Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1...

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Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011

Transcript of Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1...

Page 1: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Functional Itô Calculusand Volatility Risk Management

Bruno DupireBloomberg L.P/NYU

AIMS Day 1

Cape Town, February 17, 2011

Page 2: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Outline1) Functional Itô Calculus

• Functional Itô formula• Functional Feynman-Kac• PDE for path dependent options

2) Volatility Hedge

• Local Volatility Model• Volatility expansion• Vega decomposition• Robust hedge with Vanillas• Examples

Page 3: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

1) Functional Itô Calculus

Page 4: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Why?

process. theof history,or

path,current theof functions it to extend We

processes. of functions with deals calculus Itô

prepayment MBS path rateinterest

reaction viralantigen toexposure

payoffdependent path history price

level water etemperatur

:patternscertain on depends

)(

eConsequencCause

link The .cumulative isy uncertaint ofimpact theoften,Most

ttf

t XfyX

Page 5: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Review of Itô Calculus

• 1D

• nD

• infiniteD

• Malliavin Calculus

• Functional Itô Calculus

current value

possible evolutions

Page 6: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Functionals of running paths

)( and )( is at of valueThe

)(,for ,: :functional

}t][0, functions RCLL{

t][0, sections starting allon but T][0,path wholeon theonly not defined sFunctional

],0[

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XfXff

tttt

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t

0 T

12.87

6.32

6.34

Page 7: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Examples of Functionals

hit is last value First time-

average rolling ofMax -

variablesstate ofnumber Infinite

(3) rangeon Option -

(2)Asian -

(1)European -

: time)(excluding variablesstate ofnumber Finite

priceoption dependent path of caseimportant thecovers onelast The

price greplicatin-Super -

valuefinal ofn expectatio lConditiona-

drawdownCurrent -

averageCurrent -

Page 8: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Derivatives

t

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h

XfXfXf

tttstXsXtssXsX

htXtXtssXsX

fX

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)()(lim)(

derivative Time

)()(lim)(

derivative Space

],[for )()( for )()(

)()( for )()(

,:,For

},t][0, functions RCLL{

,

0

0

,,

],0[

Page 9: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Examples

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)(2010

tt

ttx

t

t

ut

xf

xxf

QVduxxf

t

hf

x

hf

txhXf tt

t

x

then ),,()( If

Page 10: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Topology and Continuity

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stYX

ststst

st

,),(

) assumecan (we ,in , allFor

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tsst

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t

XfYfYXd

Y

Xf

t s

X

Y

Page 11: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Functional Itô Formula

xdfdtfdxfdf

xdXfdtXfdxXfXfXf

Tf

Xx

tCxC

smoothf

xxtx

T

ttxx

T

tt

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t

2

1

notation, concise morein or,

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1)()()()(

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t],[0,over path its denotes and martingale-semi continuous a is If

Theorem

.continuous- s themselvesderivative e with thes,in and in

,continuous- isit if is : functional a :Definition

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12

Page 12: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Fragment of proof

))()((

))()((

))()((

)()(

ff

ff

ff

ffdf

Page 13: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Functional Feynman-Kac Formula

))( martingale the toformula Itô functional(apply

0)(2

)()()()()()(

satisfiesit smooth, is if Then,

)()(],,[for

)()(],,0[for where

]|)([)(

by : define We. :,: ,integrablesuitably For

)()(

payoff.dependent path and dynamics Markovnon FK to oftion Generalisa

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2

)(

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f

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uYuZtu

YZZgeEYf

frgg

dWXbdtXadx

t

u

T

tu

Page 14: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Delta Hedge/Clark-Ocone

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T

TT

ttxt

T

TT

ttxtt

ttxt

T

TT

ttTt

dWXXgDEXbXXgEXg

dWXfXbXfXfXg

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r

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]|)([)(]|)([)(

:CalculusMalliavin from

formula Ocone-Clark the tocompared becan It

)()()()()(

and

)()()(

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)()(]|)([)(

:tionRepresenta Martingaleexplicit thehave then we

smooth, is ]|)([)(by defined If

00

00

00

Page 15: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

P&L

St t

St

Break-even points

t

t

Option Value

St

CtCt t

S

Delta hedge

P&L of a delta hedged Vanilla

Page 16: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Functional PDE for Exotics

dependent.path be will and generalin However,

. variablesstate ofnumber infinitean even with options,dependent

pathfor holds also optionsEuropean for off- trade The

0))()(()()(2

1)(

satisfiesit then

smooth, is ]|)([)(by given If

2

)(

Γ

Γ/

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YZZgeEYff

tttxttxxtt

ttT

duZr

t

T

tu

Page 17: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Classical PDE for Asian

term.convection bothering a is

02

10

2

1

,0

),,()(, Define ),( Assume

)()( :CallAsian of Payoff

2

222

2

2

0

0

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lx

x

lb

I

lx

t

lfbf

x

lf

x

lfI

t

l

I

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KduxXg

xxt

xxxx

ttt

t

tttutttt

T

uT

Page 18: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Better Asian PDE

0))()(2(2

10

2

1

)()(2

)()(

0

),,()(,)(][ Define

2

22

2

2

222

2

22

2

2

2

00

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htT

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t

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x

x

tt

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t

u

T

utt

Page 19: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

2) Robust Volatility Hedge

Page 20: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Local Volatility Model• Simplest model to fit a full surface• Forward volatilities that can be locked

CqK

CKqr

K

CK

TK

T

C

dWtSdtqrS

dS

2

22

2

2

,

),()(

Page 21: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Summary of LVM

• Simplest model that fits vanillas

• In Europe, second most used model (after Black-Scholes) in Equity Derivatives

• Local volatilities: fwd vols that can be locked by a vanilla PF

• Stoch vol model calibrated

• If no jumps, deterministic implied vols => LVM

),(][ 22 tSSSE loctt

Page 22: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

S&P500 implied and local vols

Page 23: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

S&P 500 FitCumulative variance as a function of strike. One curve per maturity.Dotted line: Heston, Red line: Heston + residuals, bubbles: market

RMS in bpsBS: 305Heston: 47H+residuals: 7

Page 24: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Hedge within/outside LVM

• 1 Brownian driver => complete model

• Within the model, perfect replication by Delta hedge

• Hedge outside of (or against) the model: hedge against volatility perturbations

• Leads to a decomposition of Vega across strikes and maturities

Page 25: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Implied and Local Volatility Bumps

implied to

local volatility

Page 26: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

P&L from Delta hedging

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T

txxt

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ttxTT

ttt

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formula, Itô functional by the , with follows If

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1)( PDE, functionalBy

])([)(by define,For

.),(,0 Assume

0

Page 27: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Model Impact

Recall

g(YT ) f (YT ) f (X0) x f (Yt ) dy t 0

T 1

2(v t v0(y t , t)) xx f (Yt ) dt

0

T

Hence, with g (v) E Qv [g(YT ) X0] and v (x, t) the transition density for v,

g (v)g (v0) 1

2E Qv [ (v t v0(x t , t)) xx f (X t ) dt

0

T ]

g (v0) 1

2 v (x, t) E Qv [(v t v0(x, t)) xx f (X t ) x t x]dx dt

0

T

Page 28: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Comparing calibrated models

][],[

:alive""by ngconditioni ofimpact theevaluate toamountsIt

),(][ options, vanillasame on the calibrated are and If

],)),([(),(

),(2

1

],)()),([(),(),(2

1

])()),([(),(2

1)()(

option,Barrier out -knock aFor

])()),([(),(2

1)()(

Recall

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0 02

2

0 0

0 00

0 00

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txvxxvEvv

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gg

vv

v

v

v

v

v

Page 29: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Volatility Expansion in LVM

])([),(2

1),( where

),(),()(

])([),(),(2

1)()(

),(),( : form theof LVM a is wherecase In the

])()),([(),(2

1)()(

general,In

00

00

00

000

00

0 00

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dtdxtxutxmv

dtdxxxXfEtxutxvuv

dWtxutxvdxuvv

dtdxxxXftxvvEtxvv

ttxx

Quv

T

g

T

ttxx

Quvgg

tttt

T

ttxxtQv

gg

uv

uv

v

Page 30: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Fréchet Derivative in LVM

)derivative(Fréchet ),(at variancelocal the to ofy sensitivit theis

])([),(2

1),(

where

),(),(

])([),(),(2

1

)()(lim,

:satisfies ofdirection in the derivativeFréchet The

])([),(),(2

)()(

,particularIn

00

00

00

0

0

00

0v

000

txg

xxXfEtxtxm

dtdxtxutxm

dtdxxxXfEtxutx

vuvu

u

dtdxxxXfEtxutxvuv

ttxx

Qv

T

T

ttxx

Qv

ggg

T

ttxx

Quvgg

v

v

uv

Page 31: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

One Touch Option - Price

Black-Scholes model S0=100, H=110, σ=0.25, T=0.25

Page 32: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

One Touch Option - Γ

Page 33: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

PtSmTO ..2

1),(:..

Page 34: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Up-Out Call - Price

Black-Scholes model S0=100, H=110, K=90, σ=0.25, T=0.25

Page 35: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Up-Out Call - Γ

Page 36: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

PtSmUOC ..2

1),(:

Page 37: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Black-Scholes/LVM comparison

price. LVM reach the toenables Scholes-Black theofinput y volatilitno case, In this

Page 38: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Vanilla hedging portfolio I

?),(function get the can we How

),(])([])([),(

t)(x, allfor ifonly and if moves volatility

small all hedges vanillasof ),( Portfolio

.at variancelocal theto

ofy sensitivit theis ])([),(2

1),( Recall

00

00

2

2

,

g

TK

txhxxXfExxXEx

txPF

dTdKCTKPF

(x,t)

xxXfEtxtxm

ttxx

Q

ttPFxx

Q

TK

ttxx

Qv

vv

v

Page 39: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Vanilla hedging portfolios II

bumps. volimplied y tosensitivit no hence

bumps vollocal y tosensitivit no has and 0]),()([,,

00 with 0)(then 2

1)( take weIf c)

.)()( Thus,

])([),( with ),(),(]),()([),(

),(),)((),( b)

)(),(condition boundary with 0)( , call aFor

2

1)( define we),,(For a)

2

2

20

2

2

2

2

2

2

2

,

2,

2

2,

2

,

20

2

0

00

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kk(x,T)kLx

hv

t

hhL

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x

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txtxx

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x

CLC

x

kv

t

kkLtxk

ttxx

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ttxx

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ttxx

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TK

KTKTK

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v

vv

Page 40: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Example : Asian option

.at variancelocal theto ofy sensitivit theis ])([),(2

1),(

1maturity20 volatility100S, )( : off-Pay v

g

00

0

0

00 (x,t) xxXfEtxtxm

TvKKdtxXgdWdx

ttxx

Qv

T

tttt

v

K

T

KT

Page 41: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Asian Option Hedge

KT

20

2

,

),(),(

2

1),(),(

),( with hedgeatility Robust vol

x

TKhTKv

t

TKhTK

dTdKCTKPF TK

K

T

Page 42: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Forward Parabola - Γ2)()(

12 TTT SSXg Payoff:

= 1, = 2, = 100, = 101T 2T 0S σ

Page 43: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Forward Parabola Hedge

Page 44: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Forward Cube - Γ3)()(

12 TTT SSXg Payoff:

= 1, = 2, = 100, = 101T 2T 0S σ

Page 45: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Forward Cube Hedge

Page 46: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Forward Start - Γ )()(

12 TTT SSXgPayoff

= 1, = 2, = 100, = 101T 2T 0S σ

Page 47: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Forward Start Hedge

Page 48: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

One Touch - Γ}104{max1)( HST T

XgPayoff

= 1, = 104 , = 100, = 51T H 0S σ

Page 49: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

One Touch Hedge

Page 50: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Γ/VegaLink

Page 51: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Robustness

• Superbucket hedge protects today from first order moves in implied volatilities; what about robustness in the future?

• After delta hedge, the tracking error is

• In the case of discrete hedging in the model or fast mean reversion of vol, variance of TE is proportional to

TE 1

2(v t v0(y t , t)) xx f (Yt ) dt

0

T

E[ ( xx f (Yt ))2 dt

0

T ] E[( xx f (Yt ))2 y t y] (y, t)dydt

0

T

Page 52: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Hedgeability

• The optimal vanilla hedge PF minimizes

and thus coincides with the superbucket hedge as

• The residual risk is

• The hedgeability of an option is linked to the dependency of the functional gamma on the path

xxPF (y, t) E[ xx f (Yt ) y t y]

Var[ xx f (Yt )) y t y] (y, t) dy dt0

T

E[( xx f (Yt ) xxPF (y, t))2 y t y] (y, t) dy dt0

T

Page 53: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Bruno Dupire 53

The Geometry of Hedging

Page 54: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

• In practice, determining the best hedge is not sufficient

Need to measure of residual risk

2

2

2

2

2 1hedging beforerisk initial

hedgingafter risk remaining1

X

XX

X

XH

HH

eperformanc hedging of Measure

Page 55: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

:11and20for2

X

YH

hedgeable.not options Spread

hedgeable. optionsBasket

latilitysimilar vowith

,correlatedhighly &

.0:1 and If

.1:0or 1 If

2

2

YX

H

H

YX

X

Y

Page 56: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

H-Squared Parabola vs Cube

Page 57: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Skewness Products

• Negative Skewness: fat tail to the left• Linked to UP Dispersion < Down Dispersion

n

ni

n

njj

jT

i

iT

n

i

n

jj

jT

i

iT

S

S

S

S

n

S

S

S

S

n

12/ 12/ 00

2/

1

2/

1 00

2/

1 DispersionDown

2/

1 Dispersion Up

Some products are based onUp Dispersion – Down Dispersion

Page 58: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Hedge with Components

• Decorrelated Case

• Good hedge with risk reversals on the components

Page 59: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Hedge with Components

• Correlated Case

• No hedge with components

Page 60: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

BMW

Sample Mean of Best third

+

Sample Mean of Worst third

-2 x

Sample Mean of Middle third

Page 61: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Perfect Hedge for BMW, Correlation = 0% Short 6 Shares, Short 9 Puts at –K*, Long 9 Calls at K*

-3 -2 -1 0 1 2 3-6

-4

-2

0

2

4

6

Level

Pa

yo

ffComponent Hedge

Norm Cdf = 2/ 3

Norm Cdf = 1/ 3

K* = 0.4307

Page 62: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

BMW with 30 stocks , Correlation = 0 Hedge with Puts and Calls using 120 strikes

R-squared = 80.7%, MC runs = 10,000

-1.5 -1 -0.5 0 0.5 1-1

-0.5

0

0.5

1

1.5

Hedge

Ta

rge

t

Page 63: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

BMW with 30 stocks , Correlation = 40% Hedge with Puts and Calls using 120 skrikes

R-squared = 5.8%, MC runs = 10,000

-0.4 -0.3 -0.2 -0.1 0 0.1 0.2 0.3-0.8

-0.6

-0.4

-0.2

0

0.2

0.4

0.6

0.8

1

Hedge

Ta

rge

t

Page 64: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Analysis

• Correlation shifts the returns, which affects the components hedge but not the target

• In the absence of hedge, it is a mistake to price the product with a calibrated model

• Implied individual skewness is irrelevant !

• It is a wrong way to play implied versus realized skewness

Page 65: Functional Itô Calculus and Volatility Risk Management Bruno Dupire Bloomberg L.P/NYU AIMS Day 1 Cape Town, February 17, 2011.

Conclusion

• Itô calculus can be extended to functionals of price paths

• Price difference between 2 models can be computed

• We get a variational calculus on volatility surfaces

• It leads to a strike/maturity decomposition of the volatility risk of the full portfolio