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In
linear algebra Linear algebra is the branch of mathematics concerning linear equations such as: :a_1x_1+\cdots +a_nx_n=b, linear maps such as: :(x_1, \ldots, x_n) \mapsto a_1x_1+\cdots +a_nx_n, and their representations in vector spaces and through matrices. ...
, a ''cone''—sometimes called a linear cone for distinguishing it from other sorts of cones—is a subset of a
vector space In mathematics and physics, a vector space (also called a linear space) is a set whose elements, often called ''vectors'', may be added together and multiplied ("scaled") by numbers called '' scalars''. Scalars are often real numbers, but can ...
that is closed under scalar multiplication; that is, is a cone if x\in C implies sx\in C for every . When the scalars are real numbers, or belong to an
ordered field In mathematics, an ordered field is a field together with a total ordering of its elements that is compatible with the field operations. The basic example of an ordered field is the field of real numbers, and every Dedekind-complete ordered field ...
, one generally calls a cone a subset of a vector space that is closed under multiplication by a ''positive scalar''. In this context, a convex cone is a cone that is closed under addition, or, equivalently, a subset of a vector space that is closed under linear combinations with positive coefficients. It follows that convex cones are
convex set In geometry, a subset of a Euclidean space, or more generally an affine space over the reals, is convex if, given any two points in the subset, the subset contains the whole line segment that joins them. Equivalently, a convex set or a convex r ...
s. In this article, only the case of scalars in an ordered field is considered.


Definition

A
subset In mathematics, 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 are ...
''C'' of a vector space ''V'' over an
ordered field In mathematics, an ordered field is a field together with a total ordering of its elements that is compatible with the field operations. The basic example of an ordered field is the field of real numbers, and every Dedekind-complete ordered field ...
''F'' is a cone (or sometimes called a linear cone) if for each ''x'' in ''C'' and positive scalar ''α'' in ''F'', the product ''αx'' is in ''C''. Note that some authors define cone with the scalar ''α'' ranging over all non-negative scalars (rather than all positive scalars, which does not include 0). A cone ''C'' is a convex cone if belongs to ''C'', for any positive scalars ''α'', ''β'', and any ''x'', ''y'' in ''C''. A cone ''C'' is convex if and only if ''C'' + ''C'' ⊆ ''C''. This concept is meaningful for any vector space that allows the concept of "positive" scalar, such as spaces over the
rational Rationality is the quality of being guided by or based on reasons. In this regard, a person acts rationally if they have a good reason for what they do or a belief is rational if it is based on strong evidence. This quality can apply to an abi ...
, algebraic, or (more commonly) 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 distance, duration or temperature. Here, ''continuous'' means that values can have arbitrarily small variations. Every real ...
s. Also note that the scalars in the definition are positive meaning that the origin does not have to belong to C. Some authors use a definition that ensures the origin belongs to ''C''. Because of the scaling parameters ''α'' and ''β'', cones are infinite in extent and not bounded. If ''C'' is a convex cone, then for any positive scalar ''α'' and any ''x'' in ''C'' the vector \alpha x = \tfracx + \tfracx \in C. It follows that a convex cone ''C'' is a special case of a
linear cone In linear algebra, a ''cone''—sometimes called a linear cone for distinguishing it from other sorts of cones—is a subset of a vector space that is closed under scalar multiplication; that is, is a cone if x\in C implies sx\in C for every . ...
. It follows from the above property that a convex cone can also be defined as a linear cone that is closed under
convex combination In convex geometry and vector algebra, a convex combination is a linear combination of points (which can be vectors, scalars, or more generally points in an affine space) where all coefficients are non-negative and sum to 1. In other word ...
s, or just under
addition Addition (usually signified by the Plus and minus signs#Plus sign, plus symbol ) is one of the four basic Operation (mathematics), operations of arithmetic, the other three being subtraction, multiplication and Division (mathematics), division. ...
s. More succinctly, a set ''C'' is a convex cone if and only if and , for any positive scalar ''α''.


Examples

* For a vector space ''V'', the empty set, the space ''V'', and any
linear subspace In mathematics, and more specifically in linear algebra, a linear subspace, also known as a vector subspaceThe term ''linear subspace'' is sometimes used for referring to flats and affine subspaces. In the case of vector spaces over the reals, li ...
of ''V'' are convex cones. * The
conical combination Given a finite number of vectors x_1, x_2, \dots, x_n in a real vector space, a conical combination, conical sum, or weighted sum''Convex Analysis and Minimization Algorithms'' by Jean-Baptiste Hiriart-Urruty, Claude Lemaréchal, 1993, pp. 101, 102/ ...
of a finite or infinite set of vectors in \R^n is a convex cone. * The
tangent cone In geometry, the tangent cone is a generalization of the notion of the tangent space to a manifold to the case of certain spaces with singularities. Definitions in nonlinear analysis In nonlinear analysis, there are many definitions for a tangen ...
s of a convex set are convex cones. * The set \left \ \cup \left \ is a cone but not a convex cone. * The norm cone \left \ is a convex cone. * The intersection of two convex cones in the same vector space is again a convex cone, but their union may fail to be one. * The class of convex cones is also closed under arbitrary
linear map In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a Map (mathematics), mapping V \to W between two vect ...
s. In particular, if ''C'' is a convex cone, so is its opposite -C and C \cap -C is the largest linear subspace contained in ''C''. * The set of
positive semidefinite matrices In mathematics, a symmetric matrix In linear algebra, a symmetric matrix is a square matrix that is equal to its transpose. Formally, Because equal matrices have equal dimensions, only square matrices can be symmetric. The entries of ...
. * The set of nonnegative continuous functions is a convex cone.


Special examples


Affine convex cones

An affine convex cone is the set resulting from applying an affine transformation to a convex cone. A common example is translating a convex cone by a point . Technically, such transformations can produce non-cones. For example, unless , is not a linear cone. However, it is still called an affine convex cone.


Half-spaces

A (linear)
hyperplane In geometry, a hyperplane is a subspace whose dimension is one less than that of its ''ambient space''. For example, if a space is 3-dimensional then its hyperplanes are the 2-dimensional planes, while if the space is 2-dimensional, its hyper ...
is a set in the form \ where f is a
linear functional In mathematics, a linear form (also known as a linear functional, a one-form, or a covector) is a linear map from a vector space to its field of scalars (often, the real numbers or the complex numbers). If is a vector space over a field , the s ...
on the vector space V. A closed half-space is a set in the form \ or \, and likewise an open half-space uses strict inequality. Half-spaces (open or closed) are affine convex cones. Moreover (in finite dimensions), any convex cone ''C'' that is not the whole space ''V'' must be contained in some closed half-space ''H'' of ''V''; this is a special case of
Farkas' lemma Farkas' lemma is a solvability theorem for a finite system of linear inequalities in mathematics. It was originally proven by the Hungarian mathematician Gyula Farkas (natural scientist), Gyula Farkas. Farkas' Lemma (mathematics), lemma is the key ...
.


Polyhedral and finitely generated cones

Polyhedral cones are special kinds of cones that can be defined in several ways: * A cone ''C'' is polyhedral if it is the conic combination of finitely many vectors (this property is also called finitely-generated). I.e., there is a set of vectors \ so that C = \. * A cone is polyhedral if it is the intersection of a finite number of half-spaces which have 0 on their boundary (this was proved by Weyl in 1935). * A cone ''C'' is polyhedral if there is some
matrix Matrix most commonly refers to: * ''The Matrix'' (franchise), an American media franchise ** ''The Matrix'', a 1999 science-fiction action film ** "The Matrix", a fictional setting, a virtual reality environment, within ''The Matrix'' (franchis ...
A such that C = \. * A cone is polyhedral if it is the solution set of a system of homogeneous linear inequalities. Algebraically, each inequality is defined by a row of the matrix ''A''. Geometrically, each inequality defines a halfspace that passes through the origin. Every finitely generated cone is a polyhedral cone, and every polyhedral cone is a finitely generated cone. Every polyhedral cone has a unique representation as a conical hull of its extremal generators, and a unique representation of intersections of halfspaces, given each linear form associated with the halfspaces also define a support hyperplane of a facet. Polyhedral cones play a central role in the representation theory of
polyhedra In geometry, a polyhedron (plural polyhedra or polyhedrons; ) is a three-dimensional shape with flat polygonal faces, straight edges and sharp corners or vertices. A convex polyhedron is the convex hull of finitely many points, not all on t ...
. For instance, the decomposition theorem for polyhedra states that every polyhedron can be written as the
Minkowski sum In geometry, the Minkowski sum (also known as dilation) of two sets of position vectors ''A'' and ''B'' in Euclidean space is formed by adding each vector in ''A'' to each vector in ''B'', i.e., the set : A + B = \. Analogously, the Minkowski ...
of a
convex polytope A convex polytope is a special case of a polytope, having the additional property that it is also a convex set contained in the n-dimensional Euclidean space \mathbb^n. Most texts. use the term "polytope" for a bounded convex polytope, and the wo ...
and a polyhedral cone. Polyhedral cones also play an important part in proving the related Finite Basis Theorem for polytopes which shows that every polytope is a polyhedron and every bounded polyhedron is a polytope. The two representations of a polyhedral cone - by inequalities and by vectors - may have very different sizes. For example, consider the cone of all non-negative ''n''-by-''n'' matrices with equal row and column sums. The inequality representation requires ''n''2 inequalities and equations, but the vector representation requires ''n''! vectors (see the
Birkhoff-von Neumann Theorem In mathematics, especially in probability and combinatorics, a doubly stochastic matrix (also called bistochastic matrix) is a square matrix X=(x_) of nonnegative real numbers, each of whose rows and columns sums to 1, i.e., :\sum_i x_=\sum_j x ...
). The opposite can also happen - the number of vectors may be polynomial while the number of inequalities is exponential. The two representations together provide an efficient way to decide whether a given vector is in the cone: to show that it is in the cone, it is sufficient to present it as a conic combination of the defining vectors; to show that it is not in the cone, it is sufficient to present a single defining inequality that it violates. This fact is known as
Farkas' lemma Farkas' lemma is a solvability theorem for a finite system of linear inequalities in mathematics. It was originally proven by the Hungarian mathematician Gyula Farkas (natural scientist), Gyula Farkas. Farkas' Lemma (mathematics), lemma is the key ...
. A subtle point in the representation by vectors is that the number of vectors may be exponential in the dimension, so the proof that a vector is in the cone might be exponentially long. Fortunately, Carathéodory's theorem guarantees that every vector in the cone can be represented by at most ''d'' defining vectors, where ''d'' is the dimension of the space.


Blunt, pointed, flat, salient, and proper cones

According to the above definition, if ''C'' is a convex cone, then ''C'' ∪ is a convex cone, too. A convex cone is said to be if 0 is in ''C'', and if 0 is not in ''C''. Blunt cones can be excluded from the definition of convex cone by substituting "non-negative" for "positive" in the condition of α, β. A cone is called flat if it contains some nonzero vector ''x'' and its opposite −''x,'' meaning ''C'' contains a linear subspace of dimension at least one, and salient otherwise. A blunt convex cone is necessarily salient, but the converse is not necessarily true. A convex cone ''C'' is salient if and only if ''C'' ∩ −''C'' ⊆ . A cone ''C'' is said to be generating if ''C'' − ''C'' is equal to the whole vector space. Some authors require salient cones to be pointed. The term "pointed" is also often used to refer to a closed cone that contains no complete line (i.e., no nontrivial subspace of the ambient vector space ''V'', or what is called a salient cone). The term proper (convex) cone is variously defined, depending on the context and author. It often means a cone that satisfies other properties like being convex, closed, pointed, salient, and full-dimensional. Because of these varying definitions, the context or source should be consulted for the definition of these terms.


Rational cones

A type of cone of particular interest to pure mathematicians is the
partially ordered set In mathematics, especially order theory, a partially ordered set (also poset) formalizes and generalizes the intuitive concept of an ordering, sequencing, or arrangement of the elements of a Set (mathematics), set. A poset consists of a set toget ...
of rational cones. "Rational cones are important objects in toric algebraic geometry, combinatorial commutative algebra, geometric combinatorics, integer programming.". This object arises when we study cones in \R^d together with the
lattice Lattice may refer to: Arts and design * Latticework, an ornamental criss-crossed framework, an arrangement of crossing laths or other thin strips of material * Lattice (music), an organized grid model of pitch ratios * Lattice (pastry), an orna ...
\Z^d. A cone is called rational (here we assume "pointed", as defined above) whenever its generators all have
integer An integer is the number zero (), a positive natural number (, , , etc.) or a negative integer with a minus sign (−1, −2, −3, etc.). The negative numbers are the additive inverses of the corresponding positive numbers. In the language ...
coordinates, i.e., if C is a rational cone, then C = \ .


Dual cone

Let ''C'' ⊂ ''V'' be a set, not necessary a convex set, in a real vector space ''V'' equipped with an
inner product In mathematics, an inner product space (or, rarely, a Hausdorff space, Hausdorff pre-Hilbert space) is a real vector space or a complex vector space with an operation (mathematics), operation called an inner product. The inner product of two ve ...
. The (continuous or topological) dual cone to ''C'' is the set : C^* = \, which is always a convex cone. Here, \langle w,v \rangle is the
duality pairing Duality may refer to: Mathematics * Duality (mathematics), a mathematical concept ** Dual (category theory), a formalization of mathematical duality ** Duality (optimization) ** Duality (order theory), a concept regarding binary relations ** Dual ...
between ''C'' and ''V'', i.e. \langle w,v\rangle = v(w). More generally, the (algebraic) dual cone to ''C'' ⊂ ''V'' in a linear space V is a subset of the
dual space In mathematics, any vector space ''V'' has a corresponding dual vector space (or just dual space for short) consisting of all linear forms on ''V'', together with the vector space structure of pointwise addition and scalar multiplication by const ...
''V*'' defined by: : C^* := \left \. In other words, if ''V*'' is the
algebraic dual space In mathematics, any vector space ''V'' has a corresponding dual vector space (or just dual space for short) consisting of all linear forms on ''V'', together with the vector space structure of pointwise addition and scalar multiplication by con ...
of ''V'', it is the set of linear functionals that are nonnegative on the primal cone ''C''. If we take ''V*'' to be the
continuous dual space In mathematics, any vector space ''V'' has a corresponding dual vector space (or just dual space for short) consisting of all linear forms on ''V'', together with the vector space structure of pointwise addition and scalar multiplication by cons ...
then it is the set of continuous linear functionals nonnegative on ''C''. This notion does not require the specification of an inner product on ''V''. In finite dimensions, the two notions of dual cone are essentially the same because every finite dimensional linear functional is continuous, and every continuous linear functional in a inner product space induces a linear isomorphism (nonsingular linear map) from ''V*'' to ''V'', and this isomorphism will take the dual cone given by the second definition, in ''V*'', onto the one given by the first definition; see the
Riesz representation theorem :''This article describes a theorem concerning the dual of a Hilbert space. For the theorems relating linear functionals to measures, see Riesz–Markov–Kakutani representation theorem.'' The Riesz representation theorem, sometimes called the R ...
. If ''C'' is equal to its dual cone, then ''C'' is called self-dual. A cone can be said to be self-dual without reference to any given inner product, if there exists an inner product with respect to which it is equal to its dual by the first definition.


Constructions

* Given a closed, convex subset ''K'' of
Hilbert space In mathematics, Hilbert spaces (named after David Hilbert) allow generalizing the methods of linear algebra and calculus from (finite-dimensional) Euclidean vector spaces to spaces that may be infinite-dimensional. Hilbert spaces arise natural ...
''V'', the outward normal cone to the set ''K'' at the point ''x'' in ''K'' is given by *: N_K(x) = \left\. * Given a closed, convex subset ''K'' of ''V'', the
tangent cone In geometry, the tangent cone is a generalization of the notion of the tangent space to a manifold to the case of certain spaces with singularities. Definitions in nonlinear analysis In nonlinear analysis, there are many definitions for a tangen ...
(or contingent cone) to the set ''K'' at the point ''x'' is given by *: T_K(x) = \overline. * Given a closed, convex subset ''K'' of Hilbert space ''V'', the tangent cone to the set ''K'' at the point ''x'' in ''K'' can be defined as
polar cone Dual cone and polar cone are closely related concepts in convex analysis, a branch of mathematics. Dual cone In a vector space The dual cone ''C'' of a subset ''C'' in a linear space ''X'' over the reals, e.g. Euclidean space R''n'', with ...
to outwards normal cone N_K(x): *: T_K(x) = N_K^*(x) \ \overset\ \ Both the normal and tangent cone have the property of being closed and convex. They are important concepts in the fields of
convex optimization Convex optimization is a subfield of mathematical optimization that studies the problem of minimizing convex functions over convex sets (or, equivalently, maximizing concave functions over convex sets). Many classes of convex optimization probl ...
,
variational inequalities In mathematics, a variational inequality is an inequality involving a functional, which has to be solved for all possible values of a given variable, belonging usually to a convex set. The mathematical theory of variational inequalities was initi ...
and
projected dynamical system Projected dynamical systems is a mathematical theory investigating the behaviour of dynamical systems where solutions are restricted to a constraint set. The discipline shares connections to and applications with both the static world of optimizatio ...
s.


Properties

If ''C'' is a non-empty convex cone in ''X'', then the linear span of ''C'' is equal to ''C'' - ''C'' and the largest vector subspace of ''X'' contained in ''C'' is equal to ''C'' ∩ (−''C'').


Partial order defined by a convex cone

A pointed and salient convex cone ''C'' induces a
partial ordering In mathematics, especially order theory, a partially ordered set (also poset) formalizes and generalizes the intuitive concept of an ordering, sequencing, or arrangement of the elements of a set. A poset consists of a set together with a binary r ...
"≤" on ''V'', defined so that x\leq y if and only if y-x\in C. (If the cone is flat, the same definition gives merely a
preorder In mathematics, especially in order theory, a preorder or quasiorder is a binary relation that is reflexive and transitive. Preorders are more general than equivalence relations and (non-strict) partial orders, both of which are special c ...
.) Sums and positive scalar multiples of valid inequalities with respect to this order remain valid inequalities. A vector space with such an order is called an
ordered vector space In mathematics, an ordered vector space or partially ordered vector space is a vector space equipped with a partial order that is compatible with the vector space operations. Definition Given a vector space ''X'' over the real numbers R and a pr ...
. Examples include the
product order In mathematics, given two preordered sets A and B, the product order (also called the coordinatewise orderDavey & Priestley, '' Introduction to Lattices and Order'' (Second Edition), 2002, p. 18 or componentwise order) is a partial ordering ...
on real-valued vectors, \R^n, and the
Loewner order In mathematics, Loewner order is the partial order defined by the convex cone of positive semi-definite matrices. This order is usually employed to generalize the definitions of monotone and concave/convex scalar functions to monotone and concav ...
on positive semidefinite matrices. Such an ordering is commonly found in positive semidefinite programming.


See also

* Cone (disambiguation) **
Cone (geometry) A cone is a three-dimensional geometric shape that tapers smoothly from a flat base (frequently, though not necessarily, circular) to a point called the apex or vertex. A cone is formed by a set of line segments, half-lines, or lines con ...
**
Cone (topology) In topology, especially algebraic topology, the cone of a topological space X is intuitively obtained by stretching ''X'' into a cylinder and then collapsing one of its end faces to a point. The cone of X is denoted by CX or by \operatorname(X). ...
*
Farkas' lemma Farkas' lemma is a solvability theorem for a finite system of linear inequalities in mathematics. It was originally proven by the Hungarian mathematician Gyula Farkas (natural scientist), Gyula Farkas. Farkas' Lemma (mathematics), lemma is the key ...
*
Bipolar theorem In mathematics, the bipolar theorem is a theorem in functional analysis that characterizes the bipolar (that is, the Polar set, polar of the polar) of a set. In convex analysis, the bipolar theorem refers to a necessary and sufficient conditions f ...
* Linear combination *
Ordered vector space In mathematics, an ordered vector space or partially ordered vector space is a vector space equipped with a partial order that is compatible with the vector space operations. Definition Given a vector space ''X'' over the real numbers R and a pr ...


Notes


References

* * * * * * {{DEFAULTSORT:Convex Cone Convex analysis Convex geometry Geometric shapes Linear algebra