A class of globally solvable systems of BSDE and applications

Similar documents
Quadratic BSDE systems and applications

Equilibria in Incomplete Stochastic Continuous-time Markets:

Nonlinear representation, backward SDEs, and application to the Principal-Agent problem

On continuous time contract theory

Backward Stochastic Differential Equations with Infinite Time Horizon

Market environments, stability and equlibria

Non-Zero-Sum Stochastic Differential Games of Controls and St

Minimal Supersolutions of Backward Stochastic Differential Equations and Robust Hedging

Optimal Trade Execution with Instantaneous Price Impact and Stochastic Resilience

Backward martingale representation and endogenous completeness in finance

Weak solutions of mean-field stochastic differential equations

1 Brownian Local Time

BSDEs and PDEs with discontinuous coecients Applications to homogenization K. Bahlali, A. Elouain, E. Pardoux. Jena, March 2009

Random G -Expectations

Dynamic Risk Measures and Nonlinear Expectations with Markov Chain noise

Markov Chain BSDEs and risk averse networks

Sensitivity analysis of the expected utility maximization problem with respect to model perturbations

Uniformly Uniformly-ergodic Markov chains and BSDEs

On semilinear elliptic equations with measure data

I forgot to mention last time: in the Ito formula for two standard processes, putting

A new approach for investment performance measurement. 3rd WCMF, Santa Barbara November 2009

On the Multi-Dimensional Controller and Stopper Games

MA8109 Stochastic Processes in Systems Theory Autumn 2013

Mathematical Methods for Neurosciences. ENS - Master MVA Paris 6 - Master Maths-Bio ( )

Stochastic optimal control with rough paths

On a class of stochastic differential equations in a financial network model

Exercises. T 2T. e ita φ(t)dt.

On the dual problem of utility maximization

p 1 ( Y p dp) 1/p ( X p dp) 1 1 p

ON THE POLICY IMPROVEMENT ALGORITHM IN CONTINUOUS TIME

An Introduction to Backward Stochastic Differential Equations (BSDEs) PIMS Summer School 2016 in Mathematical Finance.

The concentration of a drug in blood. Exponential decay. Different realizations. Exponential decay with noise. dc(t) dt.

Skorokhod Embeddings In Bounded Time

Numerical scheme for quadratic BSDEs and Dynamic Risk Measures

On the submartingale / supermartingale property of diffusions in natural scale

c 2004 Society for Industrial and Applied Mathematics

Controlled Diffusions and Hamilton-Jacobi Bellman Equations

Control and Observation for Stochastic Partial Differential Equations

Approximation of BSDEs using least-squares regression and Malliavin weights

of space-time diffusions

NO ARBITRAGE IN CONTINUOUS FINANCIAL MARKETS

An Introduction to Moral Hazard in Continuous Time

Mean-Field optimization problems and non-anticipative optimal transport. Beatrice Acciaio

(2) E exp 2 M, M t < t [0, ) guarantees that Z is a martingale. Kazamaki [27] showed that Z is a martingale provided

Asymptotic Perron Method for Stochastic Games and Control

Multi-dimensional Stochastic Singular Control Via Dynkin Game and Dirichlet Form

Introduction to Random Diffusions

1. Stochastic Process

Stochastic Volatility and Correction to the Heat Equation

A Barrier Version of the Russian Option

The Pedestrian s Guide to Local Time

Information and Credit Risk

EXPLOSIONS AND ARBITRAGE IOANNIS KARATZAS. Joint work with Daniel FERNHOLZ and Johannes RUF. Talk at the University of Michigan

Dynamic programming approach to Principal-Agent problems

On the martingales obtained by an extension due to Saisho, Tanemura and Yor of Pitman s theorem

Mean-field SDE driven by a fractional BM. A related stochastic control problem

UNCERTAINTY FUNCTIONAL DIFFERENTIAL EQUATIONS FOR FINANCE

Homogenization with stochastic differential equations

The Azéma-Yor Embedding in Non-Singular Diffusions

Brownian Motion on Manifold

Stochastic calculus without probability: Pathwise integration and functional calculus for functionals of paths with arbitrary Hölder regularity

Stochastic differential equation models in biology Susanne Ditlevsen

Memory and hypoellipticity in neuronal models

arxiv:math/ v1 [math.pr] 13 Feb 2007

Exact Simulation of Multivariate Itô Diffusions

American Game Options and Reected BSDEs with Quadratic Growth

SEPARABLE TERM STRUCTURES AND THE MAXIMAL DEGREE PROBLEM. 1. Introduction This paper discusses arbitrage-free separable term structure (STS) models

A MODEL FOR THE LONG-TERM OPTIMAL CAPACITY LEVEL OF AN INVESTMENT PROJECT

Quasi-invariant measures on the path space of a diffusion

Bridging the Gap between Center and Tail for Multiscale Processes

Mean-Field Games with non-convex Hamiltonian

Choquet Integral and Its Applications: A Survey

Kolmogorov Equations and Markov Processes

Question 1. The correct answers are: (a) (2) (b) (1) (c) (2) (d) (3) (e) (2) (f) (1) (g) (2) (h) (1)

Geometric projection of stochastic differential equations

Convex polytopes, interacting particles, spin glasses, and finance

Bessel-like SPDEs. Lorenzo Zambotti, Sorbonne Université (joint work with Henri Elad-Altman) 15th May 2018, Luminy

Theoretical Tutorial Session 2

Some SDEs with distributional drift Part I : General calculus. Flandoli, Franco; Russo, Francesco; Wolf, Jochen

Exercises in stochastic analysis

Continuous dependence estimates for the ergodic problem with an application to homogenization

Loss of regularity for Kolmogorov equations

Pathwise volatility in a long-memory pricing model: estimation and asymptotic behavior

IOANNIS KARATZAS Mathematics and Statistics Departments Columbia University

ALEKSANDAR MIJATOVIĆ AND MIKHAIL URUSOV

Infinite-dimensional methods for path-dependent equations

Strong Solutions and a Bismut-Elworthy-Li Formula for Mean-F. Formula for Mean-Field SDE s with Irregular Drift

Convergence to equilibrium for rough differential equations

An Introduction to Malliavin calculus and its applications

Brownian Motion. 1 Definition Brownian Motion Wiener measure... 3

Partial Differential Equations with Applications to Finance Seminar 1: Proving and applying Dynkin s formula

Mean-Field optimization problems and non-anticipative optimal transport. Beatrice Acciaio

ON THE FIRST TIME THAT AN ITO PROCESS HITS A BARRIER

EQUITY MARKET STABILITY

1. Stochastic Processes and filtrations

The Uses of Differential Geometry in Finance

Dynamical systems with Gaussian and Levy noise: analytical and stochastic approaches

Simulation Method for Solving Stochastic Differential Equations with Constant Diffusion Coefficients

A Model of Optimal Portfolio Selection under. Liquidity Risk and Price Impact

Stochastic Areas and Applications in Risk Theory

Transcription:

A class of globally solvable systems of BSDE and applications Gordan Žitković Department of Mathematics The University of Texas at Austin Thera Stochastics - Wednesday, May 31st, 2017 joint work with Hao Xing, London School of Economics.

(Forward) SDE The equation: X 0 = x, dx t = µ(x t ) dt + σ(x t ) db t, t [0, T]. Causality principle(s): X t = F(t, {B s } s [0,t] ) (strong) {X s } s [0,t] {B s B t } s [t,t] (weak) Solution by simulation (Euler scheme): 1) X 0 = x, 2) X t+ t X t + µ(x t ) t + σ(x t ) ζ, where we draw ζ = B t+ t B t from N(0, t). 2/18

BSDE are not backward SDE The equation: dx t = µ(x t ) dt + σ(x t ) db t, t [0, T], X T = ξ. Backwards solution by simulation: 1) X T = ξ, 2) X t t X t µ(x t t ) t σ(x t t )(B t B t t ) The solution is no longer defined, or, at best, no longer adapted: e.g., if dx t = db t, X T = 0 then X t = B t B T. Fix: to restore adaptivity, make Z t = σ(x t ) a part of the solution dx t = µ(x t ) dt + Z t db t, X T = ξ. MRT: for µ 0 we get the martingale representation problem: dx t = Z t db t, X T = ξ. 3/18

Backward SDE A change of notation: dy t = f (Y t, Z t ) dt + Z t db t, t [0, T], Y T = ξ. A solution is a pair (Y, Z). The function f is called the driver. Time- and uncertainty-dependence is often added: dy t = f (t, ω, Y t, Z t ) dt + Z t db t, t [0, T], Y T = ξ(ω), and the ω-dependence factored through a (forward) diffusion X 0 = x, dx t = µ(t, X t ) dt + σ(t, X t ) db t dy t = f (t, X t, Y t, Z t ) dt + Z t db t, Y T = g(x t ). 4/18

Existing theory - dimension 1 Linear: Bismut 73, (or even Wentzel, Kunita-Watanabe or Itô) Lipschitz: Pardoux-Peng 90 Linear-growth: Lepeltier-San Martin 97 With reflection: El Karoui et al 95, Cvitanić-Karatzas 96 Constrained: Buckdahn-Hu 98, Cvitanić-Karatzas-Soner 98 Quadratic: Kobylanski 00 Superquadratic: Delbaen-Hu-Bao 11 - mostly negative 5/18

Existing theory - systems Lipschitz drivers: Pardoux-Peng 90 Smallness: Tevzadze 08 Quadratic global existence: Peng 99 - open problem Non-existence: Frei - dos Reis 11 Quadratic global existence - special cases: Tan 03, Jamneshan-Kupper-Luo 14, Cheridito-Nam 15, Hu-Tang 15 6/18

A PDE connection A single equation: under regularity conditions, the pair (Y, Z) is a Markovian solution, i.e., Y = v(t, B t ), to dy t = f (Y t, Z t ) dt + Z t db t, Y T = g(b T ) if and only if v is a viscosity solution to v t + 1 2 v + f (v, Dv) = 0, v(t, ) = g. Systems: no such characterization ( if direction when the PDE system admits a smooth solution). no maximum principle no notion of a viscosity solution. 7/18

The approach of Kobylanski Approximation: approximate both the driver f and the terminal condition g by Lipschitz functions; ensure monotonicity. Monotone convergence: use the comparison (maximum) principle to get monotonicity of solutions BMO-bounds: use the quadratic growth of f to get uniform bounds on the approximations to Z; exponential transforms H α t = exp(αy t ) is a submartingale for large enough α, since dh α t = αh α t Z t db t + αh α t ( 1 2 αz2 t f (Y t, Z t )) dt Unfortunately: this will not work for systems for two reasons: 1. There is no comparison principle for systems 2. The exponential transform no longer works. 8/18

Our Setup The driving diffusion: let X be a uniformly-elliptic inhomogeneous diffusion on R d with (globally) Lipschitz and bounded coefficients. Markovian solutions: a pair v : [0, T] R d R N, w : [0, T] R N d of Borel functions such that Y := v(, X) is a continuous semimartingale, and T T g(x T ) = Y t f (s, X s, Y s, Z s ) ds + Z s db s, t t where Z := w(, X). Variants: bounded or (locally) Hölderian solutions (when v has that property) or a bmo-solution (when w(t, X t ) is in bmo). 9/18

A substitute for the exponential transform Set z, z a(t,x) = za(t, x)z T, where a = σσ T (double the coefficient matrix for the second-order part of the generator of X): Definition: Given a constant c > 0, a function h C 2 (R N ) is called a c-lyapunuov function for f if h(0) = 0, Dh(0) = 0, and there exists a constant k such that 1 2 D2 h(y) : z, z a(t,x) Dh(y)f (t, x, y, z) z 2 k (1) for all (t, x, y, z) [0, T] R d R N R N d, with y c. Intuitively: h(y t )+kt must be a very strict submartingale, whenever Y is a solution. As mentioned before, for N = 1, h(y) = e αy, for large-enough α. 10/18

The main result Theorem. Let X be a uniformly elliptic diffusion with bounded, Lipschitz coefficients, and f be a continuous driver of (at-most) quadratic growth in z. Suppose that there exits a constant c > 0 such that g is bounded and in C α, f admits a c-lyapunov function, and Y is a-priori bounded by c. Then the BSDE system dy t = f (t, X t, Y t, Z t ) dt + Z t db t, Y T = g(b T ), has a Hölderian solution (v, w), with Z db a BMO-martingale and w = Dv, in the distributional sense on (0, T) R d. This solution is, moreover, unique in the class of all Markovian solutions if f is y-independent and f (t, x, z 2 ) f (t, x, z 1 ) C( z 1 + z 2 ) z 2 z 1. 11/18

A peek into the Proof (t 0, x 0 + 2R) (t 0 + 4R 2, x 0 + 2R) (t 0 δr 2, x 0 ) (t 0, x 0 ) red Dv 2 C blue Dv 2 + R 2α We use the hole filling method (Widman 76) and its variants (Struwe 81, Bensoussan-Frehse, 02) - and apply it to get Campanato (and therefore Hölder) a-priori estimates. 12/18

The Bensoussan-Frehse (BF) condition Proposition. If f admits a decomposition f (t, x, y, z) = diag(z l(t, x, y, z))+q(t, x, y, z)+s(t, x, y, z)+k(t, x), with l(t, x, y, z) C(1 + z ), q i (t, x, y, z) C ( 1 + i j=1 z j 2 ), (quadratic-linear) (quadratic-triangular) κ(z) s(t, x, y, z) κ( z ), lim = 0, (subquadratic) z z 2 k L ([0, T] R d ), (z-independent), Then a c-lyapunov function exists for each c > 0. Extensions: an approximate decomposition will do, as well. To the best of our knowledge, all systems solved in the literature satisfy the (BF) condition (in z-dependence). 13/18

Stochastic Equilibria in Incomplete Markets Setup: {F t } t [0,T] generated by two independent BMs B and W Price: ds λ t = λ t dt + σ t db t + 0 dw t ( WLOG σ t 1! ) Agents: U i (x) = exp( x/δ i ), E i L 0 (F T ), i = 1,..., I [ ( Demand: ˆπ λ,i := argmax π A λ E U i T 0 π u ds λ u + E )]. i Goal: Is there an equilibrium market price of risk λ, i.e., does there exist a process λ such that the clearing conditions I i=1 ˆπλ,i = 0 hold? 14/18

Stochastic Equilibria in Incomplete Markets A characterization: Kardaras, Xing and Ž, 15, give the following characterization: a process λ bmo is an equilibrium market price of risk if and only if it admits a representation of the form A[µ] := N α i µ i, for some solution (µ, ν, Y) bmo bmo S of ( ) dyt i = µ i t db t + νt i dw t + 1 2 (νi t) 2 1 2 A[µ]2 t + A[µ]µ i t dt, YT i = G i, i = 1,..., I, where α i = δ i /( j δj ), G i = E i /δ i. i=1 Theorem (Xing, Ž.) If there exists a regular enough function g and a diffusion X such that G i = g i (X T ), for all i, then a stochastic equilibrium exists and is unique in the class of Markovian solutions. 15/18

Martingales on Manifolds Γ-martingales: Let M be an N-dimensional differentiable manifold endowed with an affine connection Γ. A continuous semimartingale Y on M is called a Γ-martingale if f (Y t ) 1 2 t 0 Hess f (dy s, dy s ), t [0, T], is a local martingale for each smooth f : M R, where (Hess f ) ij (y) = D ij f (y) N k=1 Γk ij (y)d kf (y). A coordinate representation: By Itô s formula, Y is a Γ-martingale if and only if its coordinate representation has the following form dy k t = f k (Y t, Z t ) dt + Z k t dw t where f k (y, z) = 1 2 d i,j=1 Γk ij (y)(zi ) z j. 16/18

Martingales on Manifolds A Problem: Given an N-dimensional Brownian motion B and an M-valued random variable ξ, construct a Γ-martingale Y with Y T = ξ. Solution: Easy in the Euclidean case - we filter Y t = E[ξ F t ]. In general, solution may not exist. Under various conditions, such processes were constructed by Darling 95 and Blache 05, 06. Our contribution: Taken together, the existence of a Lyapunov function and a-priori boundedness are (essentially) equivalent to the existence of a so-called doubly-convex function h on a neighborhood of a support of ξ. Conversely, this sheds new light on the meaning of c-lyapunov functions: loosely speaking - they play the role of convex functions, but in the geometry dictated by f. 17/18

Sretan rođendan, Yannis! 18/18