Difference between revisions of "Entropy, Relative Entropy, Mutual Information"

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** it is a measure of the amount of information required on the average to describe the random variable
 
** it is a measure of the amount of information required on the average to describe the random variable
  
The entropy of a discrete random variable, <math>X</math>, is
+
The ''entropy'' of a discrete random variable, <math>X</math>, is
  
 
{{NumBlk|:|<math>H\left(X\right)=-\sum_{x\in \mathcal{X}} p\left(x\right) \cdot\log_2 p\left(x\right)</math>|{{EquationRef|1}}}}
 
{{NumBlk|:|<math>H\left(X\right)=-\sum_{x\in \mathcal{X}} p\left(x\right) \cdot\log_2 p\left(x\right)</math>|{{EquationRef|1}}}}

Revision as of 18:30, 25 June 2020

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:

  • 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

The entropy of a discrete random variable, , is

 

 

 

 

(1)

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

 

 

 

 

(2)

For a discrete random variable, , with probability mass function, , the expected value of is

 

 

 

 

(3)

Consider the case where . We get

 

 

 

 

(4)

Lemma 1: Entropy is greater than or equal to zero

 

 

 

 

(5)

Proof: Since , then , and subsequently, . Thus from Eq. (4) we get .

Lemma 2: Changing the logarithm base

 

 

 

 

(6)

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 a joint distribution is defined as