correlation dimension
In chaos theory the correlation dimension[1] (denoted by ν) is a measure of the dimensionality of the space occupied by a set of random points (often referred to as a type of fractal dimension). For example, if we have a set of random points on the real number line between 0 and 1, the correlation dimension will be ν=1, while if they are distributed on say, a triangle embedded in 3-space (or m-space), the correlation dimension will be ν=2. This is what we would intuitively expect from a measure of dimension. The real utility of the correlation dimension is in determining the (possibly fractional) dimensions of fractal objects. There are other methods of measuring dimension (e.g. the Hausdorff dimension, the box-counting dimension, and the information dimension) but the correlation dimension has the advantage of being straightforwardly and quickly calculated, and is often in agreement with other calculations of dimension.
For any set of N points in an m-dimensional space
where i = 1,2,...N then the correlation
integral
is
calculated by:
where g is the total number of pairs of points which have a distance between them that is
less than distance
(a
graphical representation of such close pairs is the recurrence plot). As the number of
points tends to infinity, and the distance between them tends to zero, the correlation integral, for small values of
, will take the form:
If the number of points is sufficiently large, and evenly distributed, a Log-log graph
of the correlation integral versus
will yield an estimate of ν. This idea can be qualitatively understood by realizing that for higher dimensional
objects, there will be more ways for points to be close to each other, and so the number of pairs close to each other will rise
more rapidly for higher dimensions.
Grassberger and Procaccia introduced the technique in 1983[1]; the article gives the results of such estimates for a number of fractal objects, as well as comparing the values to other measures of fractal dimension. The technique can be used to distinguish between chaotic and truly random behavior. As another example, in the "Sun in Time" article[2], the method was used to show that the number of sunspots on the sun, after accounting for the known cycles such as the daily and 11-year cycles, is very likely not random noise, but rather chaotic noise, with a low-dimensional fractal attractor.
See also
References
- ^ a b P. Grassberger and I. Procaccia (1983). "Measuring the strangeness of strange attractors". Physica 9D: 189-208. doi:10.1016/0167-2789(83)90298-1
- ^ Sonett, C., Giampapa, M., and Matthews, M. (Eds.) (1992). The Sun in Time. University of Arizona Press. ISBN 0-8165-1297-3.
This entry is from Wikipedia, the leading user-contributed encyclopedia. It may not have been reviewed by professional editors (see full disclaimer)
![\vec x(i)=[x_{1}(i),x_{2}(i),\ldots,x_{m}(i)]](http://content.answers.com/main/content/wp/en/math/a/c/c/acc92d433d68e161f80f39c1c8193455.png)





