Construction and heat kernel estimates of general stable-like Markov processes
Abstract: A stable-like process is a Feller process $(X_t)_{t\geq 0}$ taking values in $\mathbb{R}d$ and whose generator behaves, locally, like an $\alpha$-stable L\'evy process, but the index $\alpha$ and all other characteristics may depend on the state space. More precisely, the jump measure need not to be symmetric and it strongly depends on the current state of the process; moreover, we do not require the gradient term to be dominated by the pure jump part. Our approach is to understand the above phenomena as suitable microstructural perturbations. We show that the corresponding martingale problem is well-posed, and its solution is a strong Feller process which admits a transition density. For the transition density we obtain a representation as a sum of an explicitly given principal term -- this is essentially the density of an $\alpha$-stable random variable whose parameters depend on the current state $x$ -- and a residual term; the $L\infty\otimes L1$-norm of the residual term is negligible and so is, under an additional structural assumption, the $L\infty\otimes L\infty$-norm. Concrete examples illustrate the relation between the assumptions and possible transition density estimates.
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