A mild Girsanov formula
Giuseppe Da Prato, Enrico Priola, Luciano Tubaro

TL;DR
This paper derives a Girsanov-type formula for a class of stochastic partial differential equations on Hilbert spaces, enabling explicit analysis of their laws and invariant measures, especially under dissipative conditions.
Contribution
It introduces a novel Girsanov formula for nonlinear transformations of Gaussian measures associated with SPDEs, extending existing methods to infinite-dimensional settings.
Findings
Derived an explicit Girsanov formula for SPDEs with dissipative drift.
Provided a formula for the law of the stationary process and invariant measure.
Discussed extensions to colored noise scenarios.
Abstract
We consider a well posed SPDE on a separable Hilbert space , where is self-adjoint, negative and such that is of trace class for some , is Lipschitz continuous and is a cylindrical Wiener process on . We denote by the stochastic convolution. We prove, with the help of a formula for nonlinear transformations of Gaussian integrals due to R. Ramer, the following identity where is the law of in , its Cameron--Martin space, and is the…
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Taxonomy
TopicsStochastic processes and financial applications · advanced mathematical theories · Quantum Mechanics and Applications
