Central limit theorem: Difference between revisions

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imported>Doug Williamson
(Removed link)
imported>Doug Williamson
(Identify context as financial maths & link with Normal distribution page.)
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It states formally that the average of a large number of independent identically distributed random variables will have a normal distribution.
''Financial maths.''
 
The central limit theorem states formally that the average of a large number of independent identically distributed random variables will have a normal distribution.


The central limit theorem is important in sampling theory.  It explains that sample means follow a normal distribution - regardless of the actual distribution of the parent population - and that the sample mean is an unbiased estimate of the parent population mean.
The central limit theorem is important in sampling theory.  It explains that sample means follow a normal distribution - regardless of the actual distribution of the parent population - and that the sample mean is an unbiased estimate of the parent population mean.
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== See also ==
== See also ==
* [[Mean]]
* [[Normal distribution]]
* [[Sample]]
* [[Sample]]
* [[Sampling]]
* [[Sampling]]
[[Category:Identify_and_assess_risks]]

Revision as of 20:05, 2 September 2018

Financial maths.

The central limit theorem states formally that the average of a large number of independent identically distributed random variables will have a normal distribution.

The central limit theorem is important in sampling theory. It explains that sample means follow a normal distribution - regardless of the actual distribution of the parent population - and that the sample mean is an unbiased estimate of the parent population mean.

The central limit theorem also explains why larger samples will - on average - produce better estimates of the parent population mean.

The central limit theorem is sometimes known as the law of large numbers.


See also