In probability theory, Lévy’s continuity theorem, named after the French mathematician Paul Lévy, connects convergence in distribution of the sequence of random variables with pointwise convergence of their characteristic functions. An alternative name sometimes used is Lévy’s convergence theorem.
This theorem is the basis for one approach to prove the central limit theorem and it is one of the major theorems concerning characteristic functions.
Suppose we have
- a sequence of random variables , not necessarily sharing a common probability space,
- the sequence of corresponding characteristic functions , which by definition are
where is the expected value operator.
If the sequence of characteristic functions converges pointwise to some function
then the following statements become equivalent:
- converges in distribution to some random variable X
i.e. the cumulative distribution functions corresponding to random variables converge at every continuity point;
- is tight:
- is a characteristic function of some random variable X;
- is a continuous function of t;
- is continuous at t = 0.
Rigorous proofs of this theorem are available.
- ^ a b Williams (1991, section 18.1)
- ^ Fristedt & Gray (1996, Theorem 18.21)