Talk:Martingale central limit theorem

Latest comment: 10 years ago by 195.83.48.116 in topic There should be more hypothesis

There should be made an index of all the central limit theorems which, among others, include this one. --Steffen Grønneberg 20:41, 21 May 2006 (UTC)Reply

something unclear edit

There is something not clear :

\tau_v is define as a min. But \sigma_t is a random variable for all t, so the definition is ambiguous. Also the conclusion of the theorem seems a little too good, because there are at the end no condition on the conditional variance. On the other hand, I did not find the theorem in the book you mention as reference. —Preceding unsigned comment added by Le huve (talkcontribs) 12:39, 17 September 2007 (UTC)Reply

Let  . Then   can be calculated from   and vice versa. Specifically,  . The conditions become:
 
and
 .
We have
 .
The conditionality of these formulas merely means that each of the random variables D being summed may have a distribution which depends on the values of the previous random variables. Remember we are trying to relax the premises of the central limit theorem. There is no conditionality in the conclusion; we are not trying to weaken the conclusion. JRSpriggs (talk) 00:28, 22 May 2008 (UTC)Reply

another thing is unclear edit

Then
 
converges in distribution to the normal distribution with mean 0 and variance 1.

Does that mean as v → ∞? Michael Hardy (talk) 19:01, 20 May 2008 (UTC)Reply

Yes, as I indicated in my edit to the article. JRSpriggs (talk) 00:31, 22 May 2008 (UTC)Reply

Mean value edit

We do not state, that the first X is zero, hence the resulting distribution is not necesserily centered in zero, or am I mistaken with a concept of CLT? My thought is that the martinagle stabilizes around it's starting point, which should be reflected in the normal distribution's parameter. — Preceding unsigned comment added by 82.200.70.124 (talk) 10:54, 13 December 2012 (UTC)Reply


There should be more hypothesis edit

if every   is zero a.s.,   is a martingale, then for every  >0,   is equal to infinite, and distribution of   is equal to zero a.s.

It should be the same if   is finite. — Preceding unsigned comment added by 195.83.48.116 (talk) 12:35, 16 October 2013 (UTC)Reply