normalapproximationer
Normalapproximationer is a coined term used to describe an approach, method, or practitioner that applies the normal approximation to discrete probability models. The core idea is to approximate the distribution of a discrete random variable by a normal distribution with the same mean and variance, using the central limit theorem as justification.
Common use cases include the binomial distribution, where X ~ Bin(n,p) is approximated by a normal distribution
The normalapproximationer may assess when the approximation is suitable, quantify its expected accuracy, and compare it
History and context: Normal approximations stem from the central limit theorem and the de Moivre–Laplace development,