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In mathematics, the real coordinate space or real coordinate ''n''-space, of dimension , denoted or , is the set of all ordered tuple, -tuples of real numbers, that is the set of all sequences of real numbers, also known as ''coordinate vectors''. Special cases are called the ''real line'' , the ''real coordinate plane'' , and the ''real coordinate three-dimensional space'' . With component-wise addition and scalar multiplication, it is a real vector space. The coordinate (vector space), coordinates over any basis (vector space), basis of the elements of a real vector space form a ''real coordinate space'' of the same dimension as that of the vector space. Similarly, the Cartesian coordinates of the points of a Euclidean space of dimension , (Euclidean line, ; Euclidean plane, ; Euclidean three-dimensional space, ) form a ''real coordinate space'' of dimension . These one to one correspondences between vectors, points and coordinate vectors explain the names of ''coordinate space'' and ''coordinate vector''. It allows using geometric terms and methods for studying real coordinate spaces, and, conversely, to use methods of calculus in geometry. This approach of geometry was introduced by René Descartes in the 17th century. It is widely used, as it allows locating points in Euclidean spaces, and computing with them.


Definition and structures

For any natural number , the set (mathematics), set consists of all -tuples of real numbers (). It is called the "-dimensional real space" or the "real -space". An element of is thus a -tuple, and is written (x_1, x_2, \ldots, x_n) where each is a real number. So, in multivariable calculus, the domain of a function, domain of a function of several real variables and the codomain of a real vector valued function are subsets of for some . The real -space has several further properties, notably: * With componentwise operation, componentwise addition and scalar multiplication, it is a real vector space. Every -dimensional real vector space is isomorphic to it. * With the dot product (sum of the term by term product of the components), it is an inner product space. Every -dimensional real inner product space is isomorphic to it. * As every inner product space, it is a topological space, and a topological vector space. * It is a Euclidean space and a real affine space, and every Euclidean or affine space is isomorphic to it. * It is an analytic manifold, and can be considered as the prototype of all manifolds, as, by definition, a manifold is, near each point, isomorphic to an open subset of . * It is an algebraic variety, and every real algebraic variety is a subset of . These properties and structures of make it fundamental in almost all areas of mathematics and their application domains, such as statistics, probability theory, and many parts of physics.


The domain of a function of several variables

Any function of real variables can be considered as a function on (that is, with as its domain of a function, domain). The use of the real -space, instead of several variables considered separately, can simplify notation and suggest reasonable definitions. Consider, for , a function composition of the following form: F(t) = f(g_1(t),g_2(t)), where functions and are continuous function, continuous. If * is continuous (by ) * is continuous (by ) then is not necessarily continuous. Continuity is a stronger condition: the continuity of in the natural topology (#Topological properties, discussed below), also called ''multivariable continuity'', which is sufficient for continuity of the composition .


Vector space

The coordinate space forms an -dimensional vector space over the field (mathematics), field of real numbers with the addition of the structure of linearity, and is often still denoted . The operations on as a vector space are typically defined by \mathbf x + \mathbf y = (x_1 + y_1, x_2 + y_2, \ldots, x_n + y_n) \alpha \mathbf x = (\alpha x_1, \alpha x_2, \ldots, \alpha x_n). The additive identity, zero vector is given by \mathbf 0 = (0, 0, \ldots, 0) and the additive inverse of the vector is given by -\mathbf x = (-x_1, -x_2, \ldots, -x_n). This structure is important because any -dimensional real vector space is isomorphic to the vector space .


Matrix notation

In standard matrix (mathematics), matrix notation, each element of is typically written as a column vector \mathbf x = \begin x_1 \\ x_2 \\ \vdots \\ x_n \end and sometimes as a row vector: \mathbf x = \begin x_1 & x_2 & \cdots & x_n \end. The coordinate space may then be interpreted as the space of all column vectors, or all row vectors with the ordinary matrix operations of addition and scalar multiplication. Linear transformations from to may then be written as matrices which act on the elements of via left and right (algebra), left multiplication (when the elements of are column vectors) and on elements of via right multiplication (when they are row vectors). The formula for left multiplication, a special case of matrix multiplication, is: (A)_k = \sum_^n A_ x_l Any linear transformation is a continuous function (see #Topological properties, below). Also, a matrix defines an open map from to if and only if the rank (matrix theory), rank of the matrix equals to .


Standard basis

The coordinate space comes with a standard basis: \begin \mathbf e_1 & = (1, 0, \ldots, 0) \\ \mathbf e_2 & = (0, 1, \ldots, 0) \\ & \;\; \vdots \\ \mathbf e_n & = (0, 0, \ldots, 1) \end To see that this is a basis, note that an arbitrary vector in can be written uniquely in the form \mathbf x = \sum_^n x_i \mathbf_i.


Geometric properties and uses


Orientation

The fact that real numbers, unlike many other field (mathematics), fields, constitute an ordered field yields an orientation (vector space), orientation structure on . Any rank (matrix theory), full-rank linear map of to itself either preserves or reverses orientation of the space depending on the sign (mathematics), sign of the determinant of its matrix. If one permutation, permutes coordinates (or, in other words, elements of the basis), the resulting orientation will depend on the parity of a permutation, parity of the permutation. Diffeomorphisms of or domain (mathematical analysis), domains in it, by their virtue to avoid zero Jacobian matrix and determinant, Jacobian, are also classified to orientation-preserving and orientation-reversing. It has important consequences for the theory of differential forms, whose applications include electrodynamics. Another manifestation of this structure is that the point reflection in has different properties depending on even and odd numbers, evenness of . For even it preserves orientation, while for odd it is reversed (see also improper rotation).


Affine space

understood as an affine space is the same space, where as a vector space Group action (mathematics), acts by translation (geometry), translations. Conversely, a vector has to be understood as a "displacement (vector), difference between two points", usually illustrated by a directed line segment connecting two points. The distinction says that there is no canonical form, canonical choice of where the origin (mathematics), origin should go in an affine -space, because it can be translated anywhere.


Convexity

In a real vector space, such as , one can define a convex cone (linear algebra), cone, which contains all ''non-negative'' linear combinations of its vectors. Corresponding concept in an affine space is a convex set, which allows only convex combinations (non-negative linear combinations that sum to 1). In the language of universal algebra, a vector space is an algebra over the universal vector space of finite sequences of coefficients, corresponding to finite sums of vectors, while an affine space is an algebra over the universal affine hyperplane in this space (of finite sequences summing to 1), a cone is an algebra over the universal orthant (of finite sequences of nonnegative numbers), and a convex set is an algebra over the universal simplex (of finite sequences of nonnegative numbers summing to 1). This geometrizes the axioms in terms of "sums with (possible) restrictions on the coordinates". Another concept from convex analysis is a convex function from to real numbers, which is defined through an inequality (mathematics), inequality between its value on a convex combination of point (geometry), points and sum of values in those points with the same coefficients.


Euclidean space

The dot product \mathbf\cdot\mathbf = \sum_^n x_iy_i = x_1y_1+x_2y_2+\cdots+x_ny_n defines the normed vector space, norm on the vector space . If every vector has its Euclidean norm, then for any pair of points the distance d(\mathbf, \mathbf) = \, \mathbf - \mathbf\, = \sqrt is defined, providing a metric space structure on in addition to its affine structure. As for vector space structure, the dot product and Euclidean distance usually are assumed to exist in without special explanations. However, the real -space and a Euclidean -space are distinct objects, strictly speaking. Any Euclidean -space has a coordinate system where the dot product and Euclidean distance have the form shown above, called Renatus Cartesius, ''Cartesian''. But there are ''many'' Cartesian coordinate systems on a Euclidean space. Conversely, the above formula for the Euclidean metric defines the ''standard'' Euclidean structure on , but it is not the only possible one. Actually, any positive-definite quadratic form defines its own "distance" , but it is not very different from the Euclidean one in the sense that \exist C_1 > 0,\ \exist C_2 > 0,\ \forall \mathbf, \mathbf \in \mathbb^n: C_1 d(\mathbf, \mathbf) \le \sqrt \le C_2 d(\mathbf, \mathbf). Such a change of the metric preserves some of its properties, for example the property of being a complete metric space. This also implies that any full-rank linear transformation of , or its affine transformation, does not magnify distances more than by some fixed , and does not make distances smaller than times, a fixed finite number times smaller. The aforementioned equivalence of metric functions remains valid if is replaced with , where is any convex positive homogeneous function of degree 1, i.e. a normed vector space, vector norm (see Minkowski distance for useful examples). Because of this fact that any "natural" metric on is not especially different from the Euclidean metric, is not always distinguished from a Euclidean -space even in professional mathematical works.


In algebraic and differential geometry

Although the definition of a manifold does not require that its model space should be , this choice is the most common, and almost exclusive one in differential geometry. On the other hand, Whitney embedding theorems state that any real differentiable manifold, differentiable -dimensional manifold can be embedding, embedded into .


Other appearances

Other structures considered on include the one of a pseudo-Euclidean space, symplectic structure (even ), and contact structure (odd ). All these structures, although can be defined in a coordinate-free manner, admit standard (and reasonably simple) forms in coordinates. is also a real vector subspace of which is invariant to complex conjugation; see also complexification.


Polytopes in R''n''

There are three families of polytopes which have simple representations in spaces, for any , and can be used to visualize any affine coordinate system in a real -space. Vertices of a hypercube have coordinates where each takes on one of only two values, typically 0 or 1. However, any two numbers can be chosen instead of 0 and 1, for example and 1. An -hypercube can be thought of as the Cartesian product of identical interval (mathematics), intervals (such as the unit interval ) on the real line. As an -dimensional subset it can be described with a system of inequalities, system of inequalities: \begin 0 \le x_1 \le 1 \\ \vdots \\ 0 \le x_n \le 1 \end for , and \begin , x_1, \le 1 \\ \vdots \\ , x_n, \le 1 \end for . Each vertex of the cross-polytope has, for some , the coordinate equal to ±1 and all other coordinates equal to 0 (such that it is the th #Standard basis, standard basis vector up to sign (mathematics), sign). This is a dual polytope of hypercube. As an -dimensional subset it can be described with a single inequality which uses the absolute value operation: \sum_^n , x_k, \le 1\,, but this can be expressed with a system of linear inequalities as well. The third polytope with simply enumerable coordinates is the standard simplex, whose vertices are standard basis vectors and origin (mathematics), the origin . As an -dimensional subset it is described with a system of linear inequalities: \begin 0 \le x_1 \\ \vdots \\ 0 \le x_n \\ \sum\limits_^n x_k \le 1 \end Replacement of all "≤" with "<" gives interiors of these polytopes.


Topological properties

The topology (structure), topological structure of (called standard topology, Euclidean topology, or usual topology) can be obtained not only #Definition and uses, from Cartesian product. It is also identical to the natural topology induced by #Euclidean space, Euclidean metric discussed above: a set is open set, open in the Euclidean topology if and only if it contains an open ball around each of its points. Also, is a linear topological space (see #continuity of linear maps, continuity of linear maps above), and there is only one possible (non-trivial) topology compatible with its linear structure. As there are many open linear maps from to itself which are not isometry, isometries, there can be many Euclidean structures on which correspond to the same topology. Actually, it does not depend much even on the linear structure: there are many non-linear diffeomorphisms (and other homeomorphisms) of onto itself, or its parts such as a Euclidean open ball or #Polytopes in Rn, the interior of a hypercube). has the topological dimension . An important result on the topology of , that is far from superficial, is L. E. J. Brouwer, Brouwer's invariance of domain. Any subset of (with its subspace topology) that is homeomorphic to another open subset of is itself open. An immediate consequence of this is that is not homeomorphism, homeomorphic to if – an intuitively "obvious" result which is nonetheless difficult to prove. Despite the difference in topological dimension, and contrary to a naïve perception, it is possible to map a lesser-dimensional real space continuously and surjective function, surjectively onto . A continuous (although not smooth) space-filling curve (an image of ) is possible.


Examples


''n'' ≤ 1

Cases of do not offer anything new: is the real line, whereas (the space containing the empty column vector) is a singleton (mathematics), singleton, understood as a zero vector space. However, it is useful to include these as triviality (mathematics), trivial cases of theories that describe different .


''n'' = 2

The case of (''x,y'') where ''x'' and ''y'' are real numbers has been developed as the Cartesian plane ''P''. Further structure has been attached with Euclidean vectors representing directed line segments in ''P''. The plane has also been developed as the field extension \mathbf by appending roots of X2 + 1 = 0 to the real field \mathbf. The root i acts on P as a quarter turn with counterclockwise orientation. This root generates the group (mathematics), group \ \equiv \mathbf/4\mathbf. When (''x,y'') is written ''x'' + ''y'' i it is a complex number. Another group action by \mathbf/2\mathbf, where the actor has been expressed as j, uses the line ''y''=''x'' for the involution (mathematics), involution of flipping the plane (''x,y'') ↦ (''y,x''), an exchange of coordinates. In this case points of ''P'' are written ''x'' + ''y'' j and called split-complex numbers. These numbers, with the coordinate-wise addition and multiplication according to ''jj''=+1, form a ring (mathematics), ring that is not a field. Another ring structure on ''P'' uses a nilpotent e to write ''x'' + ''y'' e for (''x,y''). The action of e on ''P'' reduces the plane to a line: It can be decomposed into the projection (mathematics), projection into the x-coordinate, then quarter-turning the result to the y-axis: e (''x'' + ''y'' e) = ''x'' e since e2 = 0. A number ''x'' + ''y'' e is a dual number. The dual numbers form a ring, but, since e has no multiplicative inverse, it does not generate a group so the action is not a group action. Excluding (0,0) from ''P'' makes [''x'' : ''y''] projective coordinates which describe the real projective line, a one-dimensional space. Since the origin is excluded, at least one of the ratios ''x''/''y'' and ''y''/''x'' exists. Then [''x'' : ''y''] = [''x''/''y'' : 1] or [''x'' : ''y''] = [1 : ''y''/''x'']. The projective line P1(R) is a topological manifold covered by two topological manifold#Coordinate charts, coordinate charts, [''z'' : 1] → ''z'' or [1 : ''z''] → ''z'', which form an atlas (topology), atlas. For points covered by both charts the ''transition function'' is multiplicative inversion on an open neighborhood of the point, which provides a homeomorphism as required in a manifold. One application of the real projective line is found in Cayley–Klein metric geometry.


''n'' = 3


''n'' = 4

can be imagined using the fact that points , where each is either 0 or 1, are vertices of a tesseract (pictured), the 4-hypercube (see #Polytopes in Rn, above). The first major use of is a spacetime model: three spatial coordinates plus one time, temporal. This is usually associated with theory of relativity, although four dimensions were used for such models since Galileo Galilei, Galilei. The choice of theory leads to different structure, though: in Galilean relativity the coordinate is privileged, but in Einsteinian relativity it is not. Special relativity is set in Minkowski space. General relativity uses curved spaces, which may be thought of as with a metric tensor (general relativity), curved metric for most practical purposes. None of these structures provide a (positive-definite) metric (mathematics), metric on . Euclidean also attracts the attention of mathematicians, for example due to its relation to quaternions, a 4-dimensional algebra over a field, real algebra themselves. See rotations in 4-dimensional Euclidean space for some information. In differential geometry, is the only case where admits a non-standard differential structure: see exotic R4, exotic R4.


Norms on

One could define many norms on the vector space . Some common examples are * the p-norm, defined by \, \mathbf\, _p := \sqrt[p] for all \mathbf \in \mathbf^n where p is a positive integer. The case p = 2 is very important, because it is exactly the Euclidean norm. * the \infty-norm or maximum norm, defined by \, \mathbf\, _\infty:=\max \ for all \mathbf \in \mathbf^n. This is the limit of all the p-norms: \, \mathbf\, _\infty = \lim_ \sqrt[p]. A really surprising and helpful result is that every norm defined on is Equivalent norm, equivalent. This means for two arbitrary norms \, \cdot\, and \, \cdot\, ' on you can always find positive real numbers \alpha,\beta > 0, such that \alpha \cdot \, \mathbf\, \leq \, \mathbf\, ' \leq \beta\cdot\, \mathbf\, for all \mathbf \in \R^n. This defines an equivalence relation on the set of all norms on . With this result you can check that a sequence of vectors in converges with \, \cdot\, if and only if it converges with \, \cdot\, '. Here is a sketch of what a proof of this result may look like: Because of the equivalence relation it is enough to show that every norm on is equivalent to the Euclidean norm \, \cdot\, _2. Let \, \cdot\, be an arbitrary norm on . The proof is divided in two steps: * We show that there exists a \beta > 0, such that \, \mathbf\, \leq \beta \cdot \, \mathbf\, _2 for all \mathbf \in \mathbf^n. In this step you use the fact that every \mathbf = (x_1, \dots, x_n) \in \mathbf^n can be represented as a linear combination of the standard Basis (linear algebra), basis: \mathbf = \sum_^n e_i \cdot x_i. Then with the Cauchy–Schwarz inequality \, \mathbf\, = \left\, \sum_^n e_i \cdot x_i \right\, \leq \sum_^n \, e_i\, \cdot , x_i, \leq \sqrt \cdot \sqrt = \beta \cdot \, \mathbf\, _2, where \beta := \sqrt. * Now we have to find an \alpha > 0, such that \alpha\cdot\, \mathbf\, _2 \leq \, \mathbf\, for all \mathbf \in \mathbf^n. Assume there is no such \alpha. Then there exists for every k \in \mathbf a \mathbf_k \in \mathbf^n, such that \, \mathbf_k\, _2 > k \cdot \, \mathbf_k\, . Define a second sequence (\tilde_k)_ by \tilde_k := \frac. This sequence is bounded because \, \tilde_k\, _2 = 1. So because of the Bolzano–Weierstrass theorem there exists a convergent subsequence (\tilde_)_ with limit \mathbf \in . Now we show that \, \mathbf\, _2 = 1 but \mathbf = \mathbf, which is a contradiction. It is \, \mathbf\, \leq \left\, \mathbf - \tilde_\right\, + \left\, \tilde_\right\, \leq \beta \cdot \left\, \mathbf - \tilde_\right\, _2 + \frac \ \overset \ 0, because \, \mathbf-\tilde_\, \to 0 and 0 \leq \frac < \frac, so \frac \to 0. This implies \, \mathbf\, = 0, so \mathbf= \mathbf. On the other hand \, \mathbf\, _2 = 1, because \, \mathbf\, _2 = \left\, \lim_\tilde_ \right\, _2 = \lim_ \left\, \tilde_ \right\, _2 = 1. This can not ever be true, so the assumption was false and there exists such a \alpha > 0.


See also

* Exponential object, for theoretical explanation of the superscript notation * Geometric space * Real projective space


Sources

* * {{Real numbers Real numbers, N Topological vector spaces Analytic geometry Multivariable calculus Mathematical analysis