Up to now, the nonparametric analysis of multidimensional continuous-time Markov processes has focussed strongly on specific model choices, mostly related to symmetry of the semigroup. While this approach allows to study the performance of estimators for the characteristics of the process in the minimax sense, it restricts the applicability of results to a rather constrained set of stochastic processes and in particular hardly allows incorporating jump structures. As a consequence, for many models of applied and theoretical interest, no statement can be made about the robustness of typical statistical procedures beyond the beautiful, but limited framework available in the literature. To close this gap, we identify $\beta$-mixing of the process and heat kernel bounds on the transition density as a suitable combination to obtain $\sup$-norm and $L^2$ kernel invariant density estimation rates matching the case of reversible multidimenisonal diffusion processes and outperforming density estimation based on discrete i.i.d. or weakly dependent data. Moreover, we demonstrate how up to $\log$-terms, optimal $\sup$-norm adaptive invariant density estimation can be achieved within our general framework based on tight uniform moment bounds and deviation inequalities for empirical processes associated to additive functionals of Markov processes. The underlying assumptions are verifiable with classical tools from stability theory of continuous time Markov processes and PDE techniques, which opens the door to evaluate statistical performance for a vast amount of Markov models. We highlight this point by showing how multidimensional jump SDEs with L\'evy driven jump part under different coefficient assumptions can be seamlessly integrated into our framework, thus establishing novel adaptive $\sup$-norm estimation rates for this class of processes.
翻译:到现在为止,对多维连续时间的马尔科夫进程的非参数分析一直强烈地集中在特定的模型选择上,大多与半组的对称有关。虽然这种方法允许研究用于微缩运算过程特点的估算器的性能,但它限制了结果的可适用性,将其限制在相当有限的一组随机化过程,特别是很难纳入跳跃结构。因此,对于许多应用和理论兴趣模型来说,除了美丽的跳跃之外,不能对典型统计程序的稳健性作出说明,但文献中可用的框架有限。为了缩小这一差距,我们确定在过渡密度上,用美元计算器和热内螺旋圈的混合值,作为合适的组合,以获得美元/美元/诺尔和美元内螺旋内螺旋内衬,与可逆转的多维度扩散进程和基于离析(i.d.)或依赖性强的数据的偏差性估算过程相对比。此外,我们展示到美元- 美元- 长期的统计- 升序内值模型中, 最优的递化的递增性度假设是用来在常规的递增性变变化的模型中, 。