Martingale central limit theorem
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In probability theory, the central limit theorem says that 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 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.
Here is a simple version of the martingale central limit theorem: Let
be a martingale with bounded increments, i.e., 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,
[edit] References
Many other variants on the martingale CLT can be found in:
- Hall, Peter; and C. C. Heyde (1980). Martingale Limit Theory and Its Application. New York: Academic Press. ISBN 0-12-319350-8.