In
mathematics
Mathematics is a field of study that discovers and organizes methods, Mathematical theory, theories and theorems that are developed and Mathematical proof, proved for the needs of empirical sciences and mathematics itself. There are many ar ...
, especially in
probability
Probability is a branch of mathematics and statistics concerning events and numerical descriptions of how likely they are to occur. The probability of an event is a number between 0 and 1; the larger the probability, the more likely an e ...
and
combinatorics
Combinatorics is an area of mathematics primarily concerned with counting, both as a means and as an end to obtaining results, and certain properties of finite structures. It is closely related to many other areas of mathematics and has many ...
, a doubly stochastic matrix
(also called bistochastic matrix) is a
square matrix of nonnegative
real number
In mathematics, a real number is a number that can be used to measure a continuous one- dimensional quantity such as a duration or temperature. Here, ''continuous'' means that pairs of values can have arbitrarily small differences. Every re ...
s, each of whose rows and columns sums to 1, i.e.,
:
Thus, a doubly stochastic matrix is both left
stochastic Stochastic (; ) is the property of being well-described by a random probability distribution. ''Stochasticity'' and ''randomness'' are technically distinct concepts: the former refers to a modeling approach, while the latter describes phenomena; i ...
and right stochastic.
Indeed, any matrix that is both left and right stochastic must be
square
In geometry, a square is a regular polygon, regular quadrilateral. It has four straight sides of equal length and four equal angles. Squares are special cases of rectangles, which have four equal angles, and of rhombuses, which have four equal si ...
: if every row sums to 1 then the sum of all entries in the matrix must be equal to the number of rows, and since the same holds for columns, the number of rows and columns must be equal.
Birkhoff polytope
The class of
doubly stochastic matrices is a
convex polytope known as the Birkhoff polytope
. Using the matrix entries as
Cartesian coordinates
In geometry, a Cartesian coordinate system (, ) in a plane is a coordinate system that specifies each point uniquely by a pair of real numbers called ''coordinates'', which are the signed distances to the point from two fixed perpendicular o ...
, it lies in an
-dimensional affine subspace of
-dimensional
Euclidean space
Euclidean space is the fundamental space of geometry, intended to represent physical space. Originally, in Euclid's ''Elements'', it was the three-dimensional space of Euclidean geometry, but in modern mathematics there are ''Euclidean spaces ...
defined by
independent linear constraints specifying that the row and column sums all equal 1. (There are
constraints rather than
because one of these constraints is dependent, as the sum of the row sums must equal the sum of the column sums.) Moreover, the entries are all constrained to be non-negative and less than or equal to 1.
Birkhoff–von Neumann theorem
The Birkhoff–von Neumann theorem (often known simply as Birkhoff's theorem
[W. B. Jurkat and H. J. Ryser, "Term Ranks and Permanents of Nonnegative Matrices" (1967).]) states that the polytope is the convex hull
In geometry, the convex hull, convex envelope or convex closure of a shape is the smallest convex set that contains it. The convex hull may be defined either as the intersection of all convex sets containing a given subset of a Euclidean space, ...
of the set of permutation matrices
In mathematics, particularly in Matrix (mathematics), matrix theory, a permutation matrix is a square binary matrix that has exactly one entry of 1 in each row and each column with all other entries 0. An permutation matrix can represent a permu ...
, and furthermore that the vertices of are precisely the permutation matrices. In other words, if is a doubly stochastic matrix, then there exist and permutation matrices such that
:
(Such a decomposition of ''X'' is known as a 'convex combination'.) A proof of the theorem based on Hall's marriage theorem is given below.
This representation is known as the Birkhoff–von Neumann decomposition, and may not be unique. It is often described as a real-valued generalization of Kőnig's theorem, where the correspondence is established through adjacency matrices of graphs.
Properties
* The product of two doubly stochastic matrices is doubly stochastic. However, the inverse of a nonsingular doubly stochastic matrix need not be doubly stochastic (indeed, the inverse is doubly stochastic if it has nonnegative entries).
* The stationary distribution of an irreducible aperiodic finite Markov chain
In probability theory and statistics, a Markov chain or Markov process is a stochastic process describing a sequence of possible events in which the probability of each event depends only on the state attained in the previous event. Informally ...
is uniform if and only if its transition matrix is doubly stochastic.
* Sinkhorn's theorem states that any matrix with strictly positive entries can be made doubly stochastic by pre- and post-multiplication by diagonal matrices.
* For , all bistochastic matrices are unistochastic and orthostochastic, but for larger this is not the case.
* Van der Waerden's conjecture that the minimum permanent among all doubly stochastic matrices is , achieved by the matrix for which all entries are equal to . Proofs of this conjecture were published in 1980 by B. Gyires and in 1981 by G. P. Egorychev and D. I. Falikman; for this work, Egorychev and Falikman won the Fulkerson Prize in 1982.Fulkerson Prize
Mathematical Optimization Society, retrieved 2012-08-19.
Proof of the Birkhoff–von Neumann theorem
Let ''X'' be a doubly stochastic matrix. Then we will show that there exists a permutation matrix ''P'' such that ''xij'' ≠ 0 whenever ''pij'' ≠ 0. Thus if we let λ be the smallest ''xij'' corresponding to a non-zero ''pij'', the difference ''X'' – λ''P'' will be a scalar multiple of a doubly stochastic matrix and will have at least one more zero cell than ''X''. Accordingly we may successively reduce the number of non-zero cells in ''X'' by removing scalar multiples of permutation matrices until we arrive at the zero matrix, at which point we will have constructed a convex combination of permutation matrices equal to the original ''X''.[Birkhoff's theorem]
notes by Gábor Hetyei.
For instance if then
, , and
.
''Proof:'' Construct a bipartite graph in which the rows of ''X'' are listed in one part and the columns in the other, and in which row ''i'' is connected to column ''j'' iff ''xij'' ≠ 0. Let ''A'' be any set of rows, and define ''A'' as the set of columns joined to rows in ''A'' in the graph. We want to express the sizes , ''A'', and , ''A, of the two sets in terms of the ''xij''.
For every ''i'' in ''A'', the sum over ''j'' in ''A of ''xij'' is 1, since all columns ''j'' for which ''xij'' ≠ 0 are included in ''A'', and ''X'' is doubly stochastic; hence , ''A'', is the sum over all ''i'' ∈ ''A'', ''j'' ∈ ''A'' of ''xij''.
Meanwhile , ''A'', is the sum over all ''i'' (whether or not in ''A'') and all ''j'' in ''A'' of ''xij'' ; and this is ≥ the corresponding sum in which the ''i'' are limited to rows in ''A''. Hence , ''A'', ≥ , ''A'', .
It follows that the conditions of Hall's marriage theorem are satisfied, and that we can therefore find a set of edges in the graph which join each row in ''X'' to exactly one (distinct) column. These edges define a permutation matrix whose non-zero cells correspond to non-zero cells in ''X''.
Generalisations
There is a simple generalisation to matrices with more columns and rows such that the ''i th'' row sum is equal to ''ri'' (a positive integer), the column sums are equal to 1, and all cells are non-negative (the sum of the row sums being equal to the number of columns). Any matrix in this form can be expressed as a convex combination of matrices in the same form made up of 0s and 1s. The proof is to replace the ''i th'' row of the original matrix by ''ri'' separate rows, each equal to the original row divided by ''ri'' ; to apply Birkhoff's theorem to the resulting square matrix; and at the end to additively recombine the ''ri'' rows into a single ''i th'' row.
In the same way it is possible to replicate columns as well as rows, but the result of recombination is not necessarily limited to 0s and 1s. A different generalisation (with a significantly harder proof) has been put forward by R. M. Caron et al.[R. M. Caron, Xin Li, P. Mikusiński, H. Sherwood, and M. D. Taylor,
''Nonsquare “doubly stochastic” matrices'',
in: ''Distributions with Fixed Marginals and Related Topics'', IMS Lecture Notes – Monographs Series, edited by L. Rüschendorf, B. Schweizer, and M. D. Taylor,
vol. 28, pp. 65-75 (1996) ]
DOI:10.1214/lnms/1215452610
/ref>
See also
* Stochastic matrix
*Unistochastic matrix In mathematics, a unistochastic matrix (also called ''unitary-stochastic'') is a doubly stochastic matrix whose entries are the squares of the absolute values of the entries of some unitary matrix.
A square matrix ''B'' of size ''n'' is doubly stoc ...
* Birkhoff algorithm
References
*
External links
PlanetMath page on Birkhoff–von Neumann theorem
PlanetMath page on proof of Birkhoff–von Neumann theorem
{{Matrix classes
Matrices (mathematics)