Inverse Normal Distributions - How it all Works
The inverse normal distribution function allows us to calculate the value of a continuous random variable X, given the probability that X be less than that value. It is the inverse of the normal cumulative density function. We work through examples in which we learn how to use the inverse normal function and see how it is different from the normal cumulative density function.

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