Stable convergence of generalized L2 stochastic integrals and the principle of conditioning

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Abstract

We consider generalized adapted stochastic integrals with respect to independently scattered random measures with second moments, and use a decoupling technique, formulated as a “principle of conditioning”, to study their stable convergence towards mixtures of infinitely divisible distributions. The goal of this paper is to develop the theory. Our results apply, in particular, to Skorohod integrals on abstract Wiener spaces, and to multiple integrals with respect to independently scattered and finite variance random measures. The first application is discussed in some detail in the final section of the present work, and further extended in a companion paper (Peccati and Taqqu (2006b)). Applications to the stable convergence (in particular, central limit theorems) of multiple Wiener-Itô integrals with respect to independently scattered (and not necessarily Gaussian) random measures are developed in Peccati and Taqqu (2006a, 2007). The present work concludes with an example involving quadratic Brownian functionals. © 2007 Applied Probability Trust.

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Peccati, G., & Taqqu, M. S. (2007). Stable convergence of generalized L2 stochastic integrals and the principle of conditioning. Electronic Journal of Probability, 12, 447–480. https://doi.org/10.1214/EJP.v12-404

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