In information theory, dual total correlation (Han 1978), information rate (Dubnov 2006), excess entropy (Olbrich 2008), or binding information (Abdallah and Plumbley 2010) is one of several known non-negative generalizations of mutual information. While
total correlation is bounded by the sum entropies of the ''n'' elements, the dual total correlation is bounded by the joint-entropy of the ''n'' elements. Although well behaved, dual total correlation has received much less attention than the total correlation. A measure known as "TSE-complexity" defines a continuum between the total correlation and dual total correlation (Ay 2001).
Definition
For a set of ''n''
random variable
A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
s
, the dual total correlation
is given by
:
where
is the
joint entropy of the variable set
and
is the
conditional entropy of variable
, given the rest.
Normalized
The dual total correlation normalized between
,1is simply the dual total correlation divided by its maximum value
,
:
Bounds
Dual total correlation is non-negative and bounded above by the joint entropy
.
:
Secondly, Dual total correlation has a close relationship with total correlation,
. In particular,
:
History
Han (1978) originally defined the dual total correlation as,
:
However Abdallah and Plumbley (2010) showed its equivalence to the easier-to-understand form of the joint entropy minus the sum of conditional entropies via the following:
:
See also
*
Interaction information
*
Mutual information
*
Total correlation
References
*
*
*
*
* {{cite arXiv , eprint=1012.1890v1, last1=Abdallah, first1=Samer A., last2=Plumbley, first2=Mark D., title=A measure of statistical complexity based on predictive information, year=2010, class=math.ST
* Nihat Ay, E. Olbrich, N. Bertschinger (2001). A unifying framework for complexity measures of finite systems. European Conference on Complex Systems
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Information theory
Probability theory
Covariance and correlation