I am working on some statistical code and exploring different ways of creating samples from random distributions - starting from a random number generator that generates uniform floating point values from 0 to 1
I know it is possible to generate approximate samples from a normal distribution by adding together a sufficiently large number of independent, identically distributed uniform random variables (by the central limit theorem).
Is it possible to do something similar to create samples from the logistic distribution? I'm assuming the samples to be added would need to be weighted or correlated somehow in order to avoid ending up with a normal.
P.S. I'm also aware there may be more efficient ways of generating random samples, I'm asking the question because I'm more interested in understanding how such a generator would work rather than efficiency....