In probability theory, continuous mapping theorem states that continuous functions retain their limit-preserving properties in the scope of the convergence of random variables. A continuous function, in Heine’s definition, is such a function which maps convergent sequences into convergent sequences: if xn → x then g(xn) → g(x). The continuous mapping theorem states that this will also be true if we replace deterministic sequence {xn} with a sequence of random variables {Xn}, and the standard notion of convergence of real numbers “→” with one of the types of convergence of random variables.
This theorem was first proved by (Mann & Wald 1943), and therefore sometimes is called the Mann–Wald theorem.[1]
Statement
Let {Xn}, X be random elements defined on a metric space S. Suppose a function g: S→S′ has the set of discontinuity points Dg such that P[X∈Dg] = 0. Then [2][3][4]
Proof
Convergence in distribution
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Convergence in probability
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Convergence almost surely
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References
See also
Literature
- Amemiya, Takeshi (1985). Advanced Econometrics. Cambridge, MA: Harvard University Press. ISBN 0674005600.
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ignored (help) - Billingsley, Patrick (1969). Convergence of Probability Measures. John Wiley & Sons. ISBN 0471072427.
- Billingsley, Patrick (1999). Convergence of Probability Measures (2nd ed.). John Wiley & Sons. ISBN 0471197459.
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- van der Vaart, A. W. (1998). Asymptotic statistics. New York: Cambridge University Press. ISBN 9780521496032.
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Notes
- ^ Amemiya 1985, p. 88
- ^ van der Vaart 1998, Theorem 2.3
- ^ Billingsley 1969, p. 31, Corollary 1
- ^ Billingsley 1999, p. 21, Theorem 2.7