Joint and Marginal Distributions: Suppose the random variables X and Y have joint probability density function (pdf) fX,Y(x,y). The value of the cumulative distribution function FY(y) of Y at c is then
FY(c) = P( Y ≤ c) = P(-∞ < X < ∞, Y ≤ c) = the volume under the graph of fX,Y(x,y) above the region ("half plane")
Setting up the integral to give this area, we get
Thus the pdf of Y is fY(y) = FY'(y) = g(y).
In other words, the marginal pdf of Y is
Similarly, the marginal pdf of X is
In words: The marginal pdf of X is ___________________________________________
Note: When X or Y is discrete, the corresponding integral becomes a sum
Joint and Conditional Distributions:
First consider the case when X and Y are both discrete. Then the marginal pdf's (or pmf's = probability mass functions, if you prefer this terminology for discrete random variables) are defined by
fY(y) = P(Y = y) and fX(x) = P(X = x).
The joint pdf is, similarly,
fX,Y(x,y) = P(X = x and Y = y).
The conditional pdf of the conditional distribution Y|X is
In words:
Is this also true for continuous X and Y? In other words:
It is enough to show that . (Draw a picture to help see why!).
Starting with the right side, we can reason as follows:
(Draw pictures to help see the steps!)
Summarizing: The conditional distribution Y|X has pdf
In word equations:
Conditional density of Y given
(and, of course, the symmetric equation holds for the conditional distribution of X given Y).
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