Abstract:
We consider the problem of finding some sufficient conditions under which causal
error-free filtering for a singular stationary stochastic process $X=\{X_n\}$ with a finite number of
states from noisy observations is possible. For a rather general model of observations where the
observable stationary process is absolutely regular with respect to the estimated process $X$, it is
proved (using an information-theoretic approach) that under a natural additional condition, the
causal error-free (with probability one) filtering is possible.