Sigma algebra: Difference between revisions
imported>Hendra I. Nurdin (some tweaking) |
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[[Measure theory]] | [[Measure theory]] | ||
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== External links == | == External links == | ||
* [http://www.probability.net/WEBdynkin.pdf Tutorial] on sigma algebra at probability.net | * [http://www.probability.net/WEBdynkin.pdf Tutorial] on sigma algebra at probability.net |
Revision as of 17:09, 20 December 2007
In mathematics, a sigma algebra is a formal mathematical structure intended among other things to provide a rigid basis for measure theory and axiomatic probability theory. In essence it is a collection of subsets of an arbitrary set that contains itself and which is closed under the taking complements (with respect to ) and countable unions. It is found to be just the right structure that allows construction of non-trivial and useful measures on which a rich theory of (Lebesque) integration can be developed which is much more general than Riemann integration.
Formal definition
Given a set , let be its power set, i.e. set of all subsets of . Then a subset F ⊆ P (i.e., F is a collection of subset of ) is a sigma algebra if it satisfies all the following conditions or axioms:
- If then
- If for then
Examples
- For any set S, the power set 2S itself is a σ algebra.
- The set of all Borel subsets of the real line is a sigma-algebra.
- Given the set = {Red, Yellow, Green}, the subset F = {{}, {Green}, {Red, Yellow}, {Red, Yellow, Green}} of is a σ algebra.
See also
External links
- Tutorial on sigma algebra at probability.net