Statistics for Normal Random Variables
Let the set of independent and identically distributed random variables X1, Xparameters mX and s2X. These 2, ..., Xm be normally distributed with random variables correspond to a sample of m observations from a N(mX, s2X) population. Their mean and sample variance is given by
Because the Xi 's are N(mX, s2X) random variables, the random variable X1 + X2 + ... + Xm is a N(mmX, ms2X) random variable. Therefore
The normality of the Xi's makes it possible for certain statistics involving these random variables to withhave an exact (not approximate) probability distribution a familiar form, Specifically,i's e.g., having a normal (or related) distribution.
Consider another set of independent and normally distributed random variables Y1, Y2, ..., Yn having parameters mY and s2Y. These random variables correspond to a sample of n observations from a N(mY, s2Y ) population. Their mean and sample variance is given by
Since the Yi 's are N(mY, s2Y ) random variables, the random variable X1 + X2 + ... + Xm is a N(mmX, ms2X) random variable. Therefore
and, just like with the Xi's,
If the variances s2X and s2Y are unknown but equal to each other, then
where
If the variances s2X and s2Y are unknown and not equal to each other, the distribution of has a form that is quite mathematically complex.
The variances s2X and s2Y have the following relationship:
All these test statistics have an exact (or approximate, for large sample sizes) probability distribution with the same form as a normal, chi-square, Student t and F distribution. They are used in hypothesis testing and the construction of confidence intervals for significant population parameters.