Multivariate Probability Distributions
Multivariate probability distributions are the study of probability distributions of multiple random variables.
Random variables are functions that map the outcomes of a random experiment to real numbers. Whenever a collection of random variables are mentioned, they are always assumed to be defined on the same sample space.
Joint Probability Distribution#
Discrete Case#
In the discrete case, the joint probability distribution of a collection of random variables can be described by the joint probability function where
Note that we should have that for all and that
Continuous Case#
In the continuous case, the joint probability distribution of a collection of random variables can be described by a non-negative joint probability density function such that, for any subset , we have
Note the we should have that
Joint Cumulative Distribution Function#
The joint cumulative distribution function of a collection of random vector is defined as
for .
In the discrete case, we have that
In the continuous case, we have that
and
Marginal Probability Distribution#
Consider a collection of random variables .
Discrete Case#
The marginal probability distribution of is given by
Continuous Case#
The marginal probability distribution of is given by
Marginal Cumulative Distribution Function#
The marginal cumulative distribution function of is given by
Joint distribution determines the marginal distributions, but the converse is not true.
Conditional Probability Distribution#
Discrete Case#
The conditional probability distribution of given is given by
Continuous Case#
The conditional probability distribution of given is given by
It is important to note that one must be careful in distinguishing between types of conditional probability distributions. Suppose and are random variables. The conditional probability distribution is different from .
For the latter, we can use the definition of conditional probability to write
But for the former, the definition cannot be applied since . Instead, we use