Independant RV's and the Borel-Cantelli Lemmas

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The first part I can do no problem!

The second part... well I've really no idea what to do with that S term, I assume it has something to do with the strong law of large numbers? (w is an element in the set of outcomes)

Borel-Cantelli Lemmas

Law of Large Numbers

Does anyone know where to start?

Thanks

edit:

I have an exmple of strong convergence showing that

if P(w : lim Xn(w) = X(w) )

then this is identically equal to

P(Xn -> X) = 1 , almost surely

So I guess I just have to show that P(Xn -> X) = 1,

So show: P(Sn(w)/n -> -1) = 1?

Probably going the wrong way around it.. not sure how Borel Cantelli links to it.
 
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Firepanda said:
wvcuvp.png


The first part I can do no problem!

The second part... well I've really no idea what to do with that S term, I assume it has something to do with the strong law of large numbers? (w is an element in the set of outcomes)

Borel-Cantelli Lemmas

Law of Large Numbers

Does anyone know where to start?

Thanks

edit:

I have an exmple of strong convergence showing that

if P(w : lim Xn(w) = X(w) )

then this is identically equal to

P(Xn -> X) = 1 , almost surely

So I guess I just have to show that P(Xn -> X) = 1,

So show: P(Sn(w)/n -> -1) = 1?

Probably going the wrong way around it.. not sure how Borel Cantelli links to it.

It is probably simpler to re-write the problem a bit: let X_n = -1 + Y_n, where \Pr\{Y_n = 0 \} = 1 - \frac{1}{n^2}, \mbox{ and } \Pr \{Y_n = n^2 \} = \frac{1}{n^2}. Essentially, you want to show that \sum_{k=1}^n Y_k / n \rightarrow 0 w.p. 1. If A = \{ Y_n > 0 \mbox{ infinitely often } \}, can you show that Pr{A} = 0?

RGV
 
Hi RGV, you always answer my questions it seems! :)

So I need to show given the event En = Yn>0

that the sum from n=1 to inf of P(En) is finite (Borel Cantelli)

So this is the sum of n=1 to inf of 1/n2?

Which is pi^2/6, and so the probability is 0!

Correct?
 
Also any idea on the second part of this question?

v5ltep.png


It looks like the same structure..

Thanks!
 
bump..!
 
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