In information theory, Gibbs' inequality is a statement about the information entropy of a discrete probability distribution. Several other bounds on the entropy of probability distributions are derived from Gibbs' inequality, including Fano's inequality.
It was first presented by J. Willard Gibbs in the 19th century.
Gibbs' inequality
Suppose that
and
are discrete probability distributions. Then

with equality if and only if
for
.[1]: 68 Put in words, the information entropy of a distribution
is less than or equal to its cross entropy with any other distribution
.
The difference between the two quantities is the Kullback–Leibler divergence or relative entropy, so the inequality can also be written:[2]: 34

Note that the use of base-2 logarithms is optional, and
allows one to refer to the quantity on each side of the inequality as an
"average surprisal" measured in bits.
Proof
For simplicity, we prove the statement using the natural logarithm, denoted by ln, since

so the particular logarithm base b > 1 that we choose only scales the relationship by the factor 1 / ln b.
Let
denote the set of all
for which pi is non-zero. Then, since
for all x > 0, with equality if and only if x=1, we have:


The last inequality is a consequence of the pi and qi being part of a probability distribution. Specifically, the sum of all non-zero values is 1. Some non-zero qi, however, may have been excluded since the choice of indices is conditioned upon the pi being non-zero. Therefore, the sum of the qi may be less than 1.
So far, over the index set
, we have:
,
or equivalently
.
Both sums can be extended to all
, i.e. including
, by recalling that the expression
tends to 0 as
tends to 0, and
tends to
as
tends to 0. We arrive at

For equality to hold, we require
for all
so that the equality
holds,
- and
which means
if
, that is,
if
.
This can happen if and only if
for
.
Alternative proofs
The result can alternatively be proved using Jensen's inequality, the log sum inequality, or the fact that the Kullback-Leibler divergence is a form of Bregman divergence.
Proof by Jensen's inequality
Because log is a concave function, we have that:

where the first inequality is due to Jensen's inequality, and
being a probability distribution implies the last equality.
Furthermore, since
is strictly concave, by the equality condition of Jensen's inequality we get equality when

and
.
Suppose that this ratio is
, then we have that

where we use the fact that
are probability distributions. Therefore, the equality happens when
.
Proof by Bregman divergence
Alternatively, it can be proved by noting thatfor all
, with equality holding iff
. Then, sum over the states, we havewith equality holding iff
.
This is because the KL divergence is the Bregman divergence generated by the function
.
Corollary
The entropy of
is bounded by:[1]: 68

The bound is achieved when
for all i.
See also
References
- ^ a b Pierre Bremaud (6 December 2012). An Introduction to Probabilistic Modeling. Springer Science & Business Media. ISBN 978-1-4612-1046-7.
- ^ David J. C. MacKay (25 September 2003). Information Theory, Inference and Learning Algorithms. Cambridge University Press. ISBN 978-0-521-64298-9.