Definitions
Entropy
- a measure of the uncertainty of a random variable
- The entropy of a random variable is a measure of the uncertainty of the random variable
- it is a measure of the amount of information required on the average to describe the random variable
Relative Entropy
- a measure of the distance between two distributions
- a measure of the inefficiency of assuming that the distribution is when the true distribution is .
Mutual Information
- a measure of the amount of information that one random variable contains about another random variable
Entropy
Definitions:
- Shannon entropy
- a measure of the uncertainty of a random variable
- The entropy of a random variable is a measure of the uncertainty of the random variable
- it is a measure of the amount of information required on the average to describe the random variable
Desired Properties[1]
- Uniform distributions have maximum uncertainty.
- Uncertainty is additive for independent events.
- Adding an outcome with zero probability has no effect.
- The measure of uncertainty is continuous in all its arguments.
- Uniform distributions with more outcomes have more uncertainty.
- Events have non-negative uncertainty.
- Events with a certain outcome have zero uncertainty.
- Flipping the arguments has no effect.
Formulation
The entropy of a discrete random variable, , is
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(1)
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where has a probability mass function (pmf), , and an alphabet .
Expected Value
For a discrete random variable, , with probability mass function, , the expected value of is
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(2)
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For a discrete random variable, , with probability mass function, , the expected value of is
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(3)
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Consider the case where . We get
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(4)
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Lemma 1: Entropy is greater than or equal to zero
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(5)
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Proof: Since , then , and subsequently, . Thus from Eq. (4) we get .
Lemma 2: Changing the logarithm base
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(6)
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Proof:
- Given that
- And since
- We get
Note that the entropy, , has units of bits for , or nats (natural units) for , or dits (decimal digits) for .
Joint Entropy
Definition:
- a measure of the uncertainty associated with a set of variables
The joint entropy of a pair of discrete random variables with joint pmf is defined as
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(7)
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References