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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 ...
, an ordered vector space or partially ordered vector space is a
vector space In mathematics and physics, a vector space (also called a linear space) is a set (mathematics), set whose elements, often called vector (mathematics and physics), ''vectors'', can be added together and multiplied ("scaled") by numbers called sc ...
equipped with a partial order that is compatible with the vector space operations.


Definition

Given a vector space X over the
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 \Reals and a preorder \,\leq\, on the set X, the pair (X, \leq) is called a preordered vector space and we say that the preorder \,\leq\, is compatible with the vector space structure of X and call \,\leq\, a vector preorder on X if for all x, y, z \in X and r \in \Reals with r \geq 0 the following two axioms are satisfied # x \leq y implies x + z \leq y + z, # y \leq x implies r y \leq r x. If \,\leq\, is a partial order compatible with the vector space structure of X then (X, \leq) is called an ordered vector space and \,\leq\, is called a vector partial order on X. The two axioms imply that translations and positive homotheties are automorphisms of the order structure and the mapping x \mapsto -x is an
isomorphism In mathematics, an isomorphism is a structure-preserving mapping or morphism between two structures of the same type that can be reversed by an inverse mapping. Two mathematical structures are isomorphic if an isomorphism exists between the ...
to the dual order structure. Ordered vector spaces are ordered groups under their addition operation. Note that x \leq y if and only if -y \leq -x.


Positive cones and their equivalence to orderings

A
subset In mathematics, a Set (mathematics), set ''A'' is a subset of a set ''B'' if all Element (mathematics), elements of ''A'' are also elements of ''B''; ''B'' is then a superset of ''A''. It is possible for ''A'' and ''B'' to be equal; if they a ...
C of a vector space X is called a cone if for all real r > 0, r C \subseteq C. A cone is called pointed if it contains the origin. A cone C is convex if and only if C + C \subseteq C. The intersection of any non-empty family of cones (resp. convex cones) is again a cone (resp. convex cone); the same is true of the union of an increasing (under set inclusion) family of cones (resp. convex cones). A cone C in a vector space X is said to be generating if X = C - C. Given a preordered vector space X, the subset X^+ of all elements x in (X, \leq) satisfying x \geq 0 is a pointed convex cone (that is, a convex cone containing 0) called the positive cone of X and denoted by \operatorname X. The elements of the positive cone are called positive. If x and y are elements of a preordered vector space (X, \leq), then x \leq y if and only if y - x \in X^+. The positive cone is generating if and only if X is a
directed set In mathematics, a directed set (or a directed preorder or a filtered set) is a preordered set in which every finite subset has an upper bound. In other words, it is a non-empty preordered set A such that for any a and b in A there exists c in A wit ...
under \,\leq. Given any pointed convex cone C one may define a preorder \,\leq\, on X that is compatible with the vector space structure of X by declaring for all x, y \in X, that x \leq y if and only if y - x \in C; the positive cone of this resulting preordered vector space is C. There is thus a one-to-one correspondence between pointed convex cones and vector preorders on X. If X is preordered then we may form an equivalence relation on X by defining x is equivalent to y if and only if x \leq y and y \leq x; if N is the equivalence class containing the origin then N is a vector subspace of X and X / N is an ordered vector space under the relation: A \leq B if and only there exist a \in A and b \in B such that a \leq b. A subset of C of a vector space X is called a proper cone if it is a convex cone satisfying C \cap (- C) = \. Explicitly, C is a proper cone if (1) C + C \subseteq C, (2) r C \subseteq C for all r > 0, and (3) C \cap (- C) = \. The intersection of any non-empty family of proper cones is again a proper cone. Each proper cone C in a real vector space induces an order on the vector space by defining x \leq y if and only if y - x \in C, and furthermore, the positive cone of this ordered vector space will be C. Therefore, there exists a one-to-one correspondence between the proper convex cones of X and the vector partial orders on X. By a total vector ordering on X we mean a total order on X that is compatible with the vector space structure of X. The family of total vector orderings on a vector space X is in one-to-one correspondence with the family of all proper cones that are maximal under set inclusion. A total vector ordering ''cannot'' be Archimedean if its
dimension In physics and mathematics, the dimension of a mathematical space (or object) is informally defined as the minimum number of coordinates needed to specify any point within it. Thus, a line has a dimension of one (1D) because only one coo ...
, when considered as a vector space over the reals, is greater than 1. If R and S are two orderings of a vector space with positive cones P and Q, respectively, then we say that R is finer than S if P \subseteq Q.


Intervals and the order bound dual

An order interval in a preordered vector space is a set of the form \begin , b&= \, \\ .1ex , b[ &= \, \\ , b">&=_\,_\\.html" ;"title=", b[ &= \, \\ ">, b[ &= \, \\ , b&= \, \text \\ ]a, b[ &= \. \\ \end From axioms 1 and 2 above it follows that x, y \in [a, b] and 0 < t < 1 implies t x + (1 - t) y belongs to [a, b]; thus these order intervals are convex. A subset is said to be order bounded if it is contained in some order interval. In a preordered real vector space, if for x \geq 0 then the interval of the form x, x/math> is balanced. An order unit of a preordered vector space is any element x such that the set x, x/math> is absorbing. The set of all linear functionals on a preordered vector space X that map every order interval into a bounded set is called the order bound dual of X and denoted by X^. If a space is ordered then its order bound dual is a vector subspace of its algebraic dual. A subset A of an ordered vector space X is called order complete if for every non-empty subset B \subseteq A such that B is order bounded in A, both \sup B and \inf B exist and are elements of A. We say that an ordered vector space X is order complete is X is an order complete subset of X.


Examples

If (X, \leq) is a preordered vector space over the reals with order unit u, then the map p(x) := \inf \ is a sublinear functional.


Properties

If X is a preordered vector space then for all x, y \in X, * x \geq 0 and y \geq 0 imply x + y \geq 0. * x \leq y if and only if -y \leq -x. * x \leq y and r < 0 imply r x \geq r y. * x \leq y if and only if y = \sup \ if and only if x = \inf \ * \sup \ exists if and only if \inf \ exists, in which case \inf \ = - \sup \. * \sup \ exists if and only if \inf \ exists, in which case for all z \in X, ** \sup \ = z + \sup \, and ** \inf \ = z + \inf \ ** x + y = \inf\ + \sup \. * X is a vector lattice if and only if \sup \ exists for all x \in X.


Spaces of linear maps

A cone C is said to be generating if C - C is equal to the whole vector space. If X and W are two non-trivial ordered vector spaces with respective positive cones P and Q, then P is generating in X if and only if the set C = \ is a proper cone in L(X; W), which is the space of all linear maps from X into W. In this case, the ordering defined by C is called the canonical ordering of L(X; W). More generally, if M is any vector subspace of L(X; W) such that C \cap M is a proper cone, the ordering defined by C \cap M is called the canonical ordering of M.


Positive functionals and the order dual

A
linear function In mathematics, the term linear function refers to two distinct but related notions: * In calculus and related areas, a linear function is a function whose graph is a straight line, that is, a polynomial function of degree zero or one. For di ...
f on a preordered vector space is called positive if it satisfies either of the following equivalent conditions: # x \geq 0 implies f(x) \geq 0. # if x \leq y then f(x) \leq f(y). The set of all positive linear forms on a vector space with positive cone C, called the dual cone and denoted by C^*, is a cone equal to the polar of -C. The preorder induced by the dual cone on the space of linear functionals on X is called the . The order dual of an ordered vector space X is the set, denoted by X^+, defined by X^+ := C^* - C^*. Although X^+ \subseteq X^b, there do exist ordered vector spaces for which set equality does hold.


Special types of ordered vector spaces

Let X be an ordered vector space. We say that an ordered vector space X is Archimedean ordered and that the order of X is Archimedean if whenever x in X is such that \ is majorized (that is, there exists some y \in X such that n x \leq y for all n \in \N) then x \leq 0. A topological vector space (TVS) that is an ordered vector space is necessarily Archimedean if its positive cone is closed. We say that a preordered vector space X is regularly ordered and that its order is regular if it is Archimedean ordered and X^+ distinguishes points in X. This property guarantees that there are sufficiently many positive linear forms to be able to successfully use the tools of duality to study ordered vector spaces. An ordered vector space is called a vector lattice if for all elements x and y, the supremum \sup (x, y) and infimum \inf (x, y) exist.


Subspaces, quotients, and products

Throughout let X be a preordered vector space with positive cone C. Subspaces If M is a vector subspace of X then the canonical ordering on M induced by X's positive cone C is the partial order induced by the pointed convex cone C \cap M, where this cone is proper if C is proper. Quotient space Let M be a vector subspace of an ordered vector space X, \pi : X \to X / M be the canonical projection, and let \hat := \pi(C). Then \hat is a cone in X / M that induces a canonical preordering on the quotient space X / M. If \hat is a proper cone inX / M then \hat makes X / M into an ordered vector space. If M is C-saturated then \hat defines the canonical order of X / M. Note that X = \Reals^2_0 provides an example of an ordered vector space where \pi(C) is not a proper cone. If X is also a topological vector space (TVS) and if for each
neighborhood A neighbourhood (Commonwealth English) or neighborhood (American English) is a geographically localized community within a larger town, city, suburb or rural area, sometimes consisting of a single street and the buildings lining it. Neigh ...
V of the origin in X there exists a neighborhood U of the origin such that U + N) \cap C\subseteq V + N then \hat is a normal cone for the quotient topology. If X is a topological vector lattice and M is a closed
solid Solid is a state of matter where molecules are closely packed and can not slide past each other. Solids resist compression, expansion, or external forces that would alter its shape, with the degree to which they are resisted dependent upon the ...
sublattice of X then X / L is also a topological vector lattice. Product If S is any set then the space X^S of all functions from S into X is canonically ordered by the proper cone \left\. Suppose that \left\ is a family of preordered vector spaces and that the positive cone of X_\alpha is C_\alpha. Then C := \prod_\alpha C_\alpha is a pointed convex cone in \prod_\alpha X_\alpha, which determines a canonical ordering on \prod_\alpha X_\alpha; C is a proper cone if all C_\alpha are proper cones. Algebraic direct sum The algebraic direct sum \bigoplus_\alpha X_\alpha of \left\ is a vector subspace of \prod_\alpha X_\alpha that is given the canonical subspace ordering inherited from \prod_\alpha X_\alpha. If X_1, \dots, X_n are ordered vector subspaces of an ordered vector space X then X is the ordered direct sum of these subspaces if the canonical algebraic isomorphism of X onto \prod_\alpha X_\alpha (with the canonical product order) is an order isomorphism.


Examples

* The
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 with the usual ordering form a totally ordered vector space. For all
integer An integer is the number zero (0), a positive natural number (1, 2, 3, ...), or the negation of a positive natural number (−1, −2, −3, ...). The negations or additive inverses of the positive natural numbers are referred to as negative in ...
s n \geq 0, the
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 ...
\Reals^n considered as a vector space over the reals with the lexicographic ordering forms a preordered vector space whose order is Archimedean if and only if n = 1. * \Reals^2 is an ordered vector space with the \,\leq\, relation defined in any of the following ways (in order of increasing strength, that is, decreasing sets of pairs): **
Lexicographical order In mathematics, the lexicographic or lexicographical order (also known as lexical order, or dictionary order) is a generalization of the alphabetical order of the dictionaries to sequences of ordered symbols or, more generally, of elements of a ...
: (a, b) \leq (c, d) if and only if a < c or (a = c \text b \leq d). This is a total order. The positive cone is given by x > 0 or (x = 0 \text y \geq 0), that is, in
polar coordinates In mathematics, the polar coordinate system specifies a given point (mathematics), point in a plane (mathematics), plane by using a distance and an angle as its two coordinate system, coordinates. These are *the point's distance from a reference ...
, the set of points with the angular coordinate satisfying -\pi / 2 < \theta \leq \pi / 2, together with the origin. ** (a, b) \leq (c, d) if and only if a \leq c and b \leq d (the
product order In mathematics, given partial orders \preceq and \sqsubseteq on sets A and B, respectively, the product order (also called the coordinatewise order or componentwise order) is a partial order \leq on the Cartesian product A \times B. Given two pa ...
of two copies of \Reals with \leq). This is a partial order. The positive cone is given by x \geq 0 and y \geq 0, that is, in polar coordinates 0 \leq \theta \leq \pi / 2, together with the origin. ** (a, b) \leq (c, d) if and only if (a < c \text b < d) or (a = c \text b = d) (the reflexive closure of the direct product of two copies of \Reals with "<"). This is also a partial order. The positive cone is given by (x > 0 \text y > 0) or x = y = 0), that is, in polar coordinates, 0 < \theta < \pi / 2, together with the origin. :Only the second order is, as a subset of \Reals^4, closed; see partial orders in topological spaces. :For the third order the two-dimensional " intervals" p < x < q are
open set In mathematics, an open set is a generalization of an Interval (mathematics)#Definitions_and_terminology, open interval in the real line. In a metric space (a Set (mathematics), set with a metric (mathematics), distance defined between every two ...
s which generate the topology. * \Reals^n is an ordered vector space with the \,\leq\, relation defined similarly. For example, for the second order mentioned above: ** x \leq y if and only if x_i \leq y_i for i = 1, \dots, n. * A Riesz space is an ordered vector space where the order gives rise to a lattice. * The space of continuous functions on , 1/math> where f \leq g if and only if f(x) \leq g(x) for all x in , 1 * Let \mbox_n(\mathbb) denote the symmetric n \times n matrices with real entries. The Loewner order \preccurlyeq on two symmetric matrices A,B \in \mbox_n(\mathbb)is defined by A \preccurlyeq B \Leftrightarrow B - A is positive semi-definite. Its positive cone is, by definition, the set of all positive definite matrices. Furthermore, the spectral theorem applied to symmetric matrices establishes that this cone is generating.


Pointwise order

If S is any set and if X is a vector space (over the reals) of real-valued functions on S, then the pointwise order on X is given by, for all f, g \in X, f \leq g if and only if f(s) \leq g(s) for all s \in S. Spaces that are typically assigned this order include: * the space \ell^\infty(S, \Reals) of bounded real-valued maps on S. * the space c_0(\Reals) of real-valued sequences that converge to 0. * the space C(S, \Reals) of continuous real-valued functions on a
topological space In mathematics, a topological space is, roughly speaking, a Geometry, geometrical space in which Closeness (mathematics), closeness is defined but cannot necessarily be measured by a numeric Distance (mathematics), distance. More specifically, a to ...
S. * for any non-negative integer n, the Euclidean space \Reals^n when considered as the space C(\, \Reals) where S = \ is given the
discrete topology In topology, a discrete space is a particularly simple example of a topological space or similar structure, one in which the points form a , meaning they are '' isolated'' from each other in a certain sense. The discrete topology is the finest to ...
. The space \mathcal^\infty(\Reals, \Reals) of all measurable almost-everywhere bounded real-valued maps on \Reals, where the preorder is defined for all f, g \in \mathcal^\infty(\Reals, \Reals) by f \leq g if and only if f(s) \leq g(s) almost everywhere.


See also

* * * * * * * * * *


References


Bibliography

* * Bourbaki, Nicolas; Elements of Mathematics: Topological Vector Spaces; . * * * {{Functional analysis Functional analysis Ordered groups Vector spaces