Uniform integrability
Uniform integrability is an important concept in real analysis, functional analysis and measure theory, and plays a vital role in the theory of martingales. The definition used in measure theory is closely related to, but not identical to, the definition typically used in probability.
Measure theoretic definition
Textbooks on real analysis and measure theory often use the following definition.[1][2]
Let be a positive measure space. A set
is called uniformly integrable if to each
there corresponds a
such that
whenever and
Probability definition
In the theory of probability, the following definition applies.[3][4][5]
- A class
of random variables is called uniformly integrable (UI) if given
, there exists
such that
, where
is the indicator function
.
- An alternative definition involving two clauses may be presented as follows: A class
of random variables is called uniformly integrable if:
- There exists a finite
such that, for every
in
,
.
- For every
there exists
such that, for every measurable
such that
and every
in
,
.
- There exists a finite
The two probabilistic definitions are equivalent.[6]
Relationship between definitions
The two definitions are closely related. A probability space is a measure space with total measure 1. A random variable is a real-valued measurable function on this space, and the expectation of a random variable is defined as the integral of this function with respect to the probability measure.[7] Specifically,
Let be a probability space. Let the random variable
be a real-valued
-measurable function. Then the expectation of
is defined by
provided that the integral exists.
Then the alternative probabilistic definition above can be rewritten in measure theoretic terms as: A set of real-valued functions is called uniformly integrable if:
- There exists a finite
such that, for every
in
,
.
- For every
there exists
such that, for every measurable
such that
and for every
in
,
.
Comparison of this definition with the measure theoretic definition given above shows that the measure theoretic definition requires only that each function be in . In other words,
is finite for each
, but there is not necessarily an upper bound to the values of these integrals. In contrast, the probabilistic definition requires that the integrals have an upper bound.
One consequence of this is that uniformly integrable random variables (under the probabilistic definition) are tight. That is, for each , there exists
such that
for all .[8]
In contrast, uniformly integrable functions (under the measure theoretic definition) are not necessarily tight.[9]
In his book, Bass uses the term uniformly absolutely continuous to refer to sets of random variables (or functions) which satisfy the second clause of the alternative definition. However, this definition does not require each of the functions to have a finite integral.[10]
Related corollaries
The following results apply to the probabilistic definition.[11]
- Definition 1 could be rewritten by taking the limits as
- A non-UI sequence. Let
, and define
- Clearly
, and indeed
for all n. However,
- and comparing with definition 1, it is seen that the sequence is not uniformly integrable.
![](../I/m/Uniform_integrability.png)
![X_n \to 0](../I/m/4df46daab85625fb800db2e3da9f9a24.png)
- By using Definition 2 in the above example, it can be seen that the first clause is satisfied as
norm of all
s are 1 i.e., bounded. But the second clause does not hold as given any
positive, there is an interval
with measure less than
and
for all
.
- If
is a UI random variable, by splitting
- and bounding each of the two, it can be seen that a uniformly integrable random variable is always bounded in
.
- If any sequence of random variables
is dominated by an integrable, non-negative
: that is, for all ω and n,
- then the class
of random variables
is uniformly integrable.
- A class of random variables bounded in
(
) is uniformly integrable.
Relevant theorems
- A class of random variables
is uniformly integrable if and only if it is relatively compact for the weak topology
.
- de la Vallée-Poussin theorem[13]
- The family
is uniformly integrable if and only if there exists a non-negative increasing convex function
such that
and
Relation to convergence of random variables
- A sequence
converges to
in the
norm if and only if it converges in measure to
and it is uniformly integrable. In probability terms, a sequence of random variables converging in probability also converge in the mean if and only if they are uniformly integrable.[14] This is a generalization of Lebesgue's dominated convergence theorem, see Vitali convergence theorem.
Citations
- ↑ Rudin, Walter (1987). Real and Complex Analysis (3 ed.). Singapore: McGraw–Hill Book Co. p. 133. ISBN 0-07-054234-1.
- ↑ Royden, H.L. and Fitzpatrick, P.M. (2010). Real Analysis (4 ed.). Boston: Prentice Hall. p. 93. ISBN 0-13-143747-X.
- ↑ Williams, David (1997). Probability with Martingales (Repr. ed.). Cambridge: Cambridge Univ. Press. pp. 126–132. ISBN 978-0-521-40605-5.
- ↑ Gut, Allan (2005). Probability: A Graduate Course. Springer. pp. 214–218. ISBN 0-387-22833-0.
- ↑ Bass, Richard F. (2011). Stochastic Processes. Cambridge: Cambridge University Press. pp. 356–357. ISBN 978-1-107-00800-7.
- ↑ Gut 2005, p. 214.
- ↑ Bass 2011, p. 348.
- ↑ Gut 2005, p. 236.
- ↑ Royden and Fitzpatrick 2010, p. 98.
- ↑ Bass 2011, p. 356.
- ↑ Gut 2005, pp. 215-216.
- ↑ Dellacherie, C. and Meyer, P.A. (1978). Probabilities and Potential, North-Holland Pub. Co, N. Y. (Chapter II, Theorem T25).
- ↑ Meyer, P.A. (1966). Probability and Potentials, Blaisdell Publishing Co, N. Y. (p.19, Theorem T22).
- ↑ Bogachev, Vladimir I. (2007). Measure Theory Volume I. Berlin Heidelberg: Springer-Verlag. p. 268. doi:10.1007/978-3-540-34514-5_4. ISBN 3-540-34513-2.
References
- Shiryaev, A.N. (1995). Probability (2 ed.). New York: Springer-Verlag. pp. 187–188. ISBN 978-0-387-94549-1.
- Diestel, J. and Uhl, J. (1977). Vector measures, Mathematical Surveys 15, American Mathematical Society, Providence, RI ISBN 978-0-8218-1515-1