How do distribution fitness-tests, ex.
scipy.stats.norm.fit work? Investigation of scipy source code led me to
rv_continuous.fit method, but it looks like beating the air. What algorithms are used, Pearson's chi-squared test or some other ones?
UPD As I understood optimization algorithm inside
fit finds maximum likelihood estimation. But for example for
scipy.stats.norm, maximum likelihood is well-known - it is sample mean for normal mean and square root from sample variance - for sigma. Why it isn't calculated direclty?