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Coordinate vector

In linear algebra, a coordinate vector is a representation of a vector as an ordered list of numbers (a tuple) that describes the vector in terms of a particular ordered basis.[1] An easy example may be a position such as (5, 2, 1) in a 3-dimensional Cartesian coordinate system with the basis as the axes of this system. Coordinates are always specified relative to an ordered basis. Bases and their associated coordinate representations let one realize vector spaces and linear transformations concretely as column vectors, row vectors, and matrices; hence, they are useful in calculations.

The idea of a coordinate vector can also be used for infinite-dimensional vector spaces, as addressed below.

Definition edit

Let V be a vector space of dimension n over a field F and let

 

be an ordered basis for V. Then for every   there is a unique linear combination of the basis vectors that equals  :

 

The coordinate vector of   relative to B is the sequence of coordinates

 

This is also called the representation of   with respect to B, or the B representation of  . The   are called the coordinates of  . The order of the basis becomes important here, since it determines the order in which the coefficients are listed in the coordinate vector.

Coordinate vectors of finite-dimensional vector spaces can be represented by matrices as column or row vectors. In the above notation, one can write

 

and

 

where   is the transpose of the matrix  .

The standard representation edit

We can mechanize the above transformation by defining a function  , called the standard representation of V with respect to B, that takes every vector to its coordinate representation:  . Then   is a linear transformation from V to Fn. In fact, it is an isomorphism, and its inverse   is simply

 

Alternatively, we could have defined   to be the above function from the beginning, realized that   is an isomorphism, and defined   to be its inverse.

Examples edit

Example 1 edit

Let   be the space of all the algebraic polynomials of degree at most 3 (i.e. the highest exponent of x can be 3). This space is linear and spanned by the following polynomials:

 

matching

 

then the coordinate vector corresponding to the polynomial

 

is

 

According to that representation, the differentiation operator d/dx which we shall mark D will be represented by the following matrix:

 

Using that method it is easy to explore the properties of the operator, such as: invertibility, Hermitian or anti-Hermitian or neither, spectrum and eigenvalues, and more.

Example 2 edit

The Pauli matrices, which represent the spin operator when transforming the spin eigenstates into vector coordinates.

Basis transformation matrix edit

Let B and C be two different bases of a vector space V, and let us mark with   the matrix which has columns consisting of the C representation of basis vectors b1, b2, …, bn:

 

This matrix is referred to as the basis transformation matrix from B to C. It can be regarded as an automorphism over  . Any vector v represented in B can be transformed to a representation in C as follows:

 

Under the transformation of basis, notice that the superscript on the transformation matrix, M, and the subscript on the coordinate vector, v, are the same, and seemingly cancel, leaving the remaining subscript. While this may serve as a memory aid, it is important to note that no such cancellation, or similar mathematical operation, is taking place.

Corollary edit

The matrix M is an invertible matrix and M−1 is the basis transformation matrix from C to B. In other words,

 

Infinite-dimensional vector spaces edit

Suppose V is an infinite-dimensional vector space over a field F. If the dimension is κ, then there is some basis of κ elements for V. After an order is chosen, the basis can be considered an ordered basis. The elements of V are finite linear combinations of elements in the basis, which give rise to unique coordinate representations exactly as described before. The only change is that the indexing set for the coordinates is not finite. Since a given vector v is a finite linear combination of basis elements, the only nonzero entries of the coordinate vector for v will be the nonzero coefficients of the linear combination representing v. Thus the coordinate vector for v is zero except in finitely many entries.

The linear transformations between (possibly) infinite-dimensional vector spaces can be modeled, analogously to the finite-dimensional case, with infinite matrices. The special case of the transformations from V into V is described in the full linear ring article.

See also edit

References edit

  1. ^ Howard Anton; Chris Rorres (12 April 2010). Elementary Linear Algebra: Applications Version. John Wiley & Sons. ISBN 978-0-470-43205-1.

coordinate, vector, this, article, needs, additional, citations, verification, please, help, improve, this, article, adding, citations, reliable, sources, unsourced, material, challenged, removed, find, sources, news, newspapers, books, scholar, jstor, februar. This article needs additional citations for verification Please help improve this article by adding citations to reliable sources Unsourced material may be challenged and removed Find sources Coordinate vector news newspapers books scholar JSTOR February 2009 Learn how and when to remove this message In linear algebra a coordinate vector is a representation of a vector as an ordered list of numbers a tuple that describes the vector in terms of a particular ordered basis 1 An easy example may be a position such as 5 2 1 in a 3 dimensional Cartesian coordinate system with the basis as the axes of this system Coordinates are always specified relative to an ordered basis Bases and their associated coordinate representations let one realize vector spaces and linear transformations concretely as column vectors row vectors and matrices hence they are useful in calculations The idea of a coordinate vector can also be used for infinite dimensional vector spaces as addressed below Contents 1 Definition 2 The standard representation 3 Examples 3 1 Example 1 3 2 Example 2 4 Basis transformation matrix 4 1 Corollary 5 Infinite dimensional vector spaces 6 See also 7 ReferencesDefinition editLet V be a vector space of dimension n over a field F and let B b 1 b 2 b n displaystyle B b 1 b 2 ldots b n nbsp be an ordered basis for V Then for every v V displaystyle v in V nbsp there is a unique linear combination of the basis vectors that equals v displaystyle v nbsp v a 1 b 1 a 2 b 2 a n b n displaystyle v alpha 1 b 1 alpha 2 b 2 cdots alpha n b n nbsp The coordinate vector of v displaystyle v nbsp relative to B is the sequence of coordinates v B a 1 a 2 a n displaystyle v B alpha 1 alpha 2 ldots alpha n nbsp This is also called the representation of v displaystyle v nbsp with respect to B or the B representation of v displaystyle v nbsp The a 1 a 2 a n displaystyle alpha 1 alpha 2 ldots alpha n nbsp are called the coordinates of v displaystyle v nbsp The order of the basis becomes important here since it determines the order in which the coefficients are listed in the coordinate vector Coordinate vectors of finite dimensional vector spaces can be represented by matrices as column or row vectors In the above notation one can write v B a 1 a n displaystyle v B begin bmatrix alpha 1 vdots alpha n end bmatrix nbsp and v B T a 1 a 2 a n displaystyle v B T begin bmatrix alpha 1 amp alpha 2 amp cdots amp alpha n end bmatrix nbsp where v B T displaystyle v B T nbsp is the transpose of the matrix v B displaystyle v B nbsp The standard representation editWe can mechanize the above transformation by defining a function ϕ B displaystyle phi B nbsp called the standard representation of V with respect to B that takes every vector to its coordinate representation ϕ B v v B displaystyle phi B v v B nbsp Then ϕ B displaystyle phi B nbsp is a linear transformation from V to Fn In fact it is an isomorphism and its inverse ϕ B 1 F n V displaystyle phi B 1 F n to V nbsp is simply ϕ B 1 a 1 a n a 1 b 1 a n b n displaystyle phi B 1 alpha 1 ldots alpha n alpha 1 b 1 cdots alpha n b n nbsp Alternatively we could have defined ϕ B 1 displaystyle phi B 1 nbsp to be the above function from the beginning realized that ϕ B 1 displaystyle phi B 1 nbsp is an isomorphism and defined ϕ B displaystyle phi B nbsp to be its inverse Examples editExample 1 edit Let P 3 displaystyle P 3 nbsp be the space of all the algebraic polynomials of degree at most 3 i e the highest exponent of x can be 3 This space is linear and spanned by the following polynomials B P 1 x x 2 x 3 displaystyle B P left 1 x x 2 x 3 right nbsp matching 1 1 0 0 0 x 0 1 0 0 x 2 0 0 1 0 x 3 0 0 0 1 displaystyle 1 begin bmatrix 1 0 0 0 end bmatrix quad x begin bmatrix 0 1 0 0 end bmatrix quad x 2 begin bmatrix 0 0 1 0 end bmatrix quad x 3 begin bmatrix 0 0 0 1 end bmatrix nbsp then the coordinate vector corresponding to the polynomial p x a 0 a 1 x a 2 x 2 a 3 x 3 displaystyle p left x right a 0 a 1 x a 2 x 2 a 3 x 3 nbsp is a 0 a 1 a 2 a 3 displaystyle begin bmatrix a 0 a 1 a 2 a 3 end bmatrix nbsp According to that representation the differentiation operator d dx which we shall mark D will be represented by the following matrix D p x P x D 0 1 0 0 0 0 2 0 0 0 0 3 0 0 0 0 displaystyle Dp x P x quad D begin bmatrix 0 amp 1 amp 0 amp 0 0 amp 0 amp 2 amp 0 0 amp 0 amp 0 amp 3 0 amp 0 amp 0 amp 0 end bmatrix nbsp Using that method it is easy to explore the properties of the operator such as invertibility Hermitian or anti Hermitian or neither spectrum and eigenvalues and more Example 2 edit The Pauli matrices which represent the spin operator when transforming the spin eigenstates into vector coordinates Basis transformation matrix editLet B and C be two different bases of a vector space V and let us mark with M C B displaystyle lbrack M rbrack C B nbsp the matrix which has columns consisting of the C representation of basis vectors b1 b2 bn M C B b 1 C b n C displaystyle lbrack M rbrack C B begin bmatrix lbrack b 1 rbrack C amp cdots amp lbrack b n rbrack C end bmatrix nbsp This matrix is referred to as the basis transformation matrix from B to C It can be regarded as an automorphism over F n displaystyle F n nbsp Any vector v represented in B can be transformed to a representation in C as follows v C M C B v B displaystyle lbrack v rbrack C lbrack M rbrack C B lbrack v rbrack B nbsp Under the transformation of basis notice that the superscript on the transformation matrix M and the subscript on the coordinate vector v are the same and seemingly cancel leaving the remaining subscript While this may serve as a memory aid it is important to note that no such cancellation or similar mathematical operation is taking place Corollary edit The matrix M is an invertible matrix and M 1 is the basis transformation matrix from C to B In other words Id M C B M B C M C C M B C M C B M B B displaystyle begin aligned operatorname Id amp lbrack M rbrack C B lbrack M rbrack B C lbrack M rbrack C C 3pt amp lbrack M rbrack B C lbrack M rbrack C B lbrack M rbrack B B end aligned nbsp Infinite dimensional vector spaces editSuppose V is an infinite dimensional vector space over a field F If the dimension is k then there is some basis of k elements for V After an order is chosen the basis can be considered an ordered basis The elements of V are finite linear combinations of elements in the basis which give rise to unique coordinate representations exactly as described before The only change is that the indexing set for the coordinates is not finite Since a given vector v is a finite linear combination of basis elements the only nonzero entries of the coordinate vector for v will be the nonzero coefficients of the linear combination representing v Thus the coordinate vector for v is zero except in finitely many entries The linear transformations between possibly infinite dimensional vector spaces can be modeled analogously to the finite dimensional case with infinite matrices The special case of the transformations from V into V is described in the full linear ring article See also editChange of basis Coordinate spaceReferences edit Howard Anton Chris Rorres 12 April 2010 Elementary Linear Algebra Applications Version John Wiley amp Sons ISBN 978 0 470 43205 1 Retrieved from https en wikipedia org w index php title Coordinate vector amp oldid 1203081185, wikipedia, wiki, book, books, library,

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