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{{about|a partial ordering of vectors on '''''R'''''<sup>d</sup>|functions |Lorenz ordering}}
 
In [[mathematics]], '''majorization''' is a [[preorder]] on [[vector space|vectors]] of [[real numbers]]. For a vector <math>\mathbf{a}\in\mathbb{R}^d</math>, we denote by <math>\mathbf{a}^{\downarrow}\in\mathbb{R}^d</math> the vector with the same components, but  sorted in descending order.
Given <math>\mathbf{a},\mathbf{b} \in \mathbb{R}^d</math>, we say that
<math> \mathbf{a} </math> '''weakly majorizes''' (or dominates) <math> \mathbf{b} </math> '''from below''' written as <math> \mathbf{a} \succ_w \mathbf{b} </math> [[iff]]
 
: <math> \sum_{i=1}^k a_i^{\downarrow} \geq \sum_{i=1}^k b_i^{\downarrow} \quad \text{for } k=1,\dots,d,</math>
 
where <math>a^{\downarrow}_i</math> and <math>b^{\downarrow}_i</math> are the [[element (mathematics)|elements]] of <math>\mathbf{a}</math> and <math>\mathbf{b}</math>, respectively, sorted in decreasing order.
Equivalently, we say that <math>\mathbf{b}</math> is '''weakly majorized''' (or dominated) by <math>\mathbf{a}</math> '''from below''', denoted as <math> \mathbf{b} \prec_w \mathbf{a} </math>.
 
Similarly, we say that
<math> \mathbf{a} </math> '''weakly majorizes''' <math> \mathbf{b} </math> '''from above''' written as <math> \mathbf{a} \succ^w \mathbf{b} </math> [[iff]]
 
: <math> \sum_{i=k}^d a_i^{\downarrow} \leq \sum_{i=k}^d b_i^{\downarrow} \quad \text{for } k=1,\dots,d,</math>
 
Equivalently, we say that <math>\mathbf{b}</math> is '''weakly majorized''' by <math>\mathbf{a}</math> '''from above''', denoted as <math> \mathbf{b} \prec^w \mathbf{a} </math>.
 
If <math> \mathbf{a} \succ_w \mathbf{b} </math>  and in addition <math>\sum_{i=1}^d a_i = \sum_{i=1}^d b_i</math>  we say that
<math> \mathbf{a} </math> '''majorizes''' (or dominates) <math> \mathbf{b} </math> written as <math> \mathbf{a} \succ \mathbf{b} </math>.
Equivalently, we say that <math>\mathbf{b}</math> is '''majorized''' (or dominated) by <math>\mathbf{a}</math>, denoted as <math> \mathbf{b} \prec \mathbf{a} </math>.
 
It is easy to see that <math> \mathbf{a} \succ \mathbf{b} </math> if and only if <math> \mathbf{a} \succ_w \mathbf{b} </math> and <math> \mathbf{a} \succ^w \mathbf{b} </math>.
 
Note that the majorization order do not depend on the order of the components of the vectors <math> \mathbf{a} </math> or <math> \mathbf{b} </math>. Majorization is not a [[partially ordered set|partial order]], since <math> \mathbf{a} \succ \mathbf{b} </math> and <math> \mathbf{b} \succ \mathbf{a} </math> do not imply <math> \mathbf{a} = \mathbf{b} </math>, it only implies that the components of each vector are equal, but not necessarily in the same order.
 
Regrettably, to confuse the matter, some literature sources use the reverse notation, e.g., <math>\succ</math> is replaced with  <math>\prec</math>, most notably,  in Horn and Johnson, Matrix analysis (Cambridge Univ. Press, 1985), Definition 4.3.24, while the same authors switch to the traditional notation, introduced here, later in their ''Topics in Matrix Analysis'' (1994).
 
A function <math>f:\mathbb{R}^d \to \mathbb{R}</math> is said to be [[Schur-convex function|Schur convex]] when <math>\mathbf{a} \succ \mathbf{b}</math> implies <math>f(\mathbf{a}) \geq  f(\mathbf{b})</math>.  Similarly, <math>f(\mathbf{a})</math> is '''Schur concave''' when <math>\mathbf{a} \succ \mathbf{b}</math> implies <math>f(\mathbf{a}) \leq f(\mathbf{b}).</math>
 
The majorization partial order on finite sets, described here, can be generalized to the [[Lorenz ordering]], a partial order on [[cumulative distribution function|distribution functions]].
 
==Examples==
The order of the entries does not affect the majorization, e.g., the statement <math>(1,2)\prec (0,3)</math> is simply
equivalent to <math>(2,1)\prec (3,0)</math>.
 
(Strong) majorization: <math>(1,2,3)\prec (0,3,3)\prec (0,0,6)</math>. For vectors with ''n'' components
: <math>
\left(\frac{1}{n}, \ldots, \frac{1}{n}\right)\prec \left(\frac{1}{n-1}, \ldots, \frac{1}{n-1},0\right)
\prec \cdots \prec
\left(\frac{1}{2},\frac{1}{2}, 0, \ldots, 0\right) \prec \left(1, 0, \ldots, 0\right).
</math>
 
(Weak) majorization: <math>(1,2,3)\prec_w (1,3,3)\prec_w (1,3,4)</math>. For vectors with ''n'' components:
: <math>
\left(\frac{1}{n}, \ldots, \frac{1}{n}\right)\prec_w \left(\frac{1}{n-1}, \ldots, \frac{1}{n-1},1\right).
</math>
 
==Geometry of Majorization==
[[File:2D Majorization Example.png|thumb|250px|Figure 1. 2D Majorization Example]]
For <math>\mathbf{x}, \mathbf{y} \in \mathbb{R}^n,</math> we have
<math>\mathbf{x} \prec \mathbf{y}</math> if and only if <math>\mathbf{x}</math> is in the convex hull of all vectors obtained by permuting the coordinates of <math>\mathbf{y}</math>.
 
Figure 1 displays the convex hull in 2D for the vector <math>\mathbf{y}=(3,\,1)</math>. Notice that the center of the convex hull, which is an interval in this case, is the vector <math>\mathbf{x}=(2,\,2)</math>. This is the "smallest" vector satisfying  <math>\mathbf{x} \prec \mathbf{y}</math> for this given vector <math>\mathbf{y}</math>.
 
[[File:3D Majorization Example.png|thumb|250px|Figure 2. 3D Majorization Example]]
Figure 2 shows the convex hull in 3D. The center of the convex hull, which is a 2D polygon in this case, is the "smallest" vector <math>\mathbf{x}</math> satisfying  <math>\mathbf{x} \prec \mathbf{y}</math> for this given vector <math>\mathbf{y}</math>.
 
==Equivalent conditions==
Each of the following statements is true if and only if <math>\mathbf{a}\succ \mathbf{b}</math>:
 
* <math>\mathbf{b} = D\mathbf{a}</math> for some [[doubly stochastic matrix]] <math>D</math> (see Arnold,<ref name=Arnold>Barry C. Arnold.  "Majorization and the Lorenz Order: A Brief Introduction".  Springer-Verlag Lecture Notes in Statistics, vol. 43, 1987.</ref> Theorem 2.1).
* From <math>\mathbf{a}</math> we can produce <math>\mathbf{b}</math> by a finite sequence of "Robin Hood operations" where we replace two elements <math>a_i</math> and <math>a_j < a_i</math> with <math>a_i-\varepsilon</math> and <math>a_j+\varepsilon</math>, respectively, for some <math>\varepsilon \in (0, a_i-a_j)</math> (see Arnold,<ref name=Arnold/> p.&nbsp;11).
* For every convex function <math>h:\mathbb{R}\to \mathbb{R}</math>, <math>\sum_{i=1}^d h(a_i) \geq \sum_{i=1}^d h(b_i)</math> (see Arnold,<ref name=Arnold/> Theorem 2.9).
*<math> \forall t \in \mathbb{R} \quad \sum_{j=1}^d |a_j-t| \geq \sum_{j=1}^d |b_j-t|</math>. (see Nielsen and Chuang Exercise 12.17,<ref name=NielsenChuang>Nielsen and Chuang. "Quantum Computation and Quantum Information". Cambridge University Press, 2000</ref>)
 
==In linear algebra==
* Suppose that for two real [[Vector (geometric)|vectors]] <math>v,v' \in \mathbb{R}^d</math>, <math>v</math> majorizes <math>v'</math>. Then it can be shown that there exists a set of probabilities <math>(p_1,p_2,\ldots,p_d),
\sum_{i=1}^d p_i=1</math> and a set of [[permutation]]s <math>(P_1,P_2,\ldots,P_d)</math> such that <math>v'=\sum_{i=1}^d p_iP_iv</math>. Alternatively it can be shown that there exists a [[doubly stochastic matrix]] <math>D</math> such that <math>vD=v'</math>
 
*We say that a [[hermitian operator]], <math>H</math>, majorizes another, <math>H'</math>, if the set of eigenvalues of <math>H</math> majorizes that of <math>H'</math>.
 
==In recursion theory==
Given <math>f, g : \mathbb{N} \to\mathbb{N}\,\!</math>, then <math>f\,\!</math> is said to ''majorize'' <math>g\,\!</math> if, for all <math>x\,\!</math>, <math>f(x)\geq g(x)\,\!</math>.  If there is some <math>n\,\!</math> so that <math>f(x)\geq g(x)\,\!</math> for all <math>x > n\,\!</math>, then <math>f\,\!</math> is said to ''dominate'' (or ''eventually dominate'') <math>g\,\!</math>. Alternatively, the preceding terms are often defined requiring the strict inequality <math>f(x) > g(x)\,\!</math> instead of <math>f(x)\geq g(x)\,\!</math> in the foregoing definitions.
 
==Generalizations==
Various generalizations of majorization are discussed in chapters 14 and 15 of the reference work ''Inequalities: Theory of Majorization and Its Applications'' (In preparation) Albert W. Marshall, [[Ingram Olkin]], Barry Arnold, ISBN 978-0-387-40087-7.
 
==See also==
* [[Muirhead's inequality]]
* [[Schur-convex function]]
* [[Schur–Horn theorem]] relating diagonal entries of a matrix to its eigenvalues.
* For positive [[integer number]]s, weak majorization is called [[Dominance order]].
 
==Notes==
<references/>
 
==References==
* J. Karamata. Sur une inegalite relative aux fonctions convexes. Publ. Math. Univ. Belgrade 1, 145&ndash;158, 1932.
* G. H. Hardy, J. E. Littlewood and G. Pólya, Inequalities, 2nd edition, 1952, Cambridge University Press, London.
* ''Inequalities: Theory of Majorization and Its Applications'' (In preparation) Albert W. Marshall, [[Ingram Olkin]], Barry Arnold, ISBN 978-0-387-40087-7
* ''Inequalities: Theory of Majorization and Its Applications'' (1980) Albert W. Marshall, [[Ingram Olkin]], Academic Press, ISBN 978-0-12-473750-1
* [http://arxiv.org/abs/0801.4221v1 A tribute to Marshall and Olkin's book "Inequalities: Theory of Majorization and its Applications"]
* ''Quantum Computation and Quantum Information'', (2000) Michael A. Nielsen and Isaac L. Chuang,  Cambridge University Press, ISBN 978-0-521-63503-5
* ''Matrix Analysis'' (1996) Rajendra Bhatia, Springer, ISBN 978-0-387-94846-1
* ''Topics in Matrix Analysis'' (1994) Roger A. Horn and Charles R. Johnson, Cambridge University Press, ISBN 978-0-521-46713-1
* ''Majorization and Matrix Monotone Functions in Wireless Communications'' (2007)  Eduard Jorswieck and Holger Boche, Now Publishers, ISBN 978-1-60198-040-3
* ''The Cauchy Schwarz Master Class'' (2004) J. Michael Steele, Cambridge University Press, ISBN 978-0-521-54677-5
 
==External links==
* [http://mathworld.wolfram.com/Majorization.html Majorization in MathWorld]
* [http://planetmath.org/encyclopedia/Majorization.html Majorization in PlanetMath]
 
==Software==
* [[OCTAVE]]/[[MATLAB]] [http://www.mathworks.com/matlabcentral/fileexchange/26962-majorization-check code to check majorization]
 
[[Category:Order theory]]
[[Category:Linear algebra]]

Latest revision as of 17:15, 5 December 2013

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In mathematics, majorization is a preorder on vectors of real numbers. For a vector 𝐚d, we denote by 𝐚d the vector with the same components, but sorted in descending order. Given 𝐚,𝐛d, we say that 𝐚 weakly majorizes (or dominates) 𝐛 from below written as 𝐚w𝐛 iff

i=1kaii=1kbifor k=1,,d,

where ai and bi are the elements of 𝐚 and 𝐛, respectively, sorted in decreasing order. Equivalently, we say that 𝐛 is weakly majorized (or dominated) by 𝐚 from below, denoted as 𝐛w𝐚.

Similarly, we say that 𝐚 weakly majorizes 𝐛 from above written as 𝐚w𝐛 iff

i=kdaii=kdbifor k=1,,d,

Equivalently, we say that 𝐛 is weakly majorized by 𝐚 from above, denoted as 𝐛w𝐚.

If 𝐚w𝐛 and in addition i=1dai=i=1dbi we say that 𝐚 majorizes (or dominates) 𝐛 written as 𝐚𝐛. Equivalently, we say that 𝐛 is majorized (or dominated) by 𝐚, denoted as 𝐛𝐚.

It is easy to see that 𝐚𝐛 if and only if 𝐚w𝐛 and 𝐚w𝐛.

Note that the majorization order do not depend on the order of the components of the vectors 𝐚 or 𝐛. Majorization is not a partial order, since 𝐚𝐛 and 𝐛𝐚 do not imply 𝐚=𝐛, it only implies that the components of each vector are equal, but not necessarily in the same order.

Regrettably, to confuse the matter, some literature sources use the reverse notation, e.g., is replaced with , most notably, in Horn and Johnson, Matrix analysis (Cambridge Univ. Press, 1985), Definition 4.3.24, while the same authors switch to the traditional notation, introduced here, later in their Topics in Matrix Analysis (1994).

A function f:d is said to be Schur convex when 𝐚𝐛 implies f(𝐚)f(𝐛). Similarly, f(𝐚) is Schur concave when 𝐚𝐛 implies f(𝐚)f(𝐛).

The majorization partial order on finite sets, described here, can be generalized to the Lorenz ordering, a partial order on distribution functions.

Examples

The order of the entries does not affect the majorization, e.g., the statement (1,2)(0,3) is simply equivalent to (2,1)(3,0).

(Strong) majorization: (1,2,3)(0,3,3)(0,0,6). For vectors with n components

(1n,,1n)(1n1,,1n1,0)(12,12,0,,0)(1,0,,0).

(Weak) majorization: (1,2,3)w(1,3,3)w(1,3,4). For vectors with n components:

(1n,,1n)w(1n1,,1n1,1).

Geometry of Majorization

Figure 1. 2D Majorization Example

For 𝐱,𝐲n, we have 𝐱𝐲 if and only if 𝐱 is in the convex hull of all vectors obtained by permuting the coordinates of 𝐲.

Figure 1 displays the convex hull in 2D for the vector 𝐲=(3,1). Notice that the center of the convex hull, which is an interval in this case, is the vector 𝐱=(2,2). This is the "smallest" vector satisfying 𝐱𝐲 for this given vector 𝐲.

Figure 2. 3D Majorization Example

Figure 2 shows the convex hull in 3D. The center of the convex hull, which is a 2D polygon in this case, is the "smallest" vector 𝐱 satisfying 𝐱𝐲 for this given vector 𝐲.

Equivalent conditions

Each of the following statements is true if and only if 𝐚𝐛:

In linear algebra

In recursion theory

Given f,g:, then f is said to majorize g if, for all x, f(x)g(x). If there is some n so that f(x)g(x) for all x>n, then f is said to dominate (or eventually dominate) g. Alternatively, the preceding terms are often defined requiring the strict inequality f(x)>g(x) instead of f(x)g(x) in the foregoing definitions.

Generalizations

Various generalizations of majorization are discussed in chapters 14 and 15 of the reference work Inequalities: Theory of Majorization and Its Applications (In preparation) Albert W. Marshall, Ingram Olkin, Barry Arnold, ISBN 978-0-387-40087-7.

See also

Notes

  1. 1.0 1.1 1.2 Barry C. Arnold. "Majorization and the Lorenz Order: A Brief Introduction". Springer-Verlag Lecture Notes in Statistics, vol. 43, 1987.
  2. Nielsen and Chuang. "Quantum Computation and Quantum Information". Cambridge University Press, 2000

References

  • J. Karamata. Sur une inegalite relative aux fonctions convexes. Publ. Math. Univ. Belgrade 1, 145–158, 1932.
  • G. H. Hardy, J. E. Littlewood and G. Pólya, Inequalities, 2nd edition, 1952, Cambridge University Press, London.
  • Inequalities: Theory of Majorization and Its Applications (In preparation) Albert W. Marshall, Ingram Olkin, Barry Arnold, ISBN 978-0-387-40087-7
  • Inequalities: Theory of Majorization and Its Applications (1980) Albert W. Marshall, Ingram Olkin, Academic Press, ISBN 978-0-12-473750-1
  • A tribute to Marshall and Olkin's book "Inequalities: Theory of Majorization and its Applications"
  • Quantum Computation and Quantum Information, (2000) Michael A. Nielsen and Isaac L. Chuang, Cambridge University Press, ISBN 978-0-521-63503-5
  • Matrix Analysis (1996) Rajendra Bhatia, Springer, ISBN 978-0-387-94846-1
  • Topics in Matrix Analysis (1994) Roger A. Horn and Charles R. Johnson, Cambridge University Press, ISBN 978-0-521-46713-1
  • Majorization and Matrix Monotone Functions in Wireless Communications (2007) Eduard Jorswieck and Holger Boche, Now Publishers, ISBN 978-1-60198-040-3
  • The Cauchy Schwarz Master Class (2004) J. Michael Steele, Cambridge University Press, ISBN 978-0-521-54677-5

Software