 99 confidence level for
    a portfolio with current value 23.5 million.
    You have 501 observations at your disposal.
  • Figure out the market variables affecting the
    portfolio often exchange rates, equity prices,
    interest rates, etc.

7
 
 
 
99 confidence level, interested in worst 1 ? we
take the 5th worst value as our VaR
8
Example 2
-45.52 1-day 99 VaR
9
How to calculate VaR
  • Historical Simulation
  • Variance-Covariance Method
  • Monte-Carlo Simulation

10
Variance Covariance Method
  •  

11
Multi-Asset Case
  •  

 
12
How to calculate VaR
  • Historical Simulation
  • Variance-Covariance Method
  • Monte-Carlo Simulation

13
Back Testing
  • Integral part of any practical model
  • Look back at the data and see how well it would
    have performed if it were implemented earlier
  • Testing a 1-day 99 confidence VaR
  • If over a given period we lost more money than
    the VaR estimate on about 1 of the days, then
    the model works
  • If we lost more than VaR on 7-8 or 0.002 of the
    days, then the model might be corrupt

14
Stress Testing
  • Testing how the portfolio would have performed
    under some of the most extreme market moves
  • Jan. 8th 1988 SP500 moved 6.8 st.dev
  • Apr. 10th 1992 10-year bond yields moved by 7.7
    st.dev
  • Oct. 19th 1987 SP500 moved 22.3 st.dev

15
Artzner et al. (1998)
  •  

16
Shortcomings of VaR
  • Does not satisfy the subadditivity function of a
    coherent risk measure
  • Does not put weight on anything else but the
    cutoff percentile the VaR
  • Traders find cheating the VaR measure easy

17
Low VaR, huge potential Loss
18
Ascerbi Tasche (2001)
  •  

19
Expected Shortfall vs. VaR
  • Expected Shortfall passes all the coherent risk
    measure tests as presented by Artzner et al.
    (1998)
  • Harder to back test when compared to VaR
  • More difficult to interpret than VaR
  • In spite of its weaknesses, VaR is more popular
    among both regulators and risk managers.

20
Thank you
  • Any questions?
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