Joint entropy: Difference between revisions
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== References == |
== References == |
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* {{cite book |author1=Theresa M. Korn |author2=Korn, Granino Arthur |title=Mathematical Handbook for Scientists and Engineers: Definitions, Theorems, and Formulas for Reference and Review |publisher=Dover Publications |location=New York |year= |
* {{cite book |author1=Theresa M. Korn |author2=Korn, Granino Arthur |title=Mathematical Handbook for Scientists and Engineers: Definitions, Theorems, and Formulas for Reference and Review |publisher=Dover Publications |location=New York |year= |isbn=0-486-41147-8 |oclc= |doi=}} |
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* {{cite book |author1=Thomas M. Cover |author2=Joy A. Thomas |title=Elements of Information Theory |publisher=Wiley |location=Hoboken, New Jersey |year= |pages=613–614 |isbn=0-471-24195-4}} |
* {{cite book |author1=Thomas M. Cover |author2=Joy A. Thomas |title=Elements of Information Theory |publisher=Wiley |location=Hoboken, New Jersey |year= |pages=613–614 |isbn=0-471-24195-4}} |
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Revision as of 14:42, 20 July 2017
In information theory, joint entropy is a measure of the uncertainty associated with a set of variables.
Definition
The joint Shannon entropy (in bits) of two discrete random variables and is defined as
where and are particular values of and , respectively, is the joint probability of these values occurring together, and is defined to be 0 if .
For more than two random variables this expands to
where are particular values of , respectively, is the probability of these values occurring together, and is defined to be 0 if .
Properties
Nonnegativity
The joint entropy of a set of random variables is a nonnegative number.
Greater than individual entropies
The joint entropy of a set of variables is greater than or equal to all of the individual entropies of the variables in the set.
Less than or equal to the sum of individual entropies
The joint entropy of a set of variables is less than or equal to the sum of the individual entropies of the variables in the set. This is an example of subadditivity. This inequality is an equality if and only if and are statistically independent.
Relations to other entropy measures
Joint entropy is used in the definition of conditional entropy
- ,
and It is also used in the definition of mutual information
In quantum information theory, the joint entropy is generalized into the joint quantum entropy.
Joint differential entropy
Definition
The above definition is for discrete random variables and no more valid in the case of continous random variables. The continuous version of
discrete joint entropy is called joint differential (or continous) entropy.
Let and be a continous random variables with a joint probability density function . The
differential joint entropy is defined as
- .
For more than two continous random variables the definition is generalized to:
- .
Properties
As in the discrete case the joint differnential entropy of a set of random variables is smaller or equal than the sum of the entropies of the individual random variables:
The following chain rule holds for two random variables:
In the case of more than two random variables this generalizes to:
Joint differential entropy is also used in the definition of the mutal information between continous random variables:
References
- Theresa M. Korn; Korn, Granino Arthur. Mathematical Handbook for Scientists and Engineers: Definitions, Theorems, and Formulas for Reference and Review. New York: Dover Publications. ISBN 0-486-41147-8.
- Thomas M. Cover; Joy A. Thomas. Elements of Information Theory. Hoboken, New Jersey: Wiley. pp. 613–614. ISBN 0-471-24195-4.