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Martingale central limit theorem

In probability theory, the central limit theorem says that, under certain conditions, the sum of many independent identically-distributed random variables, when scaled appropriately, converges in distribution to a standard normal distribution. The martingale central limit theorem generalizes this result for random variables to martingales, which are stochastic processes where the change in the value of the process from time t to time t + 1 has expectation zero, even conditioned on previous outcomes.

Statement edit

Here is a simple version of the martingale central limit theorem: Let   be a martingale with bounded increments; that is, suppose

 

and

 

almost surely for some fixed bound k and all t. Also assume that   almost surely.

Define

 

and let

 

Then

 

converges in distribution to the normal distribution with mean 0 and variance 1 as  . More explicitly,

 

The sum of variances must diverge to infinity edit

The statement of the above result implicitly assumes the variances sum to infinity, so the following holds with probability 1:

 

This ensures that with probability 1:

 

This condition is violated, for example, by a martingale that is defined to be zero almost surely for all time.

Intuition on the result edit

The result can be intuitively understood by writing the ratio as a summation:

 

The first term on the right-hand-side asymptotically converges to zero, while the second term is qualitatively similar to the summation formula for the central limit theorem in the simpler case of i.i.d. random variables. While the terms in the above expression are not necessarily i.i.d., they are uncorrelated and have zero mean. Indeed:

 
 

References edit

Many other variants on the martingale central limit theorem can be found in:

  • Hall, Peter; Heyde, C. C. (1980). Martingale Limit Theory and Its Application. New York: Academic Press. ISBN 0-12-319350-8.

Note, however, that the proof of Theorem 5.4 in Hall & Heyde contains an error. For further discussion, see

  • Bradley, Richard (1988). "On some results of MI Gordin: a clarification of a misunderstanding". Journal of Theoretical Probability. 1 (2). Springer: 115–119. doi:10.1007/BF01046930. S2CID 120698528.

martingale, central, limit, theorem, probability, theory, central, limit, theorem, says, that, under, certain, conditions, many, independent, identically, distributed, random, variables, when, scaled, appropriately, converges, distribution, standard, normal, d. In probability theory the central limit theorem says that under certain conditions the sum of many independent identically distributed random variables when scaled appropriately converges in distribution to a standard normal distribution The martingale central limit theorem generalizes this result for random variables to martingales which are stochastic processes where the change in the value of the process from time t to time t 1 has expectation zero even conditioned on previous outcomes Contents 1 Statement 2 The sum of variances must diverge to infinity 3 Intuition on the result 4 ReferencesStatement editHere is a simple version of the martingale central limit theorem Let X1 X2 displaystyle X 1 X 2 dots nbsp be a martingale with bounded increments that is suppose E Xt 1 Xt X1 Xt 0 displaystyle operatorname E X t 1 X t vert X 1 dots X t 0 nbsp and Xt 1 Xt k displaystyle X t 1 X t leq k nbsp almost surely for some fixed bound k and all t Also assume that X1 k displaystyle X 1 leq k nbsp almost surely Define st2 E Xt 1 Xt 2 X1 Xt displaystyle sigma t 2 operatorname E X t 1 X t 2 X 1 ldots X t nbsp and let tn min t i 1tsi2 n displaystyle tau nu min left t sum i 1 t sigma i 2 geq nu right nbsp Then Xtnn displaystyle frac X tau nu sqrt nu nbsp converges in distribution to the normal distribution with mean 0 and variance 1 as n displaystyle nu to infty nbsp More explicitly limn P Xtnn lt x F x 12p xexp u22 du x R displaystyle lim nu to infty operatorname P left frac X tau nu sqrt nu lt x right Phi x frac 1 sqrt 2 pi int infty x exp left frac u 2 2 right du quad x in mathbb R nbsp The sum of variances must diverge to infinity editThe statement of the above result implicitly assumes the variances sum to infinity so the following holds with probability 1 t 1 st2 displaystyle sum t 1 infty sigma t 2 infty nbsp This ensures that with probability 1 tv lt v 0 displaystyle tau v lt infty forall v geq 0 nbsp This condition is violated for example by a martingale that is defined to be zero almost surely for all time Intuition on the result editThe result can be intuitively understood by writing the ratio as a summation Xtvv X1v 1v i 1tv 1 Xi 1 Xi tv 1 displaystyle frac X tau v sqrt v frac X 1 sqrt v frac 1 sqrt v sum i 1 tau v 1 X i 1 X i forall tau v geq 1 nbsp The first term on the right hand side asymptotically converges to zero while the second term is qualitatively similar to the summation formula for the central limit theorem in the simpler case of i i d random variables While the terms in the above expression are not necessarily i i d they are uncorrelated and have zero mean Indeed E Xi 1 Xi 0 i 1 2 3 displaystyle E X i 1 X i 0 forall i in 1 2 3 nbsp E Xi 1 Xi Xj 1 Xj 0 i j i j 1 2 3 displaystyle E X i 1 X i X j 1 X j 0 forall i neq j i j in 1 2 3 nbsp References editMany other variants on the martingale central limit theorem can be found in Hall Peter Heyde C C 1980 Martingale Limit Theory and Its Application New York Academic Press ISBN 0 12 319350 8 Note however that the proof of Theorem 5 4 in Hall amp Heyde contains an error For further discussion see Bradley Richard 1988 On some results of MI Gordin a clarification of a misunderstanding Journal of Theoretical Probability 1 2 Springer 115 119 doi 10 1007 BF01046930 S2CID 120698528 Retrieved from https en wikipedia org w index php title Martingale central limit theorem amp oldid 1122144110, wikipedia, wiki, book, books, library,

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