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Title: CAViaR : Conditional Value at Risk By Regression Quantiles


1
CAViaR Conditional Value at Risk By Regression
Quantiles
  • Robert Engle and Simone Manganelli
  • U.C.S.D.
  • July 1999

2
Value at Risk is a single measure of market risk
of a firm, portfolio, trading desk, or other
economic entity. It is defined by a
significance level and a horizon. For
convenience consider 5 and 1 day.Any loss
tomorrow will be less than the Value at Risk
with 95 certainty
3
HISTOGRAM OF TOMORROWS VALUE - BASED ON PAST
RETURNS
4
CUMULATIVE DISTRIBUTION
5
Weakness of this measure
  • The amount we exceed VaR is important
  • There is no utility function associated with this
    measure
  • The measure assumes assets can be sold at their
    market price - no consideration for liquidity
  • But it is simple to understand and very widely
    used.

6
THE PROBLEM
  • FORECAST QUANTILE OF FUTURE RETURNS
  • MUST ACCOMMODATE TIME VARYING DISTRIBUTIONS
  • MUST HAVE METHOD FOR EVALUATION
  • MUST HAVE METHOD FOR PICKING UNKNOWN PARAMETERS

7
TWO GENERAL APPROACHES
  • FACTOR MODELS--- AS IN RISKMETRICS
  • PORTFOLIO MODELS--- AS IN ROLLING HISTORICAL
    QUANTILES

8
FACTOR MODELS
  • Volatilities and correlations between factors are
    estimated
  • These volatilities and correlations are updated
    daily
  • Portfolio standard deviations are calculated from
    portfolio weights and covariance matrix
  • Value at Risk computed assuming normality

9
PORTFOLIO MODELS
  • Historical performance of fixed weight portfolio
    is calculated from data bank
  • Model for quantile is estimated
  • VaR is forecast

10
COMPLICATIONS
  • Some assets didnt trade in the past- approximate
    by deltas or betas
  • Some assets were traded at different times of the
    day - asynchronous prices-synchronize these
  • Derivatives may require special assumptions -
    volatility models and greeks.

11
PORTFOLIO MODELS - EXAMPLES
  • Rolling Historical e.g. find the 5 point of
    the last 250 days
  • GARCH e.g. build a GARCH model to forecast
    volatility and use standardized residuals to find
    5 point
  • Hybrid model use rolling historical but weight
    most recent data more heavily with exponentially
    declining weights.

12
THE CAViaR STRATEGY
  • Define a quantile model with some unknown
    parameters
  • Construct the quantile criterion function
  • Optimize this criterion over the historical
    period
  • Formulate diagnostic checks for model adequacy
  • Try it out!

13
Mathematical Formulation
  • Find VaR satisfying
  • where y are returns and ? is probability
  • Must be able to calculate VaR one day in advance
    and to estimate unknown parameters.

14
SPECIFICATIONS FOR VaR
  • VaR is a function of observables in t-1
  • VaRf(VaR(t-1), y(t-1), parameters)
  • For example - the Adaptive Model

15
How to compute VaR
  • If beta is known, then VaR can be calculated for
    the adaptive model from a starting value.

16
CAViaR News Impact Curve
17
More Specifications
  • Proportional Symmetric Adaptive
  • Symmetric Absolute Value
  • Asymmetric Absolute Value

18
  • Asymmetric Slope
  • Indirect GARCH

19
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20
  • Koenker and Bassett(1978) maximize
  • Where f is the quantile which depends on past
    information and parameters beta
  • The criterion minimizes absolute errors where
    positive and negative errors are weighted
    differently

21
Quantile Objective Function
22
  • Even though the quantile function is
    non-differentiable at some points, the first
    order conditions must be satisfied with
    probability one.
  • Hits should be unpredictable and are uncorrelated
    with regressors at an optimum

23
Adaptive Criterion
24
Asymmetric Criterion
25
Optimization by Genetic Algorithm
  • DIFFERENTIAL EVOLUTIONARY GENETIC ALGORITHM -
    Price and Storn(1997)
  • Start with initial population of trial values
  • Reproduction based on fitness
  • Crossover to find next generation
  • Mutation - random new elements
  • Stopping Criterion

26
Testing the Model
  • Should have the right proportion of hits
  • Should have no autocorrelation
  • Probability of exceeding VaR should be
    independent of VaR (no measurement error)
  • Should be testable both in-sample and
    out-of-sample

27
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28
Tests
  • Cowles and Jones (1937)
  • Runs - Mood (1940)
  • Ljung Box on hits (1979)
  • Dynamic Quantile Test

29
Dynamic Quantile Test
  • To test that hits have the same distribution
    regardless of past observables
  • Regress hit on
  • constant
  • lagged hits
  • Value at Risk
  • lagged returns
  • other variables such as year dummies

30
Distribution Theory
  • If out of sample test , or
  • If all parameters are known
  • Then TR02 will be asymptotically Chi Squared and
    F version is also available
  • But the distribution is slightly different
    otherwise

31
Mathematical Statistics References
  • Koenker and Bassett(1978) no dynamics
  • Weiss(1991) least absolute deviation
  • Newey and McFadden(1994)

32
Mathematical Statistics
33
Mathematical Assumptions
34
Estimating Standard Errors
  • To calculate standard errors-must estimate D
  • D weights X by the height of the conditional
    density of returns at the estimated quantile
  • Should estimate this without making assumptions
    on the shape of the density

35
A Picture Gives Intuition
36
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37
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38
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39
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40
Assumption
  • Define
  • Therefore
  • And
  • NOW ASSUME

41
Estimate g Non-parametrically
  • where k is a uniform kernel accepting points
    between -1 and 1
  • and for 2900 observations empirically we chose
    cn.05

42
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43
A little Monte Carlo
  • 100 samples of 2000 observations of GARCH(1,1)
    with parameters (.3, .05, .90)
  • Estimate with Indirect GARCH CAViaR model
  • Mean parameters are (.42, .05, .88)
  • Some are far off showing no persistence
  • Trimming 10 extremes, means become (.31,.05,.90 )

44
Table 1 - Summary statistics of the Monte Carlo
experiment
45
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46
Table 2 - Monte Carlo summary statistics after
trimming the samples with GAMMA2lt0.5
47
Applications
  • Daily data from April 7, 1986 to April 7, 1999 -
    3392 observations
  • Save the last 500 for out- of- sample tests
  • GM, IBM, SP500
  • Fit all 6 models for 5 ,1 , .1 and 25 VaR.

48
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49
News Impact Curve - 1 SP
50
Caviar News Impact Curves SP500 at 5
51
1 and 5 News Impact Curves
52
Table 3 - Parameter estimates -Statistics for the
Adaptive model
53
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54
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55
Value at Risk for GM
56
Value at Risk for SP
57
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58
Dynamic Quantile Test -SP
  • Dependent Variable SAV_HIT
  • Sample 5 2892
  • Included observations 2888
  • Variable Coefficient Std. Error t-Statistic Prob.
  • C 0.0051 0.0096 0.5277 0.5977
  • SAV_HIT(-1) 0.0397 0.0187 2.1277 0.0334
  • SAV_HIT(-2) 0.0244 0.0187 1.3051 0.1920
  • SAV_HIT(-3) 0.0252 0.0187 1.3468 0.1781
  • SAV_HIT(-4) -0.0044 0.0187 -0.2370 0.8127
  • SAV_VAR -0.0034 0.0066 -0.5241 0.6002
  • R-squared 0.0029 Mean dependent var 0.0006
  • Adjusted R-squared 0.0012 S.D. dependent
    var 0.2191
  • S.E. of regression 0.2190 Akaike info
    criterion -0.1975
  • Sum squared resid 138.2105 Schwarz
    criterion -0.1851
  • Log likelihood 291.2040 F-statistic 1.7043
  • Durbin-Watson stat 1.9999 Prob(F-statistic) 0
    .1301

59
In-sample Dynamic Quantile Test
60
In-sample 1 Dynamic Quantile Test
61
Out of Sample DQ Test
62
Out of Sample 1 DQ Test
63
TRADITIONAL GARCH(1,1) IBM
  • C 0.133384 0.016911
  • ARCH(1) 0.112194 0.005075
  • GARCH(1) 0.851960 0.009923
  • VaR1.65standard deviation

64
DQ TESTS FOR NORMAL GARCH
65
TRADITIONAL GARCH(1,1) IBM
  • C 0.133384 0.016911
  • ARCH(1) 0.112194 0.005075
  • GARCH(1) 0.851960 0.009923
  • 5 POINT OF STANDARDIZED RESIDUALS 1.48
  • FOR GM THIS POINT IS 1.56
  • FOR SP THIS POINT IS 1.64

66
DQ TESTS FOR TRADITIONAL GARCH
67
Value at Risk for GM Asymmetric
68
Value at Risk for IBM Adaptive
69
Value at Risk for SP Implicit GARCH
70
Some Extensions
  • Are there economic variables which can predict
    tail shapes?
  • Would option market variables have predictability
    for the tails?
  • Would variables such as credit spreads prove
    predictive?
  • Can we estimate the expected value of the tail?

71
CONCLUSIONS-Contributions?
  • Estimation strategy for VaR Models
  • New Dynamic Specifications of Quantiles
  • Estimation of VaR without estimating volatility
  • Test for VaR accuracy both in and out of sample
  • Promising empirical evidence on some
    specifications
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