Entropy of a probability distribution: Difference between revisions
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Revision as of 15:32, 30 June 2007
The entropy of a probability distribution is a number that describes the degree of uncertainty or disorder the distribution represents.
Examples
Assume we have a set of two mutually exclusive propositions (or equivalently, a random experiment with two possible outcomes). Assume all two possiblities are equally likely.
Then our advance uncertainty about the eventual outcome is rather small - we know in advance it will be one of exactly two known alternatives.
Assume now we have a set of a million alternatives - all of them equally likely - rather than two.
It seems clear that our uncertainty now about the eventual outcome will be much bigger.
Formal definitions
- Given a discrete probability distribution function f, the entropy H of the distribution is given by
- Given a continuous probability distribution function f, the entropy H of the distribution is given by
Note that some authors prefer to use the natural logarithm rather than base two.
See also
- Discrete probability distribution
- Continuous probability distribution
- Probability
- Probability theory