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Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of Economics Adjunct Professor, Departments of Applied Mathematics, Finance and Statistics, University of Washington BlackRock Alternative Advisors

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Page 1: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

•Factor Model Based Risk Measurement and Management

•R/Finance 2011: Applied Finance with R•April 30, 2011

• Eric Zivot• Robert Richards Chaired Professor of Economics• Adjunct Professor, Departments of Applied Mathematics,

Finance and Statistics, University of Washington• BlackRock Alternative Advisors

Page 2: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Risk Measurement and Management• Quantify asset and portfolio exposures to risk

factors– Equity, rates, credit, volatility, currency– Style, geography, industry, etc.

• Quantify asset and portfolio risk– SD, VaR, ETL

• Perform risk decomposition– Contribution of risk factors, contribution of

constituent assets to portfolio risk

• Stress testing and scenario analysis

Page 3: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Asset Level Linear Factor Model

1 1

2,

,

1, , ; , ,

~ ( , )

~ (0, )

cov( , ) 0 for all , , and

cov( , ) 0 for , and

it i i t ik kt it

i i t it

i

t F F

it i

jt is

it js

R F F

i n t t T

F j i s t

i j s t

β F

F μ Σ

Page 4: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Performance Attribution

][][][ 11 ktiktiiit FEFERE

][][ 11 ktikti FEFE

])[][(][ 11 ktiktiiti FEFERE

Expected return due to systematic “beta” exposure

Expected return due to firm specific “alpha”

Page 5: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Factor Model Covariance

2 2,1 ,

var( )

( , , )

t FM

ndiag

FR Σ BΣ B D

D

11 1 1t t

n knn k n R α B F εt

2,

cov( , ) var( )

var( )

it jt i t j i j

it i i i

R R

R

F

F

β F β β Σ β

β Σ β

Note:

Page 6: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Portfolio Linear Factor Model

,

1 1 1 1

,

p t t t t

n n n n

i it i i i i t i iti i i i

p p t p t

R

w R w w w

w R w α w BF w ε

β F

β F

1

1

( , , ) portfolio weights

1, 0 for 1, ,

n

n

i ii

w w

w w i n

w

Page 7: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Risk Measures

1( ), 0.01 0.10

of return t

VaR q F

F CDF R

Value-at-Risk (VaR)

Expected Tail Loss (ETL)

[ | ]t tETL E R R VaR

Return Standard Deviation (SD, aka active risk)

1/22( )t FSD R β Σ β

Page 8: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Risk Measures

Returns

De

nsity

-0.15 -0.10 -0.05 0.00 0.05

05

10

15

20

25

± SD

5% VaR5% ETL

Page 9: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Tail Risk Measures: Non-Normal Distributions

• Asset returns are typically non-normal• Many possible univariate non-normal

distributions– Student’s-t, skewed-t, generalized hyperbolic,

Gram-Charlier, a-stable, generalized Pareto, etc.

• Need multivariate non-normal distributions for portfolio analysis and risk budgeting.

• Large number of assets, small samples and unequal histories make multivariate modeling difficult

Page 10: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Factor Model Monte Carlo (FMMC)

• Use fitted factor model to simulate pseudo asset return data preserving empirical characteristics of risk factors and residuals– Use full data for factors and unequal history for

assets to deal with missing data

• Estimate tail risk and related measures non-parametrically from simulated return data

Page 11: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Simulation Algorithm• Simulate B values of the risk factors by re-sampling

from full sample empirical distribution:

• Simulate B values of the factor model residuals from fitted non-normal distribution:

• Create factor model returns from factor models fit over truncated samples, simulated factor variables drawn from full sample and simulated residuals:

1 , , B* *F F

* *1

ˆ ˆ, , , 1, ,i iB i n

* * *ˆˆ ˆ , 1, , ; 1, ,it i i t itR t B i n β F

Page 12: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2009

What to do with ?

• Backfill missing asset performance• Compute asset and portfolio performance

measures (e.g., Sharpe ratios)• Compute non-parametric estimates of asset

and portfolio tail risk measures• Compute non-parametric estimates of asset

and factor contributions to portfolio tail risk measures

* *

1 1 1ˆ, , ,

B B B

it it itt t tR

*F

Page 13: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Factor Risk Budgeting

Given linear factor model for asset or portfolio returns,

SD, VaR and ETL are linearly homogenous functions of factor sensitivities . Euler’s theorem gives additive decomposition

( , ), ( , ) , ~ (0,1)

t t t t t t

t t t t

R z

z z

β F β F β F

β β F F

1

1

( )( ) , , ,

k

jj j

RMRM RM SD VaR ETL

ββ

β

Page 14: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Factor Contributions to Risk

Marginal Contribution to Risk of factor j:

Contribution to Risk of factor j:

Percent Contribution to Risk of factor j:

( )

j

RM

β

( )j

j

RM

β

( )( )j

j

RMRM

β

β

Page 15: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Factor Tail Risk Contributions

For RM = VaR, ETL it can be shown that

( )[ | ], 1, , 1

( )[ | ], 1, , 1

jt tj

jt tj

VaRE F R VaR j k

ETLE F R VaR j k

β

β

Notes: 1. Intuitive interpretations as stress loss scenarios2. Analytic results are available under normality

Page 16: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Semi-Parametric Estimation

Factor Model Monte Carlo semi-parametric estimates

* *

1

* *

1

1ˆ[ | ] 1

1ˆ[ | ] 1[ ]

B

jt t jt tt

B

jt t jt tt

E F R VaR F VaR R VaRm

E F R VaR F R VaRB

Page 17: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

1998 2000 2002 2004 2006

-0.1

00

.00

Index

Re

turn

sHedge fund returns and 5% VaR Violations

1998 2000 2002 2004 2006

-0.0

60

.00

0.0

6

Index

Re

turn

s

Risk factor returns when fund return <= 5% VaR

5% VaR

Factor marginal contribution to 5% ETL

Page 18: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Portfolio Risk Budgeting

Given portfolio returns,

SD, VaR and ETL are linearly homogenous functions of portfolio weights w. Euler’s theorem gives additive decomposition

,1

n

p t t i iti

R w R

w R

1

( )( ) , , ,

n

ii i

RMRM w RM SD VaR ETL

w

ww

Page 19: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Fund Contributions to Portfolio Risk

Marginal Contribution to Risk of asset i:

Contribution to Risk of asset i:

Percent Contribution to Risk of asset i:

( )

i

RM

w

w

( )i

i

RMw

w

w

( )( )i

i

RMw RM

w

w

w

Page 20: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Portfolio Tail Risk Contributions

For RM = VaR, ETL it can be shown that

,

,

( )[ | ( )], 1, ,

( )[ | ( )], 1, ,

it p ti

it p ti

VaRE R R VaR i n

w

ETLE R R VaR i n

w

ww

ww

Note: Analytic results are available under normality

Page 21: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Semi-Parametric Estimation

Factor Model Monte Carlo semi-parametric estimates

* *, ,

1

* *,

1

1ˆ[ | ( )] 1 ( ) ( )

1ˆ[ | ( )] 1 ( )[ ]

B

it p t it p tt

B

it t it p tt

E R R VaR R VaR R VaRm

E R R VaR R R VaRB

w w w

w w

Page 22: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

2002 2003 2004 2005 2006 2007

-0.0

60

.00

0.0

4

Index

Re

turn

sFoHF Portfolio Returns and 5% VaR Violations

2002 2003 2004 2005 2006 2007

-0.0

50

.00

0.0

5

Index

Re

turn

s

Constituant fund returns when FoHF returns <= 5% VaR

5% VaR

Fund marginal contribution to portfolio 5% ETL

Page 23: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Example FoHF Portfolio Analysis

• Equally weighted portfolio of 12 large hedge funds

• Strategy disciplines: 3 long-short equity (LS-E), 3 event driven multi-strat (EV-MS), 3 direction trading (DT), 3 relative value (RV)

• Factor universe: 52 potential risk factors• R2 of factor model for portfolio ≈ 75%, average

R2 of factor models for individual hedge funds ≈ 45%

Page 24: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

FMMC FoHF Returns

Returns

De

nsity

-0.05 0.00 0.05

010

20

30 1.6

7%

ET

L

1.6

7%

VaR

sFM = 1.42%sFM,EWMA = 1.52%VaR0.0167 = -3.25%ETL0.0167 = -4.62%

50,000 simulations

Page 25: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Factor Risk Contributions

Page 26: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Hedge Fund Risk Contributions

Page 27: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Hedge Fund Risk Contribution

Page 28: Factor Model Based Risk Measurement and Management R/Finance 2011: Applied Finance with R April 30, 2011 Eric Zivot Robert Richards Chaired Professor of

© Eric Zivot 2011

Summary and Conclusions

• Factor models are widely used in academic research and industry practice and are well suited to modeling asset returns

• Tail risk measurement and management of portfolios poses unique challenges that can be overcome using Factor Model Monte Carlo methods