I am trying to understand in layman's terms how the anscombe transform converts a poisson distribution into a normal distribution. So, why is a log transform not sufficient in its own to obtain the normal distribution.
I understand that anscombe transform performs a variance stabilization. Is this somewhat similar to applying a z-score transform/standardisation, such that variance tends to 1 or constant? Is it such that log transform on its own is not able to produce a stable enough variance even though the distribution become normal?
@Henry so it is the case that anscombe stabilises the variance, whilst the log transform transforms the standard deviation? "Adjusting for the mean of the square root of the sum (a little less than √nμ) also gives convergence in distribution to a normal distribution" - why does the anscombe transform not take this mean into account to transform distribution towards normal? I understand that "Poisson random variable can take the value 0 with positive probability" is an issue for log normal transform, but why not just do a z score i.e. subtract mean and divide standard deviation? That would also result in a normal distribution. Would not this achieve what log and anscombe transform does in combination?