<< Chapter < Page
  Random processes   Page 1 / 1
Chapter >> Page >
This module introduces sums of random variables.

Consider the random variable Y formed as the sum of two independent random variables X 1 and X 2 :

Y X 1 X 2
where X 1 has pdf f 1 x 1 and X 2 has pdf f 2 x 2 .

We can write the joint pdf for y and x 1 by rewriting the conditional probability formula:

f y x 1 f | y x 1 f 1 x 1
It is clear that the event ' Y takes the value y conditional upon X 1 x 1 ' is equivalent to X 2 taking a value y x 1 (since X 2 Y X 1 ). Hence
f | y x 1 f 2 y x 1
Now f y may be obtained using the Marginal Probability formula ( this equation from this discussion of probability density functions ). Hence
f y x 1 f | y x 1 f 1 x 1 x 1 f 2 y x 1 f 1 x 1 f 2 f 1
This result may be extended to sums of three or more randomvariables by repeated application of the above arguments for each new variable in turn. Since convolution is a commutativeoperation, for n independent variables we get:
f y f n f n - 1 f 2 f 1 f n f n - 1 f 2 f 1
An example of this effect occurs when multiple dice are thrown and the scores are added together. In the 2-dice example of thesubfigures a,b,c of this figure in the discussion of probability distributions, we saw how the pmf approximated a triangularshape. This is just the convolution of two uniform 6-point pmfs for each of the two dice.

Similarly if two variables with Gaussian pdfs are added together, we shall show in the discussion of the summation of two or more Gaussian random variables that this producesanother Gaussian pdf whose variance is the sum of the two input variances.

Get Jobilize Job Search Mobile App in your pocket Now!

Get it on Google Play Download on the App Store Now




Source:  OpenStax, Random processes. OpenStax CNX. Jan 22, 2004 Download for free at http://cnx.org/content/col10204/1.3
Google Play and the Google Play logo are trademarks of Google Inc.

Notification Switch

Would you like to follow the 'Random processes' conversation and receive update notifications?

Ask