Email:
Password:
Register

Knowledgerush Search

 


Search for images of Covariance

Community Members

sundaypr…

rebhistory

desart

cherokee

egay gam…

pando

che khang

gettoღni…

fany
Welcome Publish Image - Publish Soapbox - Publish Poem
My Stuff - Add Image to My Profile - Edit My Profile
Message Boards - Post a New Topic
All Poems - All Soapbox

Covariance

In probability theory and statistics, the covariance between two real-valued random variables X and Y, with expected values E(X) = μ and E(Y) = ν is defined as:
This is equivalent to the following formula which is commonly used in actual calculations:

For column-vector valued random variables X and Y with respective expected values μ and ν, and n and m scalar components respectively, the covariance is defined to be the n×m matrix

If X and Y are independent, then their covariance is zero. This follows because under independence, E(X·Y) = E(X)·E(Y). The converse, however, is not true: it is possible that X and Y are not independent, yet their covariance is zero.

If X and Y are real-valued random variables and c is a constant ("constant", in this context, means non-random), then the following facts are a consequence of the definition of covariance:

For vector-valued random variables, cov(X, Y) and cov(Y, X) are each other's transposes.

The covariance is sometimes called a measure of "linear dependence" between the two random variables. That phrase does not mean the same thing that it means in a more formal linear algebraic setting (see linear dependence), although that meaning is not unrelated. The correlation is a closely related concept used to measure the degree of linear dependence between two variables.

Referenced By

Glossary of object-oriented programming | List of mathematical topics | List of mathematical topics (A-C) | List of mathematics topics | List of probability topics | List of statistical topics | ProbabilityApplications | Probability Applications


License

This article is licensed under the GNU Free Documentation License. It uses material from the Wikipedia article "Covariance".

History

View article history.

 

Start a Discussion, Reply, or Add Information

Consider sharing your essay or research on this topic. Others will benefit from your knowledge.

Your Pen Name (optional):
Subject:
Your Message:
Enter security code to post message (not needed for preview):
 

 

 

 

 

 

 

Contact UsPrivacy Statement & Terms of Use

 
Authors retain copyright and ownership of all postings. Please contact the author for rights to use or purchase.
Knowledgerush © 2009