In probability theory, Le Cam's theorem, named after Lucien Le Cam, states the following.[1][2][3]
Suppose:
- are independent random variables, each with a Bernoulli distribution (i.e., equal to either 0 or 1), not necessarily identically distributed.
- (i.e. follows a Poisson binomial distribution)
Then
In other words, the sum has approximately a Poisson distribution and the above inequality bounds the approximation error in terms of the total variation distance.
By setting pi = λn/n, we see that this generalizes the usual Poisson limit theorem.
When is large a better bound is possible: ,[4] where represents the operator.
It is also possible to weaken the independence requirement.[4]
- ^ Cite error: The named reference
LeCam:1960
was invoked but never defined (see the help page).
- ^ Cite error: The named reference
LeCam:1963
was invoked but never defined (see the help page).
- ^ Cite error: The named reference
Steele:1994
was invoked but never defined (see the help page).
- ^ a b Cite error: The named reference
denHollander:2012
was invoked but never defined (see the help page).