[Home]Normal distribution

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Changed: 1c1
The normal or Gaussian probability distribution is actually a family of distributions of the same general form, differing only in their location and scale parameters, commonly called the mean and standard deviation.
The normal or Gaussian probability distribution is actually a family of distributions of the same general form, differing only in their location and scale parameters, commonly called the mean and standard deviation.

Changed: 3c3
The shape of a graph of the distribution consists of a central bulge centered on the mean with about 99% of the area under the density curve between the mean plus and minus three standard deviations. Its resemblance to the shape of a bell has led to the shape of the normal distribution being called the 'bell curve'.
The shape of a graph of the distribution consists of a central bulge centered on the mean with about 99.7% of the area under the density curve between the mean plus and minus three standard deviations. Its resemblance to the shape of a bell has led to the shape of the normal distribution being called the "bell curve".

Changed: 5,6c5
The [probability distribution function]? for the
normal distribution with mean μ and
The [probability distribution function]? for the normal distribution with mean μ and

Changed: 18c17,20
back to Probability -- Statistics
Back to Probability -- Statistics



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The normal or Gaussian probability distribution is actually a family of distributions of the same general form, differing only in their location and scale parameters, commonly called the mean and standard deviation.

The shape of a graph of the distribution consists of a central bulge centered on the mean with about 99.7% of the area under the density curve between the mean plus and minus three standard deviations. Its resemblance to the shape of a bell has led to the shape of the normal distribution being called the "bell curve".

The [probability distribution function]? for the normal distribution with mean μ and standard deviation σ is

p(x) = exp(-(x-μ)2/2σ2) / (2π)1/2σ

One reason that this distribution occurs so often in statistical work is the Central Limit Theorem. Simply stated, this theorem says that if you add up a lot of little things, the resulting distribution will resemble the normal distribution. More precisely: if you have n independent identically distributed random variables with mean 0 and standard deviation 1, then n-1/2 times their sum converges in distribution to the normal distribution with mean 0 and standard deviation 1.

Beware! There are random variables which do not have both a mean and a standard deviation. (The Cauchy distribution is a famous example.) Sums of such unfriendly random variables need not tend to normality.

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Last edited December 12, 2001 2:51 am by AxelBoldt (diff)
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