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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 ...
, a symmetric bilinear form on 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 ...
is a
bilinear map In mathematics, a bilinear map is a function combining elements of two vector spaces to yield an element of a third vector space, and is linear in each of its arguments. Matrix multiplication is an example. A bilinear map can also be defined for ...
from two copies of the vector space to the field of scalars such that the order of the two vectors does not affect the value of the map. In other words, it is a bilinear function B that maps every pair (u,v) of elements of the vector space V to the underlying field such that B(u,v)=B(v,u) for every u and v in V. They are also referred to more briefly as just symmetric forms when "bilinear" is understood. Symmetric bilinear forms on finite-dimensional vector spaces precisely correspond to symmetric matrices given a basis for ''V''. Among bilinear forms, the symmetric ones are important because they are the ones for which the vector space admits a particularly simple kind of basis known as an orthogonal basis (at least when the characteristic of the field is not 2). Given a symmetric bilinear form ''B'', the function is the associated
quadratic form In mathematics, a quadratic form is a polynomial with terms all of degree two (" form" is another name for a homogeneous polynomial). For example, 4x^2 + 2xy - 3y^2 is a quadratic form in the variables and . The coefficients usually belong t ...
on the vector space. Moreover, if the characteristic of the field is not 2, ''B'' is the unique symmetric bilinear form associated with ''q''.


Formal definition

Let '' V'' be a vector space of dimension ''n'' over a field ''K''. A map B : V\times V\rightarrow K is a symmetric bilinear form on the space if: * B(u,v)=B(v,u)\ \quad \forall u,v \in V * B(u+v,w)=B(u,w)+B(v,w)\ \quad \forall u,v,w \in V * B(\lambda v,w)=\lambda B(v,w)\ \quad \forall \lambda \in K,\forall v,w \in V The last two axioms only establish linearity in the first argument, but the first axiom (symmetry) then immediately implies linearity in the second argument as well.


Examples

Let , the ''n'' dimensional real vector space. Then the standard
dot product In mathematics, the dot product or scalar productThe term ''scalar product'' means literally "product with a Scalar (mathematics), scalar as a result". It is also used for other symmetric bilinear forms, for example in a pseudo-Euclidean space. N ...
is a symmetric bilinear form, . The matrix corresponding to this bilinear form (see below) on a
standard basis In mathematics, the standard basis (also called natural basis or canonical basis) of a coordinate vector space (such as \mathbb^n or \mathbb^n) is the set of vectors, each of whose components are all zero, except one that equals 1. For exampl ...
is the identity matrix. Let ''V'' be any vector space (including possibly infinite-dimensional), and assume ''T'' is a linear function from ''V'' to the field. Then the function defined by is a symmetric bilinear form. Let ''V'' be the vector space of continuous single-variable real functions. For f,g \in V one can define \textstyle B(f,g)=\int_0^1 f(t)g(t) dt. By the properties of definite integrals, this defines a symmetric bilinear form on ''V''. This is an example of a symmetric bilinear form which is not associated to any symmetric matrix (since the vector space is infinite-dimensional).


Matrix representation

Let C=\ be a basis for ''V''. Define the matrix ''A'' by A_=B(e_,e_). The matrix ''A'' is 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 a symmetric matrix are symmetric with ...
exactly due to symmetry of the bilinear form. If we let the ''n''×1 matrix ''x'' represent the vector ''v'' with respect to this basis, and similarly let the ''n''×1 matrix ''y'' represent the vector ''w'', then B(v,w) is given by : :x^\mathsf A y=y^\mathsf A x. Suppose '' C' '' is another basis for ''V'', with : \begine'_ & \cdots & e'_\end = \begine_ & \cdots & e_\endS with ''S'' an invertible ''n''×''n'' matrix. Now the new matrix representation for the symmetric bilinear form is given by :A' =S^\mathsf A S .


Orthogonality and singularity

Two vectors ''v'' and ''w'' are defined to be orthogonal with respect to the bilinear form ''B'' if , which, for a symmetric bilinear form, is equivalent to . The radical of a bilinear form ''B'' is the set of vectors orthogonal with every vector in ''V''. That this is a subspace of ''V'' follows from the linearity of ''B'' in each of its arguments. When working with a matrix representation ''A'' with respect to a certain basis, ''v'', represented by ''x'', is in the radical if and only if :A x = 0 \Longleftrightarrow x^\mathsf A = 0 . The matrix ''A'' is singular if and only if the radical is nontrivial. If ''W'' is a subset of ''V'', then its ''
orthogonal complement In the mathematical fields of linear algebra and functional analysis, the orthogonal complement of a subspace W of a vector space V equipped with a bilinear form B is the set W^\perp of all vectors in V that are orthogonal to every vector in W. I ...
'' ''W'' is the set of all vectors in ''V'' that are orthogonal to every vector in ''W''; it is a subspace of ''V''. When ''B'' is non-degenerate, the radical of ''B'' is trivial and the dimension of ''W'' is .


Orthogonal basis

A basis C=\ is orthogonal with respect to ''B'' if and only if : :B(e_,e_) = 0\ \forall i \neq j. When the characteristic of the field is not two, ''V'' always has an orthogonal basis. This can be proven by induction. A basis ''C'' is orthogonal if and only if the matrix representation ''A'' is a
diagonal matrix In linear algebra, a diagonal matrix is a matrix in which the entries outside the main diagonal are all zero; the term usually refers to square matrices. Elements of the main diagonal can either be zero or nonzero. An example of a 2×2 diagon ...
.


Signature and Sylvester's law of inertia

In a more general form, Sylvester's law of inertia says that, when working 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. Basic examples of ordered fields are the rational numbers and the real numbers, both with their standard ord ...
, the numbers of diagonal elements in the diagonalized form of a matrix that are positive, negative and zero respectively are independent of the chosen orthogonal basis. These three numbers form the ''
signature A signature (; from , "to sign") is a depiction of someone's name, nickname, or even a simple "X" or other mark that a person writes on documents as a proof of identity and intent. Signatures are often, but not always, Handwriting, handwritt ...
'' of the bilinear form.


Real case

When working in a space over the reals, one can go a bit a further. Let C=\ be an orthogonal basis. We define a new basis C'=\ : e'_i = \begin e_i & \text B(e_i,e_i)=0 \\ \frac & \text B(e_i,e_i) >0\\ \frac& \text B(e_i,e_i) <0 \end Now, the new matrix representation ''A'' will be a diagonal matrix with only 0, 1 and −1 on the diagonal. Zeroes will appear if and only if the radical is nontrivial.


Complex case

When working in a space over the complex numbers, one can go further as well and it is even easier. Let C=\ be an orthogonal basis. We define a new basis C'=\ : : e'_i = \begin e_i & \text\; B(e_i,e_i)=0 \\ e_i/\sqrt & \text\; B(e_i,e_i) \neq 0\\ \end Now the new matrix representation ''A'' will be a diagonal matrix with only 0 and 1 on the diagonal. Zeroes will appear if and only if the radical is nontrivial.


Orthogonal polarities

Let ''B'' be a symmetric bilinear form with a trivial radical on the space ''V'' over the field ''K'' with characteristic not 2. One can now define a map from D(''V''), the set of all subspaces of ''V'', to itself: :\alpha:D(V)\rightarrow D(V) :W\mapsto W^. This map is an orthogonal polarity on the
projective space In mathematics, the concept of a projective space originated from the visual effect of perspective, where parallel lines seem to meet ''at infinity''. A projective space may thus be viewed as the extension of a Euclidean space, or, more generally ...
PG(''W''). Conversely, one can prove all orthogonal polarities are induced in this way, and that two symmetric bilinear forms with trivial radical induce the same polarity if and only if they are equal up to scalar multiplication.


References

* * * {{DEFAULTSORT:Symmetric Bilinear Form Bilinear forms