This article is cited in
3 papers
Extrapolation of multidimensional Markov processes from incomplete data
R. Sh. Liptser,
A. N. Shiryaev Moscow
Abstract:
Let
$(\theta_t,\eta_t)$,
$t\ge0$, be a Markov process, where
$\eta_t$ is the observable component and
$\theta_t$ is the unobservable one. Put
$$
\pi_\beta(\tau,t)=\mathbf P(\theta_\tau=\beta\mid\eta_s,\ s\le t),\quad\tau\ge t,
$$
if
$\theta_t$ takes discrete values and
$$
\pi_\beta(\tau,t)=\frac{\partial\mathbf P(\theta_t\le\beta\mid\eta_s,\ s\le t)}{\partial\beta},\quad\tau\ge t,
$$
if
$\theta_\tau$ takes continuous values. When
$\theta_t$,
$t\ge0$, is a purely discontinuous Markov process and
$\eta_t$ has the stochastic differential (5), in § 1 equations in
$t$ and
$\tau$ for
$\pi_\beta(\tau,t)$ are deduced. In § 2 equations for the density
$\pi_\beta(\tau,t)$ are obtained under the supposition that
$(\theta_t,\eta_t)$ be a diffusion Markov process. In § 3 some cases of effective solving of extrapolation problems for processes regarded in § 2 are considered.
Received: 24.10.1967