Stochastic convergence: Difference between revisions

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== See also ==
== See also ==
*[[Stochastic differential equations]]


==Related topics==
*[[Probability]]
*[[Probability theory]]
*[[Differential equations]]
*[[Stochastic modeling]]





Revision as of 11:21, 28 June 2007

Stochastic convergence is a mathematical concept intended to formalize the idea that a sequence of essentially random or unpredictable events sometimes tends to settle into a pattern.

Four different varieties of stochastic convergence are noted:

  • Almost sure convergence
  • Convergence in probability
  • Convergence in distribution
  • Convergence in nth order mean


Almost sure convergence

Example

We may keep tossing a die an infinite number of times and at every toss note the average outcome so far. The exact number thus obtained after each toss will be unpredictable, but for a fair die, it will tend to get closer and closer to the arithmetic average of 1,2,3,4,5 and 6, i.e. 3.5.

Formal definition

Convergence in probability

Example

Consider a short lived animal of some species. We may note the exact amount of food the animal consumes day by day. This sequence of numbers will be unpredictable in advance, but we may be quite certain that one day the number will be zero, and stay zero forever after.

Formal definition

Convergence in distribution

Example

Formal definition

Convergence in nth order mean

Example

Formal definition

See also

Related topics


References

External links