Chapter 7 Continuous Distributions - Yale University
Continuous Distributions In Chapter 5 you met your rst example of a continuous distribution, the normal. Recall the general de nition. ... Continuous Distributions 6 Also, there is a set of R functions that gives useful results for the beta density. For example, the pictures on the next page could be drawn by a
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