Sub-Gaussian distribution

In probability theory, a subgaussian distribution, the distribution of a subgaussian random variable, is a probability distribution with strong tail decay. More specifically, the tails of a subgaussian distribution are dominated by (i.e. decay at least as fast as) the tails of a Gaussian. This property gives subgaussian distributions their name.

Often in analysis, we divide an object (such as a random variable) into two parts, a central bulk and a distant tail, then analyze each separately. In probability, this division usually goes like "Everything interesting happens near the center. The tail event is so rare, we may safely ignore that." Subgaussian distributions are worthy of study, because the gaussian distribution is well-understood, and so we can give sharp bounds on the rarity of the tail event. Similarly, the subexponential distributions are also worthy of study.

Formally, the probability distribution of a random variable is called subgaussian if there is a positive constant C such that for every ,

.

There are many equivalent definitions. For example, a random variable is sub-Gaussian iff its distribution function is bounded from above (up to a constant) by the distribution function of a Gaussian:

where is constant and is a mean zero Gaussian random variable.[1]: Theorem 2.6 

  1. ^ Cite error: The named reference Wainwright2019 was invoked but never defined (see the help page).