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Stochastic Calculus for Markov Processes Associated with Semi-Dirichlet Forms (1406.2351v1)

Published 9 Jun 2014 in math.PR

Abstract: Let $(\mathcal{E},D(\mathcal{E}))$ be a quasi-regular semi-Dirichlet form and $(X_t){t\geq0}$ be the associated Markov process. For $u\in D(\mathcal{E}){loc}$, denote $A_t{[u]}:=\tilde{u}(X_{t})-\tilde{u}(X_{0})$ and $F{[u]}t:=\sum{0<s\leq t}(\tilde u(X_{s})-\tilde u(X_{s-}))1_{{|\tilde u(X_{s})-\tilde u(X_{s-})|>1}}$, where $\tilde{u}$ is a quasi-continuous version of $u$. We show that there exist a unique locally square integrable martingale additive functional $Y{[u]}$ and a unique continuous local additive functional $Z{[u]}$ of zero quadratic variation such that $$A_t{[u]}=Y_t{[u]}+Z_t{[u]}+F_t{[u]}.$$ Further, we define the stochastic integral $\int_0t\tilde v(X_{s-})dA_s{[u]}$ for $v\in D(\mathcal{E})_{loc}$ and derive the related It^{o}'s formula.

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