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A number of distributions, notably Gaussian and Bernoulli, are known to satisfy certain concentration of measure inequalities. We will analyze this phenomenon from a more general perspective by considering the class of sub-Gaussian distributions [link] .
A random variable is called sub-Gaussian if there exists a constant such that
holds for all . We use the notation to denote that satisfies [link] .
The function is the moment-generating function of , while the upper bound in [link] is the moment-generating function of a Gaussian random variable. Thus, a sub-Gaussian distribution is one whose moment-generating function is bounded by that of a Gaussian. There are a tremendous number of sub-Gaussian distributions, but there are two particularly important examples:
If , i.e., is a zero-mean Gaussian random variable with variance , then . Indeed, as mentioned above, the moment-generating function of a Gaussian is given by , and thus [link] is trivially satisfied.
If is a zero-mean, bounded random variable, i.e., one for which there exists a constant such that with probability 1, then .
A common way to characterize sub-Gaussian random variables is through analyzing their moments. We consider only the mean and variance in the following elementary lemma, proven in [link] .
If then,
and
[link] shows that if then . In some settings it will be useful to consider a more restrictive class of random variables for which this inequality becomes an equality.
A random variable is called strictly sub-Gaussian if where , i.e., the inequality
holds for all . To denote that is strictly sub-Gaussian with variance , we will use the notation .
If , then .
If , i.e., is uniformly distributed on the interval , then .
Now consider the random variable with distribution such that
For any , . For , is not strictly sub-Gaussian.
We now provide an equivalent characterization for sub-Gaussian and strictly sub-Gaussian random variables, proven in [link] , that illustrates their concentration of measure behavior.
A random variable if and only if there exists a and a constant such that
for all . Moreover, if , then [link] holds for all with .
Finally, sub-Gaussian distributions also satisfy one of the fundamental properties of a Gaussian distribution: the sum of two sub-Gaussian random variables is itself a sub-Gaussian random variable. This result is established in more generality in the following lemma.
Suppose that , where each is independent and identically distributed (i.i.d.) with . Then for any , . Similarly, if each , then for any , .
Since the are i.i.d., the joint distribution factors and simplifies as:
If the are strictly sub-Gaussian, then the result follows by setting and observing that .
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