The gradient and divergence operators of stochastic analysis on Riemannian manifolds are expressed using the gradient and divergence of the flat Brownian motion. By this method we obtain the almost-sure version of several useful identities that are usually stated under expectations. The manifold-valued Brownian motion and random point measures on manifolds are treated successively in the same framework, and stochastic analysis of the Brownian motion on a Riemannian manifold turns out to be closely related to classical stochastic calculus for jump processes. In the setting of point measures we introduce a damped gradient that was lacking in the multidimensional case. © 1999 Academic Press.
CITATION STYLE
Prat, J. J., & Privault, N. (1999). Explicit Stochastic Analysis of Brownian Motion and Point Measures on Riemannian Manifolds. Journal of Functional Analysis, 167(1), 201–242. https://doi.org/10.1006/jfan.1999.3440
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