Cayley–Menger determinant

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In linear algebra, geometry, and trigonometry, the Cayley–Menger determinant is a formula for the content, i.e. the higher-dimensional volume, of a -dimensional simplex in terms of the squares of all of the distances between pairs of its vertices. The determinant is named after Arthur Cayley and Karl Menger.

The pairwise distance polynomials between n points in a real Euclidean space are Euclidean invariants that are associated via the Cayley-Menger relations.[1] These relations served multiple purposes such as generalising Heron's Formula, computing the content of a n-dimensional simplex, and ultimately determining if any real symmetric matrix is a Euclidean distance matrix in the field of Distance geometry.[2]

History edit

Karl Menger was a young geometry professor at the University of Vienna and Arthur Cayley was a British mathematician who specialized in algebraic geometry. Menger extended Cayley's algebraic excellence to propose a new axiom of metric spaces using the concepts of distance geometry and relation of congruence, known as the Cayley–Menger determinant. This ended up generalising one of the first discoveries in distance geometry, Heron's formula, which computes the area of a triangle given its side lengths.[3]

Definition edit

Let   be   points in  -dimensional Euclidean space, with  .[a] These points are the vertices of an n-dimensional simplex: a triangle when  ; a tetrahedron when  , and so on. Let   be the Euclidean distances between vertices   and  . The content, i.e. the n-dimensional volume of this simplex, denoted by  , can be expressed as a function of determinants of certain matrices, as follows:[4][5]

 

This is the Cayley–Menger determinant. For   it is a symmetric polynomial in the  's and is thus invariant under permutation of these quantities. This fails for   but it is always invariant under permutation of the vertices.[b]

Except for the final row and column of 1s, the matrix in the second form of this equation is a Euclidean distance matrix.

Special cases edit

2-Simplex edit

To reiterate, a simplex is an n-dimensional polytope and the convex hull of   points which do not lie in any   dimensional plane.[6] Therefore, a 2-simplex occurs when   and the simplex results in a triangle. Therefore, the formula for determining   of a triangle is provided below:[5]


 

As a result, the equation above presents the content of a 2-simplex (area of a planar triangle with side lengths  ,  , and  ) and it is a generalised form of Heron's Formula.[5]

3-Simplex edit

Similarly, a 3-simplex occurs when   and the simplex results in a tetrahedron.[6] Therefore, the formula for determining   of a tetrahedron is provided below:[5]

 

As a result, the equation above presents the content of a 3-simplex, which is the volume of a tetrahedron where the edge between vertices   and   has length  .[5]

Proof edit

Let the column vectors   be   points in  -dimensional Euclidean space. Starting with the volume formula

 

we note that the determinant is unchanged when we add an extra row and column to make an   matrix,

 

where   is the square of the length of the vector  . Additionally, we note that the   matrix

 

has a determinant of  . Thus,[7]

 

Generalization to hyperbolic and spherical geometry edit

There are spherical and hyperbolic generalizations.[8] A proof can be found here.[9]

In a spherical space of dimension   and constant curvature  , any   points satisfy

 

where  , and   is the spherical distance between points  .

In a hyperbolic space of dimension   and constant curvature  , any   points satisfy

 

where  , and   is the hyperbolic distance between points  .

Example edit

In the case of  , we have that   is the area of a triangle and thus we will denote this by  . By the Cayley–Menger determinant, where the triangle has side lengths  ,   and  ,

 

The result in the third line is due to the Fibonacci identity. The final line can be rewritten to obtain Heron's formula for the area of a triangle given three sides, which was known to Archimedes prior.[10]

In the case of  , the quantity   gives the volume of a tetrahedron, which we will denote by  . For distances between   and   given by  , the Cayley–Menger determinant gives[11][12]

 

Finding the circumradius of a simplex edit

Given a nondegenerate n-simplex, it has a circumscribed n-sphere, with radius  . Then the (n + 1)-simplex made of the vertices of the n-simplex and the center of the n-sphere is degenerate. Thus, we have

 

In particular, when  , this gives the circumradius of a triangle in terms of its edge lengths.

Set Classifications edit

From these determinants, we also have the following classifications:

Straight edit

A set Λ (with at least three distinct elements) is called straight if and only if, for any three elements A, B, and C of Λ,[13]

 

Plane edit

A set Π (with at least four distinct elements) is called plane if and only if, for any four elements A, B, C and D of Π,[13]

 

but not all triples of elements of Π are straight to each other;

Flat edit

A set Φ (with at least five distinct elements) is called flat if and only if, for any five elements A, B, C, D and E of Φ,[13]

 

but not all quadruples of elements of Φ are plane to each other; and so on.

Menger's Theorem edit

Karl Menger made a further discovery after the development of the Cayley–Menger determinant, which became known as Menger's Theorem. The theorem states:

A semimetric   is Euclidean of dimension n if and only if all Cayley-Menger determinants on   points is strictly positive, all determinants on   points vanish, and a Cayley-Menger determinant on at least one set of   points is nonnegative (in which case it is necessarily zero).[1]

In simpler terms, if every subset of   points can be isometrically embedded in an   but not generally  dimensional Euclidean space, then the semimetric is Euclidean of dimension   unless   consists of exactly   points and the Cayley–Menger determinant on those   points is strictly negative. This type of semimetric would be classified pseudo-Euclidean.[1]

Realization of a Euclidean distance matrix edit

Given the Cayley-Menger relations as explained above, the following section will bring forth two algorithms to decide whether a given matrix is a distance matrix corresponding to a Euclidean point set. The first algorithm will do so when given a matrix AND the dimension,  , via a geometric constraint solving algorithm. The second algorithm does so when the dimension,  , is not provided. This algorithm theoretically finds a realization of the full   Euclidean distance matrix in the smallest possible embedding dimension in quadratic time.

Theorem (d is given) edit

For the sake and context of the following theorem, algorithm, and example, slightly different notation will be used than before resulting in an altered formula for the volume of the   dimensional simplex below than above.

Theorem. An   matrix   is a Euclidean Distance Matrix if and only if for all   submatrices   of  , where  ,  . For   to have a realization in dimension  , if  , then  .[14]

As stated before, the purpose to this theorem comes from the following algorithm for realizing a Euclidean Distance Matrix or a Gramian Matrix.

Algorithm edit

Input
Euclidean Distance Matrix   or Gramian Matrix  .
Output
Pointset  
Procedure
  • If the dimension   is fixed, we can solve a system of polynomial equations, one for each inner product entry of  , where the variables are the coordinates of each point   in the desired dimension  .
  • Otherwise, we can solve for one point at a time.
    • Solve for the coordinates of   using its distances to all previously placed points  . Thus,   is represented by at most   coordinate values, ensuring minimum dimension and complexity.

Example edit

Let each point   have coordinates  . To place the first three points:

  1. Put   at the origin, so  .
  2. Put   on the first axis, so  .
  3. To place  :

   

In order to find a realization using the above algorithm, the discriminant of the distance quadratic system must be positive, which is equivalent to   having positive volume. In general, the volume of the   dimensional simplex formed by the   vertices is given by[14]

 .

In this formula above,   is the Cayley–Menger determinant. This volume being positive is equivalent to the determinant of the volume matrix being positive.

Theorem (d not given) edit

Let K be a positive integer and D be a n × n symmetric hollow matrix with nonnegative elements, with n ≥ 2. D is a Euclidean distance matrix with dim(D) = K if and only if there exist   and an index set I =   such that

 

where   realizes D, where   denotes the   component of the   vector.

The extensive proof of this theorem can be found at the following reference.[15]

Algorithm - K = edmsph(D, x) edit

Source:[15]

       

Γ  
if Γ   ∅; then
return
else if Γ  
 
else if Γ 
 
  ← expand( )
II ∪ {i}
KK + 1
else
error: dim aff(span( )) < K - 1
end if

end for return K

See also edit

Notes edit

  1. ^ An n-dimensional body can't be immersed into k-dimensional space if  
  2. ^ The (hyper)volume of a figure does not depend on its vertices' numbering order.

References edit

  1. ^ a b c Sitharam, Meera; St. John, Audrey; Sidman, Jessica. Handbook of Geometric Constraint Systems Principles. Boca Raton, FL: CRC Press. ISBN 978-1-4987-3891-0
  2. ^ http://ufo2.cise.ufl.edu/index.php/Distance_Geometry Distance Geometry
  3. ^ Six Mathematical Gems from the History of Distance Geometry
  4. ^ Sommerville, D. M. Y. (1958). An Introduction to the Geometry of n Dimensions. New York: Dover Publications.
  5. ^ a b c d e Cayley-Menger Determinant
  6. ^ a b Simplex Encyclopedia of Mathematics
  7. ^ "Simplex Volumes and the Cayley–Menger Determinant". www.mathpages.com. Archived from the original on 16 May 2019. Retrieved 2019-06-08.
  8. ^ Blumenthal, L. M.; Gillam, B. E. (1943). "Distribution of Points in n-Space". The American Mathematical Monthly. 50 (3): 181. doi:10.2307/2302400. JSTOR 2302400.
  9. ^ Tao, Terrence (2019-05-25). "The spherical Cayley–Menger determinant and the radius of the Earth". What's new. Retrieved 2019-06-10.
  10. ^ Heath, Thomas L. (1921). A History of Greek Mathematics (Vol II). Oxford University Press. pp. 321–323.
  11. ^ Audet, Daniel. "Déterminants sphérique et hyperbolique de Cayley–Menger" (PDF). Bulletin AMQ. LI: 45–52.
  12. ^ Dörrie, Heinrich (1965). 100 Great Problems of Elementary Mathematics. New York: Dover Publications. pp. 285–9.
  13. ^ a b c Distance Geometry Wiki Page
  14. ^ a b Sitharam, Meera. "Lecture 1 through 6"." Geometric Complexity CIS6930, University of Florida. Received 28 Mar.2020
  15. ^ a b Realizing Euclidean Distance Matrices by Sphere Intersection