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Encyclopedia > Illustration of the central limit theorem

Here is an illustration of the central limit theorem. A probability density function is shown in the first figure. Then the densities of the sums of two, three, and four independent variables, each having the original density, are shown in the later figures. Although the original density is far from normal, the density of the sum of just a few variables with that density is much smoother and has some of the qualitative features of the normal density.


A more concrete illustration, in which most of the arithmetic can be done more-or-less instantly by hand, is at concrete illustration of the central limit theorem. There is also a free full-featured interactive simulation available which allows to set up various distributions and adjust the sampling parameters (see "external links" at the bottom of this page).


The densities of the sums of two, three, and four terms were constructed as the convolution of the original density with itself. As the original density is a piecewise polynomial (of degree 0 and 1), the convolutions are also piecewise polynomials, of increasing degree. Thus the convolution of the original density may be considered a means of constructing a piecewise polynomial approximation to the normal density.


The convolutions were computed via the discrete Fourier transform. A list of values y = f(x0 + k Δx) was constructed, where f is the original density function, and Δx is approximately equal to 0.002, and k is equal to 0 through 1000. The discrete Fourier transform Y of y was computed. Then the convolution of f with itself is proportional to the inverse discrete Fourier transform of the pointwise product of Y with itself.



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A probability density function

We start with a probability density function. This function, although discontinuous, is far from the most pathological example that could be created. The mean of this distribution is 0 and its standard deviation is 1.



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Density of a sum of two variables

Next we compute the density of the sum of two independent variables, each having the above density. The density of the sum is the convolution of the above density with itself.


The sum of two variables has mean 0. The density shown in the figure at right has been rescaled by √2 so that its standard deviation is 1.


This density is already smoother than the original. There are obvious lumps, which correspond to the intervals on which the original density was defined.



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Density of a sum of three variables

We then compute the density of the sum of three independent variables, each having the above density. The density of the sum is the convolution of the first density with the second.


The sum of three variables has mean 0. The density shown in the figure at right has been rescaled by √3 so that its standard deviation is 1.


This density is even smoother than the preceding one. The lumps can hardly be detected in this figure.



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Density of a sum of four variables

Finally, we compute the density of the sum of four independent variables, each having the above density. The density of the sum is the convolution of the first density with the third.


The sum of four variables has mean 0. The density shown in the figure at right has been rescaled by √4 = 2 so that its standard deviation is 1.


This density appears qualitatively very similar to a normal density. Any lumps cannot be distinguished by the eye.


External links

  • Intertactive Simulation of the Central Limit Theorem (http://www.vias.org/simulations/simusoft_cenlimit.html)

  Results from FactBites:
 
Britain.tv Wikipedia - Central limit theorem (1323 words)
But, this limit is just the characteristic function of a standard normal distribution, N(0,1), and the central limit theorem follows from the Lévy continuity theorem, which confirms that the convergence of characteristic functions implies convergence in distribution.
Thus the central limit theorem can be interpreted as a statement about the properties of density functions under convolution: the convolution of a number of density functions tends to the normal density as the number of density functions increases without bound, under the conditions stated above.
There are some theorems which treat the case of sums of non-independent variables, for instance the m-dependent central limit theorem, the martingale central limit theorem and the central limit theorem for mixing processes.
Illustration of the central limit theorem - Wikipedia, the free encyclopedia (581 words)
Here is an illustration of the central limit theorem.
Although the original density is far from normal, the density of the sum of just a few variables with that density is much smoother and has some of the qualitative features of the normal density.
A more concrete illustration, in which most of the arithmetic can be done more-or-less instantly by hand, is at concrete illustration of the central limit theorem.
  More results at FactBites »


 

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