On the Relative Stability of Sums of Nonnegative Random Variables Linked in a Markov Chain
Unknown
Submitted 1964-01-01 | SovietRxiv: ru-196401.66483 | Translated from Russian

Abstract Generated abstract

This paper studies relative stability in probability for sums of nonnegative random variables whose dependence is governed by a Markov chain. Using Dobrushin-type coefficients of ergodicity, it gives sufficient conditions, formulated through truncated marginal distributions and normalizing constants, under which the normalized sums converge in probability to one. The results also describe consequences of relative stability for individual summands, including asymptotic constancy or negligibility under appropriate growth conditions on the normalizers, and treat cases with finite expectations, prescribed normalizing divisors, and stationary homogeneous Markov chains. For independent variables, the stated criteria reduce to earlier results of Khintchine and Bobrov.

Full Text

M. Rosenblatt-Roth

ON THE RELATIVE STABILITY OF SUMS OF NONNEGATIVE RANDOM VARIABLES LINKED IN A MARKOV CHAIN

(Presented by Academician A. N. Kolmogorov, 11 I 1964)

Let \(\xi_k\) \((k=1,2,\ldots)\) be a sequence of random variables linked in a Markov chain and capable of taking only nonnegative values; let \(a_i\) be the coefficient of ergodicity \((^{1,2})\) of the \(i\)-th transition probability function of the chain; let
\[ \alpha^{(n)}=\min_{1\le i<n}\alpha_i>0,\qquad S_n=\sum_{i=1}^{n}\xi_i. \]
We shall call the sums \(S_n\) relatively stable \((^{3,4})\) if there exists some sequence of numbers \(A_n>0\) \((n=1,2,\ldots)\) such that
\[ \mathbf P\left(\left|A_n^{-1}S_n-1\right|\ge \delta\right)\to 0\qquad (n\to\infty) \tag{1} \]
for every \(\delta>0\).

Theorem 1. In order that the sums \(S_n\) of nonnegative random variables linked in a Markov chain be relatively stable, it is sufficient that there exist some sequence of numbers \(A_n>0\) \((n=1,2,\ldots)\) such that, for every \(\varepsilon>0\),
\[ \sum_{k=1}^{n}\int_{|x-a_k|\ge \varepsilon A_n\alpha^{(n)}} dF_k(x)\to 0\qquad (n\to\infty), \tag{2} \]
\[ \frac{1}{A_n}\sum_{k=1}^{n}\int_{|x-a_k|<\varepsilon A_n\alpha^{(n)}} x\,dF_k(x)\to 1\qquad (n\to\infty), \tag{3} \]
where \(F_k(x)\) is the unconditional distribution function of the random variable \(\xi_k\), and \(a_k=A_k-A_{k-1}\). In this case the numbers \(A_n\) may be taken as normalizing divisors.

Theorem 2. The relative stability of sums \(S_n\) of nonnegative random variables linked in a Markov chain with normalizing divisors \(A_n\to A\) \((n\to\infty)\) entails the following:

a) if \(A=\infty\), the summands \(\xi_k\) \((k=1,2,\ldots,n)\) are asymptotically constant, i.e., there exist certain numbers \(b_k\) \((k=1,2,\ldots,n)\) such that, however small \(\delta>0\) may be,
\[ \mathbf P\left(A_n^{-1}|\xi_k-b_k|\ge \delta\right)\to 0\qquad (n\to\infty) \tag{4} \]
uniformly with respect to \(k\le n\);

b) if \(A<\infty\), the summands \(\xi_k\) \((k=1,2,\ldots)\) are, with probability 1, equal to certain numbers \(a'_k\).

Theorem 3. In order that the sums \(S_n\) of nonnegative random variables linked in a Markov chain have relative stability with a prescribed normalizing divisor \(A_n\to\infty\) \((n\to 0)\), it is sufficient that, for every \(\varepsilon>0\), conditions (2) and (3) hold, where \(a_k=A_k-A_{k-1}\). For \(A_n\to A<\infty\) this is false.

Theorem 4. In order that the sums \(S_n\) of nonnegative random variables \(\xi_k\) \((k=1,2,\ldots)\), linked in a Markov chain and possessing finite-

with finite mathematical expectations \(\mathbf{M}\xi_k\), are relatively stable with normalizing divisor \(A_n=\mathbf{M}S_n\), it is sufficient that for every \(\varepsilon>0\) conditions (2) and (3) be fulfilled, where \(a_k=\mathbf{M}\xi_k\). In this case the possibility \(A_n\to A<+\infty\) is not excluded.

Theorem 5. In order that the sums \(S_n\) of nonnegative random variables \(\xi_k\) \((k=1,2,\ldots)\), linked into a Markov chain, which possess relative stability with normalizing divisor \(A_n\), consist of summands \(\xi_k\) for which \(A_n^{-1}\xi_k\) \((k=1,2,\ldots,n)\) are negligible in the limit, i.e., however small \(\delta>0\) may be,

\[ \mathbf{P}\bigl(A_n^{-1}\xi_k\ge \varepsilon\bigr)\to 0 \quad (n\to\infty) \tag{5} \]

uniformly with respect to \(k\le n\), it is necessary and sufficient that

\[ A_n\to+\infty,\qquad A_n^{-1}A_{n-1}\to 1 \quad (n\to\infty). \tag{6} \]

Theorem 6. In order that the sums \(S_n\) of nonnegative random variables \(\xi_k\) \((k=1,2,\ldots)\), linked into a Markov chain, be relatively stable and that the quantities \(B_n^{-1}\xi_k\) \((k=1,2,\ldots,n)\), where \(B_k\) is a normalizing divisor, be negligible in the limit, it is sufficient that there exist numbers \(A_n\) \((n=1,2,\ldots)\) for which the conditions

\[ \sum_{k=1}^{n}\mathbf{P}\bigl(\xi_k\ge \varepsilon A_n\alpha^{(n)}\bigr)\to 0,\qquad (n\to\infty); \tag{7} \]

\[ \frac{1}{A_n}\sum_{k=1}^{n}\int_{0}^{\varepsilon A_n\alpha^{(n)}} x\,dF_k(x)\to 1 \qquad (n\to\infty), \tag{8} \]

hold, however \(\varepsilon>0\) may be chosen. Here the numbers \(A_n\) may be taken as the normalizing divisors \(B_n\).

Theorem 7. In order that the sums \(S_n\) of nonnegative random variables \(\xi_k\) \((k=1,2,\ldots)\), linked into a Markov chain, be relatively stable with a prescribed normalizing divisor \(A_n\), and that the quantities \(A_n^{-1}\xi_k\) \((k=1,2,\ldots,n)\) be negligible in the limit, it is sufficient that, for any \(\varepsilon>0\), relations (7) and (8) be fulfilled.

Theorem 8. In order that the sums \(S_n\) of nonnegative random variables \(\xi_k\) \((k=1,2,\ldots)\), linked into a Markov chain, possessing finite mathematical expectations \(\mathbf{M}\xi_k\), be relatively stable with normalizing divisor \(A_n=\mathbf{M}S_n\), and that the quantities \(A_n^{-1}\xi_k\) \((k=1,2,\ldots,n)\) be negligible in the limit, with \(\alpha^{(n)}>\rho>0\) \((n=1,2,\ldots)\), it is sufficient that, for every \(\varepsilon>0\), the relation

\[ \frac{1}{A_n}\sum_{k=1}^{n}\int_{0}^{\varepsilon A_n\alpha^{(n)}} x\,dF_k(x)\to 1 \quad (n\to\infty). \tag{9} \]

be fulfilled.

Theorem 9. In order that the sums \(S_n\), linked into a stationary and homogeneous Markov chain with ergodicity coefficient \(\alpha>0\), of nonnegative identically distributed random variables be relatively stable, it is sufficient that there exist some numbers \(A_n>0\) \((n=1,2,\ldots)\) satisfying the conditions

\[ n\int_{\varepsilon A_n\alpha^{(n)}}^{+\infty} dF(x)\to 0 \qquad (n\to\infty); \tag{10} \]

\[ \frac{n}{A_n}\int_{0}^{\varepsilon A_n\alpha^{(n)}} x\,dF(x)\to 1 \qquad (n\to\infty). \tag{11} \]

for any \(\varepsilon > 0\), where \(F(x)\) is the unconditional distribution function of the random variables. In this case the numbers \(A_n\) may be taken as normalizing divisors.

Remark. If the random variables \(\xi_k\) \((k = 1, 2, \ldots)\) are independent, i.e. \(\alpha^{(n)} = 1\) \((n = 1, 2, \ldots)\), then from these theorems, as special cases, follow the corresponding results of \({}^{3,4}\).

Faculty of Mathematics and Mechanics
University of Bucharest
Bucharest, Romanian People’s Republic

Received
13 V 1963

References

\({}^{1}\) R. L. Dobrushin, Theory of Probability and Its Applications, 1, no. 1, 72 (1956).
\({}^{2}\) R. L. Dobrushin, Theory of Probability and Its Applications, 1, no. 4, 365 (1956).
\({}^{3}\) A. Khintchine, Giornale dell’Istituto Italiano degli Attuari, 7, 365 (1936).
\({}^{4}\) A. A. Bobrov, Scientific Notes of Moscow State University, issue 146, Mathematics, 3, 92 (1950).

Submission history

On the Relative Stability of Sums of Nonnegative Random Variables Linked in a Markov Chain