Contiguity (probability theory)
In probability theory, two sequences of probability measures are said to be contiguous if asymptotically they share the same support. Thus the notion of contiguity extends the concept of absolute continuity to the sequences of measures.
The concept was originally introduced by as part of his foundational contribution to the development of asymptotic theory in mathematical statistics. He is best known for the general concepts of local asymptotic normality and contiguity.
Definition
Let be a sequence of measurable spaces, each equipped with two measures Pn and Qn.- We say that Qn is contiguous with respect to Pn if for every sequence An of measurable sets, implies.
- The sequences Pn and Qn are said to be mutually contiguous or bi-contiguous if both Qn is contiguous with respect to Pn and Pn is contiguous with respect to Qn.
It is possible however that each of the measures Qn be absolutely continuous with respect to Pn, while the sequence Qn not being contiguous with respect to Pn.
The fundamental Radon–Nikodym theorem for absolutely continuous measures states that if Q is absolutely continuous with respect to P, then Q has density with respect to P, denoted as, such that for any measurable set A
which is interpreted as being able to "reconstruct" the measure Q from knowing the measure P and the derivative ƒ. A similar result exists for contiguous sequences of measures, and is given by the Le Cam's third lemma.
Properties
- For the case for all n it applies.
- It is possible that is true for all n without.
Le Cam's first lemma
For two sequences of measures on measurable spaces the following statements are equivalent:- for any statistics.