Why are Gaussian Distributions Great?

Gaussian distributions are the most “natural” distributions. They show up everywhere. Here is a list of the properties that make me think that Gaussians are the most natural distributions:

  • The sum of several random variables (like dice) tends to be Gaussian. (Central Limit Theorem).
  • There are two natural ideas that appear in Statistics, the standard deviation and the maximum entropy principle. If you ask the question, “Among all distributions with standard deviation 1 and mean 0, what is the distribution with maximum entropy?” The answer is the Gaussian.
  • Randomly select a point inside a high dimensional hypersphere. The distribution of any particular coordinate is approximately Gaussian. The same is true for a random point on the surface of the hypersphere.
  • Take several samples from a Gaussian Distribution. Compute the Discrete Fourier Transform of the samples. The results have a Gaussian Distribution. I am pretty sure that the Gaussian is the only distribution with this property.
  • The eigenfunctions of the Fourier Transforms are products of polynomials and Gaussians.
  • The solution to the differential equation y’ = -x y is a Gaussian. This fact makes computations with Gaussians easier. (Higher derivatives involve Hermite polynomials.)
  • I think Gaussians are the only distributions closed under multiplication, convolution, and linear transformations.
  • Maximum likelihood estimators to problems involving Gaussians tend to also be the least squares solutions.
  • I think all solutions to stochastic differential equations involve Gaussians. (This is mainly a consequence of the Central Limit Theorem.
  • “The normal distribution is the only absolutely continuous distribution all of whose cumulants beyond the first two (i.e. other than the mean and variance) are zero.” – Wikipedia.
  • For even n, the nth moment of the Gaussian is simply an integer multiplied by the standard deviation to the nth power.
  • Many of the other standard distributions are strongly related to the Gaussian (i.e. binomial, Poisson, chi-squared, Student t, Rayleigh, Logistic, Log-Normal, Hypergeometric …)
  • “If X1 and X2 are independent and their sum X1 + X2 is distributed normally, then both X1 and X2 must also be normal.” — From the Wikipedia.
  • “The conjugate prior of the mean of a normal distribution is another normal distribution.” — From the Wikipedia.
  • When using Gaussians, the math is easier.
  • The Erdős–Kac theorem implies that the distribution of the prime factors of a “random” integer is Gaussian.
  • The velocities of random molecules in a gas are distributed as a Gaussian. (With standard deviation = $z*\sqrt{ k\, T / m} $ where $z$ is a “nice” constant, $m$ is the mass of the particle, and $k$ is Boltzmann’s constant.)
  • “A Gaussian function is the wave function of the ground state of the quantum harmonic oscillator.” — From Wikipedia
  • Kalman Filters.
  • The Gauss–Markov theorem.

3 comments

  1. antianticamper’s avatar

    Nassim Taleb would disagree, though he is interested in applications, not mathematics per se. Here is one place to start:

    http://www.fooledbyrandomness.com/GIF.pdf

  2. hundalhh’s avatar

    Hi antianticamper, I am very aware of Mr. Taleb‘s opinion. I think his book “The Black Swan” is wonderful.

    Thanks for the feedback!

  3. Arthur’s avatar

    Nice survey, except perhaps for the last one… Gauss–Markov theorem is derived without any assumption of normality of residuals, so it is odd to have that here. No ?

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