Chapter 12 Conditional densities
Conditional densities 12.1Overview Density functions determine continuous distributions. If a continuous distri-bution is calculated conditionally on some information, then the density is called a conditional density. When the conditioning information involves another random variable with a continuous distribution, the conditional den-
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