Equilateral dimension explained
In mathematics, the equilateral dimension of a metric space is the maximum size of any subset of the space whose points are all at equal distances to each other. Equilateral dimension has also been called "metric dimension", but the term "metric dimension" also has many other inequivalent usages. The equilateral dimension of Euclidean space is
, achieved by the vertices of a regular
simplex, and the equilateral dimension of a
vector space with the
Chebyshev distance (
norm) is
, achieved by the vertices of a
hypercube. However, the equilateral dimension of a space with the
Manhattan distance (
norm) is not known.
Kusner's conjecture, named after Robert B. Kusner, states that it is exactly
, achieved by the vertices of a
cross polytope.
[1] Lebesgue spaces
The equilateral dimension has been particularly studied for Lebesgue spaces, finite-dimensional normed vector spaces with the
norm
The equilateral dimension of
spaces of dimension
behaves differently depending on the value of
:
, the
norm gives rise to
Manhattan distance. In this case, it is possible to find
equidistant points, the vertices of an axis-aligned
cross polytope. The equilateral dimension is known to be exactly
for
,
[2] and to be upper bounded by
for all
.
[3] Robert B. Kusner suggested in 1983 that the equilateral dimension for this case should be exactly
; this suggestion (together with a related suggestion for the equilateral dimension when
) has come to be known as
Kusner's conjecture.
, the equilateral dimension is at least
where
is a constant that depends on
.
[4]
, the
norm is the familiar
Euclidean distance. The equilateral dimension of
-dimensional
Euclidean space is
: the
vertices of an
equilateral triangle, regular tetrahedron, or higher-dimensional regular
simplex form an equilateral set, and every equilateral set must have this form.
[5]
, the equilateral dimension is at least
: for instance the
basis vectors of the vector space together with another vector of the form
for a suitable choice of
form an equilateral set. Kusner's conjecture states that in these cases the equilateral dimension is exactly
. Kusner's conjecture has been proven for the special case that
.
[4] When
is an odd integer the equilateral dimension is upper bounded by
.
[3]
(the limiting case of the
norm for finite values of
, in the limit as
grows to infinity) the
norm becomes the
Chebyshev distance, the maximum absolute value of the differences of the coordinates. For a
-dimensional vector space with the Chebyshev distance, the equilateral dimension is
: the
vertices of an axis-aligned
hypercube are at equal distances from each other, and no larger equilateral set is possible.
[5] Normed vector spaces
Equilateral dimension has also been considered for normed vector spaces with norms other than the
norms. The problem of determining the equilateral dimension for a given norm is closely related to the
kissing number problem: the kissing number in a normed space is the maximum number of disjoint translates of a unit ball that can all touch a single central ball, whereas the equilateral dimension is the maximum number of disjoint translates that can all touch each other.
For a normed vector space of dimension
, the equilateral dimension is at most
; that is, the
norm has the highest equilateral dimension among all normed spaces.
[6] asked whether every normed vector space of dimension
has equilateral dimension at least
, but this remains unknown. There exist normed spaces in any dimension for which certain sets of four equilateral points cannot be extended to any larger equilateral set
[6] but these spaces may have larger equilateral sets that do not include these four points. For norms that are sufficiently close in
Banach–Mazur distance to an
norm, Petty's question has a positive answer: the equilateral dimension is at least
.
[7] It is not possible for high-dimensional spaces to have bounded equilateral dimension: for any integer
, all normed vector spaces of sufficiently high dimension have equilateral dimension at least
.
[8] more specifically, according to a variation of
Dvoretzky's theorem by, every
-dimensional normed space has a
-dimensional subspace that is close either to a Euclidean space or to a Chebyshev space, where
for some constant
. Because it is close to a Lebesgue space, this subspace and therefore also the whole space contains an equilateral set of at least
points. Therefore, the same superlogarithmic dependence on
holds for the lower bound on the equilateral dimension of
-dimensional space.
[7] Riemannian manifolds
For any
-dimensional
Riemannian manifold the equilateral dimension is at least
.
[5] For a
-dimensional
sphere, the equilateral dimension is
, the same as for a Euclidean space of one higher dimension into which the sphere can be embedded.
[5] At the same time as he posed Kusner's conjecture, Kusner asked whether there exist Riemannian metrics with bounded dimension as a manifold but arbitrarily high equilateral dimension.
[5] References
Notes and References
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