Backward stochastic differential equation GudangMovies21 Rebahinxxi LK21

    A backward stochastic differential equation (BSDE) is a stochastic differential equation with a terminal condition in which the solution is required to be adapted with respect to an underlying filtration. BSDEs naturally arise in various applications such as stochastic control, mathematical finance, and nonlinear Feynman-Kac formula.


    Background


    Backward stochastic differential equations were introduced by Jean-Michel Bismut in 1973 in the linear case and by Étienne Pardoux and Shige Peng in 1990 in the nonlinear case.


    Mathematical framework


    Fix a terminal time



    T
    >
    0


    {\displaystyle T>0}

    and a probability space



    (
    Ω
    ,


    F


    ,

    P

    )


    {\displaystyle (\Omega ,{\mathcal {F}},\mathbb {P} )}

    . Let



    (

    B

    t



    )

    t

    [
    0
    ,
    T
    ]




    {\displaystyle (B_{t})_{t\in [0,T]}}

    be a Brownian motion with natural filtration



    (



    F



    t



    )

    t

    [
    0
    ,
    T
    ]




    {\displaystyle ({\mathcal {F}}_{t})_{t\in [0,T]}}

    . A backward stochastic differential equation is an integral equation of the type

    where



    f
    :
    [
    0
    ,
    T
    ]
    ×

    R

    ×

    R



    R



    {\displaystyle f:[0,T]\times \mathbb {R} \times \mathbb {R} \to \mathbb {R} }

    is called the generator of the BSDE, the terminal condition



    ξ


    {\displaystyle \xi }

    is an






    F



    T




    {\displaystyle {\mathcal {F}}_{T}}

    -measurable random variable, and the solution



    (

    Y

    t


    ,

    Z

    t



    )

    t

    [
    0
    ,
    T
    ]




    {\displaystyle (Y_{t},Z_{t})_{t\in [0,T]}}

    consists of stochastic processes



    (

    Y

    t



    )

    t

    [
    0
    ,
    T
    ]




    {\displaystyle (Y_{t})_{t\in [0,T]}}

    and



    (

    Z

    t



    )

    t

    [
    0
    ,
    T
    ]




    {\displaystyle (Z_{t})_{t\in [0,T]}}

    which are adapted to the filtration



    (



    F



    t



    )

    t

    [
    0
    ,
    T
    ]




    {\displaystyle ({\mathcal {F}}_{t})_{t\in [0,T]}}

    .


    = Example

    =
    In the case



    f

    0


    {\displaystyle f\equiv 0}

    , the BSDE (1) reduces to

    If



    ξ


    L

    2


    (
    Ω
    ,

    P

    )


    {\displaystyle \xi \in L^{2}(\Omega ,\mathbb {P} )}

    , then it follows from the martingale representation theorem, that there exists a unique stochastic process



    (

    Z

    t



    )

    t

    [
    0
    ,
    T
    ]




    {\displaystyle (Z_{t})_{t\in [0,T]}}

    such that




    Y

    t


    =

    E

    [
    ξ

    |




    F



    t


    ]


    {\displaystyle Y_{t}=\mathbb {E} [\xi |{\mathcal {F}}_{t}]}

    and




    Z

    t




    {\displaystyle Z_{t}}

    satisfy the BSDE (2).


    Numerical Method


    Deep backward stochastic differential equation method is a numerical method that combines deep learning with Backward stochastic differential equation (BSDE). This method is particularly useful for solving high-dimensional problems in financial mathematics problems. By leveraging the powerful function approximation capabilities of deep neural networks, deep BSDE addresses the computational challenges faced by traditional numerical methods in high-dimensional settings. Specifically, traditional methods like finite difference methods or Monte Carlo simulations often struggle with the curse of dimensionality, where computational cost increases exponentially with the number of dimensions. Deep BSDE methods, however, employ deep neural networks to approximate solutions of high-dimensional partial differential equations (PDEs), effectively reducing the computational burden.


    See also


    Martingale representation theorem
    Stochastic control
    Stochastic differential equation


    References




    Further reading


    Pardoux, Etienne; Rӑşcanu, Aurel (2014). Stochastic Differential Equations, Backward SDEs, Partial Differential Equations. Stochastic modeling and applied probability. Springer International Publishing Switzerland.
    Zhang, Jianfeng (2017). Backward stochastic differential equations. Probability theory and stochastic modeling. Springer New York, NY.

Kata Kunci Pencarian:

backward stochastic differential equationsbackward stochastic differential equations in financebackward stochastic differential equations from linear to fully nonlinear theorybackward stochastic differential equations pdfbackward stochastic differential equations zhangbackward stochastic differential equations with jumps and their actuarial and financial applicationsbackward stochastic differential equations and applications to optimal controlbackward stochastic differential equations and applicationsbackward stochastic differential equations in finance pdfbackward stochastic differential equation nonlinear expectation and their applications
Backward Stochastic Differential Equation | PDF | Stochastic ...

Backward Stochastic Differential Equation | PDF | Stochastic ...

(PDF) Adapted Solution of a Backward Stochastic Differential Equation

(PDF) Adapted Solution of a Backward Stochastic Differential Equation

(PDF) Anticipated Backward Stochastic Differential Equations

(PDF) Anticipated Backward Stochastic Differential Equations

(PDF) Backward stochastic differential equations and applications

(PDF) Backward stochastic differential equations and applications

(PDF) Fractional backward stochastic differential equations with ...

(PDF) Fractional backward stochastic differential equations with ...

Solved Consider the stochastic differential equation | Chegg.com

Solved Consider the stochastic differential equation | Chegg.com

(PDF) Forward-backward stochastic differential equations and ...

(PDF) Forward-backward stochastic differential equations and ...

Backward Stochastic Differential Equation in Finance | PDF

Backward Stochastic Differential Equation in Finance | PDF

(PDF) Backward-Forward Stochastic Differential Equations

(PDF) Backward-Forward Stochastic Differential Equations

(PDF) Simulations and calculations of stochastic differential equations ...

(PDF) Simulations and calculations of stochastic differential equations ...

(PDF) Backward Stochastic Differential Equations and Backward ...

(PDF) Backward Stochastic Differential Equations and Backward ...

Solved Consider the stochastic differential equation | Chegg.com

Solved Consider the stochastic differential equation | Chegg.com