Bivariate & Trivariate Discrete Transformations
Direct Summation, Auxiliary Variables, and Convolutions
Bivariate Transformations
We have 2 discrete random variables and we know its distribution . We are interested in a random variable which is some function of :
We want to determine the probability distribution of .
Example 1
Consider the following bivariate probability distribution of and :
Find the probability distribution of .
Bivariate Transformation:
Hover over the joint table or the marginal table to trace the mappings.
0.167 Y=-3 | 0.167 Y=0 | 0.083 Y=1 | |
0.083 Y=-2 | 0.083 Y=1 | 0.000 Y=2 | |
0.167 Y=-1 | 0.167 Y=2 | 0.083 Y=3 |
-3 | 0.167 |
-2 | 0.083 |
-1 | 0.167 |
0 | 0.167 |
1 | 0.167 |
2 | 0.167 |
3 | 0.083 |
The Direct Method (Not 1-1 Transformation)
Direct Summation
We map each pair to :
By summing the probabilities for each unique , we get the distribution of .
The Auxiliary Variable Method (1-1 Transformation)
Auxiliary Transformation
We introduce an auxiliary variable , making the transformation one-to-one.
From , we obtain by summing over .
In general, let be a random vector with jpmf . is the support of .
Let and define a one-to-one transformation that maps onto , where is the support of .
Then, the jpmf of is:
Where is the single-valued inverse of .
From , we may obtain by summing over and by summing over .
Example 2
Let and be 2 independent random variables having Poisson distributions with the parameters and respectively.
Find the probability distribution of the r.v. .
Solution: Convolution of Poisson
By definition, takes values .
This shows that .
Trivariate Case
Example
Let have the joint discrete probability function given by:
Find the joint probability function of & .
Solution
First, compute and for each possible state:
The joint pdf of is compiled by summing the probabilities for matching pairs of :