Continuous mapping theorem

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If are random elements with values in a metric space and , is a function on the metric space, and the probability that attains a value where is discontinuous is zero, then ([1] page 31, Corollary 1, [2] page 21, Theorem 2.7)

This includes for example the convergence of the sum of two sequences of random variables and (the random element is the pair of the random variables, the continuous function is the mapping of the pair to the result of the operation), but only in the case where

We note that this does not lead to a more general case of Slutsky's Theorem, because that would require only the assumption

and

which does not imply , so we cannot apply the Continuous mapping theorem.

References

Notes

  1. ^ Billingsley, Patrick (1969). Convergence of Probability Measures. John Wiley & Sons. ISBN 0471072427
  2. ^ Billingsley, Patrick (1999). Convergence of Probability Measures. John Wiley & Sons. p. 2nd edition. ISBN 0471197459