For two variables
and
,
 |
(1) |
where
denotes Standard Deviation and
is the Covariance of these two variables. For
the general case of variables
and
, where
, 2, ...,
,
 |
(2) |
where
are elements of the Covariance Matrix. In general, a correlation gives the strength of the
relationship between variables. The variance of any quantity is alway Nonnegative by
definition, so
 |
(3) |
From a property of Variances, the sum can be expanded
 |
(4) |
 |
(5) |
 |
(6) |
Therefore,
 |
(7) |
Similarly,
 |
(8) |
 |
(9) |
 |
(10) |
 |
(11) |
Therefore,
 |
(12) |
so
. For a linear combination of two variables,
Examine the cases where
,
 |
(14) |
 |
(15) |
The Variance will be zero if
, which requires that the argument of the
Variance is a constant. Therefore,
, so
. If
,
is either perfectly
correlated (
) or perfectly anticorrelated (
) with
.
See also Covariance, Covariance Matrix, Variance
© 1996-9 Eric W. Weisstein
1999-05-25