I am trying to prove the following question:
Let $X_i$ be sequence of indepedent non-negative random variables with $E(X_i) = \infty$ and $X_i$ having different distributions.
Is it true that $$ \frac{X_1 + \cdots + X_n}{n} \to \infty \ a.s.? $$ I know that this is true when $X_i$ are i.i.d., but I have no idea how to proceed with $X_i$ having different distributions.
Any hint would be appreciated. Thank you!
Actually we can even have $\frac {X_1+X_2+...+X_n} n \to 0$ almost surely!.
Let $(Y_n)$ be i.i.d non-negative with $EY_1=\infty$. Choose $a_n >0$ such that $P (\frac {Y_n} {a_n} >\frac 1 {2^{n}} )<\frac 1 {2^{n}}$. Use Borel Cantelli Lemma to conclude that $\frac {Y_n} {a_n} \to 0$ almost surely. Now put $X_n=\frac {Y_n} {a_n}$. Since $X_n \to 0$ almost surely it follows that the Cesaro averages $\frac {X_1+X_2+...+X_n} n$ also $\to 0$ almost surely.