284 research outputs found

    An invariance principle for stochastic series I. Gaussian limits

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    We study invariance principles and convergence to a Gaussian limit for stochastic series of the form S(c,Z)=∑m=1∞∑α1<...<αmc(α1,...,αm)∏i=1mZαiS(c,Z)=\sum_{m=1}^{\infty }\sum_{\alpha _{1}<...<\alpha _{m}}c(\alpha _{1},...,\alpha _{m})\prod_{i=1}^{m}Z_{\alpha _{i}} where ZkZ_{k}, k∈Nk\in \mathbb{N}, is a sequence of centred independent random variables of unit variance. In the case when the ZkZ_{k}'s are Gaussian, S(c,Z)S(c,Z) is an element of the Wiener chaos and convergence to a Gaussian limit (so the corresponding nonlinear CLT) has been intensively studied by Nualart, Peccati, Nourdin and several other authors. The invariance principle consists in taking ZkZ_{k} with a general law. It has also been considered in the literature, starting from the seminal papers of Jong, and a variety of applications including UU-statistics are of interest. Our main contribution is to study the convergence in total variation distance and to give estimates of the error

    Positivity and lower bounds for the density of Wiener functionals

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    We consider a functional on the Wiener space which is smooth and not degenerated in Malliavin sense and we give a criterion of strict positivity of the density. We also give lower bounds for the density. These results are based on the representation of the density by means of the Riesz transform introduced by Malliavin and Thalmaier and on the estimates of the Riesz transform given Bally and Caramellino

    Regularity of probability laws by using an interpolation method

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    We study the problem of the existence and regularity of a probability density in an abstract framework based on a "balancing" with approximating absolutely continuous laws. Typically, the absolutely continuous property for the approximating laws can be proved by standard techniques from Malliavin calculus whereas for the law of interest no Malliavin integration by parts formulas are available. Our results are strongly based on the use of suitable Hermite polynomial series expansions and can be merged into the theory of interpolation spaces. We then apply the results to the solution to a stochastic differential equation with a local H\"ormander condition or to the solution to the stochastic heat equation, in both cases under weak conditions on the coefficients relaxing the standard Lipschitz or H\"older continuity requests

    Large deviation estimates of the crossing probability for pinned Gaussian processes

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    The paper deals with the asymptotic behavior of the bridge of a Gaussian process conditioned to stay in nn fixed points at nn fixed past instants. In particular, functional large deviation results are stated for small time. Several examples are considered: integrated or not fractional Brownian motion, mm-fold integrated Brownian motion. As an application, the asymptotic behavior of the exit probability is studied and used for the practical purpose of the numerical computation, via Monte Carlo methods, of the hitting probability up to a given time.Comment: 33 pages. Keywords: conditioned Gaussian processes; reproducing kernel Hilbert spaces; large deviations; exit time probabilities; Monte Carlo method

    On the distance between probability density functions

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    We give estimates of the distance between the densities of the laws of two functionals FF and GG on the Wiener space in terms of the Malliavin-Sobolev norm of F−G.F-G. We actually consider a more general framework which allows one to treat with similar (Malliavin type) methods functionals of a Poisson point measure (solutions of jump type stochastic equations). We use the above estimates in order to obtain a criterion which ensures that convergence in distribution implies convergence in total variation distance; in particular, if the functionals at hand are absolutely continuous, this implies convergence in L1L^{1} of the densities

    A hybrid approach for the implementation of the Heston model

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    We propose a hybrid tree-finite difference method in order to approximate the Heston model. We prove the convergence by embedding the procedure in a bivariate Markov chain and we study the convergence of European and American option prices. We finally provide numerical experiments that give accurate option prices in the Heston model, showing the reliability and the efficiency of the algorithm

    Regularity of Wiener functionals under a H\"ormander type condition of order one

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    We study the local existence and regularity of the density of the law of a functional on the Wiener space which satisfies a criterion that generalizes the H\"ormander condition of order one (that is, involving the first order Lie brackets) for diffusion processes
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