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Exponentially equivalent measures

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In mathematics, exponential equivalence of measures is how two sequences or families of probability measures are "the same" from the point of view of large deviations theory.

Definition

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Let be a metric space and consider two one-parameter families of probability measures on , say and . These two families are said to be exponentially equivalent if there exist

  • a one-parameter family of probability spaces ,
  • two families of -valued random variables and ,

such that

  • for each , the -law (i.e. the push-forward measure) of is , and the -law of is ,
  • for each , " and are further than apart" is a -measurable event, i.e.
  • for each ,

The two families of random variables and are also said to be exponentially equivalent.

Properties

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The main use of exponential equivalence is that as far as large deviations principles are concerned, exponentially equivalent families of measures are indistinguishable. More precisely, if a large deviations principle holds for with good rate function , and and are exponentially equivalent, then the same large deviations principle holds for with the same good rate function .

References

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  • Dembo, Amir; Zeitouni, Ofer (1998). Large deviations techniques and applications. Applications of Mathematics (New York) 38 (Second ed.). New York: Springer-Verlag. pp. xvi+396. ISBN 0-387-98406-2. MR 1619036. (See section 4.2.2)