TOPICS
Search

Dimension


The dimension of an object is a topological measure of the size of its covering properties. Roughly speaking, it is the number of coordinates needed to specify a point on the object. For example, a rectangle is two-dimensional, while a cube is three-dimensional. The dimension of an object is sometimes also called its "dimensionality."

The prefix "hyper-" is usually used to refer to the four- (and higher-) dimensional analogs of three-dimensional objects, e.g., hypercube, hyperplane.

The notion of dimension is important in mathematics because it gives a precise parameterization of the conceptual or visual complexity of any geometric object. In fact, the concept can even be applied to abstract objects which cannot be directly visualized. For example, the notion of time can be considered as one-dimensional, since it can be thought of as consisting of only "now," "before" and "after." Since "before" and "after," regardless of how far back or how far into the future they are, are extensions, time is like a line, a one-dimensional object.

To see how lower and higher dimensions relate to each other, take any geometric object (like a point, line, circle, plane, etc.), and "drag" it in an opposing direction (drag a point to trace out a line, a line to trace out a box, a circle to trace out a cylinder, a disk to a solid cylinder, etc.). The result is an object which is qualitatively "larger" than the previous object, "qualitative" in the sense that, regardless of how you drag the original object, you always trace out an object of the same "qualitative size." The point could be made into a straight line, a circle, a helix, or some other curve, but all of these objects are qualitatively of the same dimension. The notion of dimension was invented for the purpose of measuring this "qualitative" topological property.

Finite collections of objects (e.g., points in space) are considered 0-dimensional. Objects that are "dragged" versions of zero-dimensional objects are then called one-dimensional. Similarly, objects which are dragged one-dimensional objects are two-dimensional, and so on. Dimension is formalized in mathematics as the intrinsic dimension of a topological space. This dimension is called the Lebesgue covering dimension (also known simply as the topological dimension). The archetypal example is Euclidean n-space R^n, which has topological dimension n. The basic ideas leading up to this result (including the dimension invariance theorem, domain invariance theorem, and Lebesgue covering dimension) were developed by Poincaré, Brouwer, Lebesgue, Urysohn, and Menger.

There are several branchings and extensions of the notion of topological dimension. Implicit in the notion of the Lebesgue covering dimension is that dimension, in a sense, is a measure of how an object fills space. If it takes up a lot of room, it is higher dimensional, and if it takes up less room, it is lower dimensional. Hausdorff dimension (also called fractal dimension) is a fine tuning of this definition that allows notions of objects with dimensions other than integers. Fractals are objects whose Hausdorff dimension is different from their topological dimension.

The concept of dimension is also used in algebra, primarily as the dimension of a vector space over a field. This usage stems from the fact that vector spaces over the reals were the first vector spaces to be studied, and for them, their topological dimension can be calculated by purely algebraic means as the cardinal number of a maximal linearly independent subset. In particular, the dimension of a subspace of R^n is equal to the number of linearly independent vectors needed to generate it (i.e., the number of vectors in its basis). Given a transformation A of R^n,

 dim[Range(A)]+dim[Null(A)]=dim(R^n).

See also

Capacity Dimension, Codimension, Correlation Dimension, Exterior Dimension, Four-Dimensional Geometry, Fractal Dimension, Hausdorff Dimension, Kaplan-Yorke Dimension, Krull Dimension, Lebesgue Covering Dimension, Lyapunov Dimension, Poset Dimension, q-Dimension, Similarity Dimension, Vector Basis Explore this topic in the MathWorld classroom

Explore with Wolfram|Alpha

References

Abbott, E. A. Flatland: A Romance of Many Dimensions. New York: Dover, 1992.Croft, H. T.; Falconer, K. J.; and Guy, R. K. Unsolved Problems in Geometry. New York: Springer-Verlag, p. 8, 1991.Czyz, J. Paradoxes of Measures and Dimensions Originating in Felix Hausdorff's Ideas. Singapore: World Scientific, 1994.Hinton, C. H. The Fourth Dimension. Pomeroy, WA: Health Research, 1993.Manning, H. The Fourth Dimension Simply Explained. Magnolia, MA: Peter Smith, 1990.Manning, H. Geometry of Four Dimensions. New York: Dover, 1956.Neville, E. H. The Fourth Dimension. Cambridge, England: Cambridge University Press, 1921.Rucker, R. von Bitter. The Fourth Dimension: A Guided Tour of the Higher Universes. Boston, MA: Houghton Mifflin, 1984.Sommerville, D. M. Y. An Introduction to the Geometry of n Dimensions. New York: Dover, 1958.Weisstein, E. W. "Books about Dimensions." http://www.ericweisstein.com/encyclopedias/books/Dimensions.html.

Referenced on Wolfram|Alpha

Dimension

Cite this as:

Weisstein, Eric W. "Dimension." From MathWorld--A Wolfram Web Resource. https://mathworld.wolfram.com/Dimension.html

Subject classifications