Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures...

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Multivariate comonotonicity, stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations with: A. Charpentier (Rennes) G. Carlier (Dauphine) R.-A. Dana (Dauphine) I. Ekeland (Dauphine) M. Henry (MontrØal)

Transcript of Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures...

Page 1: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

Multivariate comonotonicity,stochastic orders and risk

measures

Alfred Galichon(Ecole polytechnique)

Brussels, May 25, 2012

Based on collaborations with:�A. Charpentier (Rennes) �G. Carlier (Dauphine)�R.-A. Dana (Dauphine) � I. Ekeland (Dauphine)

�M. Henry (Montréal)

Page 2: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

This talk will draw on four papers:

[CDG]. �Pareto e¢ ciency for the concave order and mul-tivariate comonotonicity�. Guillaume Carlier, Alfred Gali-chon and Rose-Anne Dana. Journal of Economic Theory,2012.

[CGH] �"Local Utility and Multivariate Risk Aversion�.Arthur Charpentier, Alfred Galichon and Marc Henry.Mimeo.

[GH] �Dual Theory of Choice under Multivariate Risks�.Alfred Galichon and Marc Henry. Journal of EconomicTheory, forthcoming.

[EGH] �Comonotonic measures of multivariate risks�. IvarEkeland, Alfred Galichon and Marc Henry. MathematicalFinance, 2011.

Page 3: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

Introduction

Comonotonicity is a central tool in decision theory, insur-ance and �nance.

Two random variables are « comonotone » when they aremaximally correlated, i.e. when there is a nondecreasingmap from one to another. Applications include risk mea-sures, e¢ cient risk-sharing, optimal insurance contracts,etc.

Unfortunately, no straightforward extension to the multi-variate case (i.e. when there are several numeraires).

The goal of this presentation is to investigate what hap-pens in the multivariate case, when there are several di-mension of risk. Applications will be given to:�Risk measures, and their aggregation�E¢ cient risk-sharing�Stochastic ordering.

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1 Comonotonicity and its general-

ization

1.1 One-dimensional case

Two random variables X and Y are comonotone if thereexists a r.v. Z and nondecreasing maps TX and TY suchthat

X = TX (Z) and Y = TY (Z) :

For example, if X and Y are sampled from empiricaldistributions, X (!i) = xi and Y (!i) = yi, i = 1; :::; nwhere

x1 � ::: � xn and y1 � ::: � yn

then X and Y are comonotonic.

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By the rearrangement inequality (Hardy-Littlewood),

max� permutation

nXi=1

xiy�(i) =nXi=1

xiyi:

More generally, X and Y are comonotonic if and only if

max~Y=dY

EhX ~Y

i= E [XY ] :

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Example. Consider

! !1 !2P (!) 1=2 1=2

X (!) +1 �1Y (!) +2 �2~Y (!) �2 +2

X and Y are comonotone.

~Y has the same distribution as Y but is not comonotonewith X.

One has

E [XY ] = 2 > �2 = EhX ~Y

i:

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Hardy-Littlewood inequality. The probability space isnow [0; 1]. Assume U (t) = � (t), where � is nonde-creasing.

Let P a probability distribution, and let

X (t) = F�1P (t):

For ~X : [0; 1]! R a r.v. such that ~X � P , one has

E [XU ] =Z 10�(t)F�1P (t)dt � E

h~XU

i:

Thus, letting

%(X) =Z 10�(t)F�1X (t)dt = max

nE[ ~XU ]; ~X =d X

o= max

nE[X ~U ]; ~U =d U

o:

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A geometric characterization. Let � be an absolutelycontinuous distribution; two random variables X and Yare comonotone if for some random variable U � �, wehave

U 2 argmax ~U

nE[X ~U ]; ~U � �

o, and

U 2 argmax ~U

nE[Y ~U ]; ~U � �

o:

Geometrically, this means that X and Y have the sameprojection of the equidistribution class of �=set of r.v.with distribution �.

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1.2 Multivariate generalization

Problem: what can be done for risks which are multidi-mensional, and which are not perfect substitutes?

Why? risk usually has several dimension (price/liquidity;multicurrency portfolio; environmental/�nancial risk, etc).

Concepts used in the univariate case do not directly ex-tend to the multivariate case.

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The variational characterization given above will be thebasis for the generalized notion of comonotonicity givenin [EGH].

De�nition (�-comonotonicity). Let � be an atomlessprobability measure on Rd. Two random vectors X andY in L2d are called �-comonotonic if for some randomvector U � �, we have

U 2 argmax ~U

nE[X � ~U ]; ~U � �

o, and

U 2 argmax ~U

nE[Y � ~U ]; ~U � �

oequivalentely:

X and Y are �-comonotonic if there exists two convexfunctions V1 and V2 and a random variable U � � suchthat

X = rV1 (U)Y = rV2 (U) :

Note that in dimension 1, this de�nition is consistent withthe previous one.

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Monge-Kantorovich problem and Brenier theorem

Let � and P be two probability measures on Rd withsecond moments, such that � is absolutely continuous.Then

supU��;X�P

E [hU;Xi]

where the supremum is over all the couplings of � and P ifattained for a coupling such that one has X = rV (U)almost surely, where V is a convex function Rd ! Rwhich happens to be the solution of the dual Kantorovichproblem

infV (u)+W (x)�hx;ui

ZV (u) d� (u) +

ZW (x) dP (x) :

Call QP (u) = rV (u) the �-quantile of distribution P .

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Comonotonicity and transitivity.

Puccetti and Scarsini (2010) propose the following de�n-ition of comonotonicity, called c-comonotonicity: X andY are c-comonotone if and only if

Y 2 argmax ~YnE[X � ~Y ]; ~Y � Y

oor, equivalently, i¤ there exists a convex function u suchthat

Y 2 @u (X)

that is, whenever u is di¤erentiabe at X,

Y = ru (X) :

However, this de�nition is not transitive: if X and Y arec-comonotone and Y and Z are c-comonotone, and if thedistributions of X, Y and Z are absolutely continuous,then X and Z are not necessarily c-comonotome.

This transivity (true in dimension one) may however beseen as desirable.

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In the case of �-comonotonicity, transitivity holds: if Xand Y are �-comonotone and Y and Z are �-comonotone,and if the distributions ofX, Y and Z are absolutely con-tinuous, then X and Z are �-comonotome.

Indeed, express �-comonotonicity of X and Y : for someU � �,

X = rV1 (U)Y = rV2 (U)

and by �-comonotonicity of Y and Z, for some ~U � �,

Y = rV2�~U�

Z = rV3�~U�

this implies ~U = U , and therefore X and Z are �-comonotone.

Page 14: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

Importance of �. In dimension one, one recovers theclassical notion of comotonicity regardless of the choice of�. However, in dimension greater than one, the comonotonic-ity relation crucially depends on the baseline distribution�, unlike in dimension one. The following lemma from[EGH] makes this precise:

Lemma. Let � and � be atomless probability measureson Rd. Then:- In dimension d = 1, �-comonotonicity always implies�-comonotonicity.- In dimension d � 2, �-comonotonicity implies �-comonotonicityif and only if � = T#� for some location-scale transformT (u) = �u + u0 where � > 0 and u0 2 Rd. In otherwords, comonotonicity is an invariant of the location-scale family classes.

Page 15: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

2 Applications to risk measures

2.1 Coherent, regular risk measures (uni-

variate case)

Following Artzner, Delbaen, Eber, and Heath, recall theclassical risk measures axioms:

Recall axioms:De�nition. A functional % : L2d ! R is called a coherentrisk measure if it satis�es the following properties:- Monotonicity (MON): X � Y ) %(X) � %(Y )- Translation invariance (TI): %(X+m) = %(X)+m%(1)- Convexity (CO): %(�X + (1� �)Y ) � �%(X) + (1��)%(Y ) for all � 2 (0; 1).- Positive homogeneity (PH): %(�X) = �%(X) for all� � 0.

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De�nition. % : L2 ! R is called a regular risk measureif it satis�es:- Law invariance (LI): %(X) = %( ~X) when X � ~X.- Comonotonic additivity (CA): %(X + Y ) = %(X) +

%(Y ) when X;Y are comonotonic, i.e. weakly increasingtransformation of a third randon variable: X = �1 (U)

and Y = �2 (U) a.s. for �1 and �2 nondecreasing.

Result (Kusuoka, 2001). A coherent risk measure % isregular if and only if for some increasing and nonnegativefunction � on [0; 1], we have

%(X) :=Z 10�(t)F�1X (t)dt;

where FX denotes the cumulative distribution functionsof the random variable X (thus QX (t) = F

�1X (t) is the

associated quantile).

% is called a Spectral risk measure. For reasons explainedlater, also called Maximal correlation risk measure.

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Leading example: Expected shortfall (also called Con-ditional VaR or TailVaR): �(t) = 1

1��1ft��g: Then

%(X) :=1

1� �

Z 1�F�1X (t)dt:

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Kusuoka�s result, intuition.

� Law invariance ) %(X) = ��F�1X

� Comonotone additivity+positive homogeneity ) �

is linear w.r.t. F�1X :��F�1X

�=R 10 �(t)F

�1X (t)dt.

� Monotonicity ) � is nonnegative

� Subadditivity ) � is increasing

Unfortunately, this setting does not extend readily to mul-tivariate risks. We shall need to reformulate our axioms ina way that will lend itself to easier multivariate extension.

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2.2 Alternative set of axioms

Manager supervising several N business units with riskX1; :::; XN .Eg. investments portfolio of a fund of funds. Trueeconomic risk of the fund X1 + :::+XN .

Business units: portfolio of (contingent) losses Xi reporta summary of the risk %(Xi) to management.

Manager has limited information:1) does not know what is the correlation of risks - andmore broadly, the dependence structure, or copula be-tween X1; :::; XN . Maybe all the hedge funds in theportfolio have the same risky exposure; maybe they haveindependent risks; or maybe something inbetween.

2) aggregates risk by summation: reports %(X1) + :::+%(XN) to shareholders.

Page 20: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

Reported risk: %(X1)+:::+%(XN); true risk: %(X1+:::+XN).

Requirement: management does not understate risk toshareholders. Summarized by

%(X1) + :::+ %(XN) � %( ~X1 + :::+ ~XN) (*)

whatever the joint dependence (X1; :::; XN) 2 (L1d )2.

But no need to be overconservative:

%(X1)+:::+%(XN) = sup~X1�X1;:::; ~XN�XN

%(X1+:::+XN)

where � denotes equality in distribution.

De�nition. A functional % : L2d ! R is called a stronglycoherent risk measure if it is convex continuous and forall (Xi)i�N 2

�L2d�N,

%(X1)+:::+%(XN) = supn%( ~X1 + :::+ ~XN) : ~Xi � Xi

o:

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A representation result.

The following result is given in [EGH].

Theorem. The following propositions about the func-tional % on L2d are equivalent:(i) % is a strongly coherent risk measure;(ii) % is a max correlation risk measure, namely thereexists U 2 L2d, such that for all X 2 L2d,

%(X) = supnE[U � ~X] : ~X � X

o;

(iii) There exists a convex function V : Rd ! R suchthat%(X) = E[U � rV (U)]

Page 22: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

Idea of the proof . One has %(X)+�%(Y ) = supn%(X + � ~Y ) : ~Y � Y

o.

But %(X + � ~Y ) = %(X) + �D%X( ~Y ) + o (�)

By the Riesz theorem (vector case)D%X( ~Y ) = EhmX : ~Y

i,

thus

%(X)+�%(Y ) = supn%(X) + �E

hmX : ~Y

i+ o (�) : ~Y � Y

othus

%(Y ) = supnEhmX : ~Y

i: ~Y � Y

otherefore % is a maximum correlation measure.

Page 23: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

3 Application to e¢ cient risk-sharing

Consider a risky payo¤ X (for now, univariate) to beshared between 2 agents 1 and 2, so that in each contin-gent state:

X = X1 +X2

X1 and X2 are said to form an allocation of X.

Agents are risk averse in the sense of stochastic domi-nance: Y is preferred to X if every risk-averse expectedutility decision maker prefers Y to X:

X �cv Y i¤ E[u(X)] � E[u(Y )] for all concave u

Agents are said to have concave order preferences. Theseare incomplete preferences: it can be impossible to rankX and Y.

Page 24: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

One wonders what is the set of e¢ cient allocations, i.e.allocations that are not dominated w.r.t. the concaveorder for every agent.

Dominated allocations. Consider a random variable X(aggregate risk). An allocation of X among p agents isa set of random variables (Y1; :::; Yp) such thatX

i

Yi = X:

Given two allocations of X, Allocation (Yi) dominatesallocation (Xi) whenever

E

24Xi

ui (Yi)

35 � E24Xi

ui (Xi)

35for every continuous concave functions u1; :::; up. Thedomination is strict if the previous inequality is strictwhenever the ui�s are strictly concave.

Comonotone allocations. In the single-good case, it isintuitive that e¢ cient sharing rules should be such that in

Page 25: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

�better�states of the world, every agent should be betterof than in �worse� state of the world � otherwise therewould be some mutually agreeable transfer.

This leads to the concept of comonotone allocations. Theprecise connection with stochastic dominance is due toLandsberger and Meilijson (1994). Comonotonicity hasreceived a lot of attention in recent years in decision the-ory, insurance, risk management, contract theory, etc.(Landsberger and Meilijson, Ruschendorf, Dana, Jouiniand Napp...).

Theorem (Landsberger and Meilijson). Any allocationof X is dominated by a comonotone allocation. More-over, this dominance can be made strict unless X is al-ready comonotone. Hence the set of e¢ cient allocationsof X coincides with the set of comonotone allocations.

This result generalizes well to the multivariate case. Upto technicalities (see [CDG] for precise statement), ef-�cient allocations of a random vector X is the set of

Page 26: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

�-comonotone allocations of X, hence (Xi) solves

Xi = rui (U)Xi

Xi = X

for convex functions ui : Rd ! R, with U � �. Hence

X = ru (U)

with u =Pi ui. That is

U = ru� (X) ;

hence e¢ cient allocations are such that

Xi = rui � ru� (X) :

This result opens the way to the investigation of testableimplication of e¢ ciency in risk-sharing in an risky endow-ment economy.

Page 27: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

4 Application to stochastic orders

Quiggin (1992) shows that the notion of monotone meanpreserving increases in risk (hereafter MMPIR) is theweakest stochastic ordering that achieves a coherent rank-ing of risk aversion in the rank dependent utility frame-work. MMPIR is the mean preserving version of Bickel-Lehmann dispersion, which we now de�ne.

De�nition. Let QX and QY be the quantile functionsof the random variables X and Y . X is said to beBickel-Lehmann less dispersed, denoted X %BL Y , ifQY (u) � QX(u) is a nondecreasing function of u on(0; 1). The mean preserving version is called monotonemean preserving increase in risk (MMPIR) and denoted-MMPIR.

MMPIR is a stronger ordering than concave ordering inthe sense that X %MMPIR Y implies X %cv Y .

Page 28: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

The following result is from Landsberger and Meilijson(1994):

Proposition (Landsberger and Meilijson). A randomvariableX has Bickel-Lehmann less dispersed distributionthan a random variable Y if and only i¤ there exists Zcomonotonic with X such that Y =d X + Z.

The concept of �-comonotonicity allows to generalize thisnotion to the multivariate case as done in [CGH].

De�nition. A random vectorX is called �-Bickel-Lehmannless dispersed than a random vector Y , denotedX %�BLY , if there exists a convex function V : Rd ! R suchthat the �-quantiles QX and QY of X and Y satisfyQY (u)�QX(u) = rV (u) for �-almost all u 2 [0; 1]d.

As de�ned above, �-Bickel-Lehmann dispersion de�nes atransitive binary relation, and therefore an order. Indeed,ifX %�BL Y and Y %�BL Z, thenQY (u)�QX(u) =

Page 29: Multivariate comonotonicity, stochastic orders and risk ... · stochastic orders and risk measures Alfred Galichon (Ecole polytechnique) Brussels, May 25, 2012 Based on collaborations

rV (u) and QZ(u) � QY (u) = rW (u). Therefore,QZ(u)�QX(u) = r(V (u)+W (u)) so that X %�BLZ. When d = 1, this de�nition simpli�es to the classicalde�nition.

[CGH] propose the following generalization of the Landsberger-Meilijson characterization .

Theorem. A random vector X is �-Bickel-Lehmann lessdispersed than a random vector Y if and only if thereexists a random vector Z such that:

(i) X and Z are �-comonotonic, and

(ii) Y =d X + Z.

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Conclusion

We have introduced a new concept to generalize comonotonic-ity to higher dimension: ��-comonotonicity�. This con-cept is based on Optimal Transport theory and boils downto classical comonotonicity in the univariate case.

We have used this concept to generalize the classical ax-ioms of risk measures to the multivariate case.

We have extended existing results on equivalence betweene¢ ciency of risk-sharing and �-comonotonicity.

We have extended existing reults on functions increasingwith respect to the Bickel-Lehman order.

Interesting questions for future research: behavioural in-terpretation of mu? computational issues? empiricaltestability? case of heterogenous beliefs?