Abstract:
We consider the problem on the number $\xi(N)$ of $k$-fold matchings
of symbols that occur in a sequence of random variables resulting from
aggregating the states of a Markov–Bruns chain generated by $n$-tuples
$(X_i,\dots,X_{i+n-1})$ consisting of elements of the sequence
$(X_1,\dots,X_{N+n-1})$ of independent realisations of a random
variable $X$. The aggregation of states consists of applying
a given function $f$, which takes a finite number of values,
to the $n$-tuples $(X_i,\dots,X_{i+n-1})$.
We prove a theorem on convergence to a multivariate normal law
for the joint distribution of $\xi(N)$ under various
aggregation functions, and give sufficient conditions on convergence
of the distribution of $\xi(N)$ to the chi-square law as
$N\to\infty$. These results are applied to the problem
on $k$-fold imperfect matchings of $n$-tuples in a sequence
of polynomial trials. In particular, we prove a theorem on convergence
to a multivariate normal law for the vector
of numbers of $k$-fold imperfect matchings of various lengths and ranks.