Kolmogorov's two-series theorem

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In probability theory, Kolmogorov's two-series theorem is a result about the convergence of random series. It follows from Kolmogorov's inequality and is used in one proof of the strong law of large numbers.

Contents

Statement of the theorem

Let be independent random variables with expected values and variances , such that converges in and converges in . Then converges in almost surely.

Proof

Assume WLOG . Set , and we will see that with probability 1.

For every ,

Thus, for every and ,

While the second inequality is due to Kolmogorov's inequality.

By the assumption that converges, it follows that the last term tends to 0 when , for every arbitrary .

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