(Redirected from Linear mapping)In
mathematics, a 'linear map' (also called a 'linear transformation' or 'linear operator') is a
function between two
vector spaces that preserves the operations of vector addition and
scalar multiplication. The term "linear transformation" is in particularly common use, especially for linear maps from a vector space to itself (
endomorphisms).
In the language of
abstract algebra, a linear map is a
homomorphism of vector spaces, or a
morphism in the
category of vector spaces over a given
field.
Definition and first consequences
Let ''V'' and ''W'' be vector spaces over the same
field ''K''. A function ''f'' : ''V'' → ''W'' is said to be a ''linear map'' if for any two vectors ''x'' and ''y'' in ''V'' and any scalar ''a'' in ''K'', the following two conditions are satisfied:
| additivity |
| homogeneity |
This is equivalent to requiring that for any vectors ''x''
1, ..., ''x''
''m'' and scalars ''a''
1, ..., ''a''
''m'', the equality
:
holds.
Occasionally, ''V'' and ''W'' can be considered to be vector spaces over different fields. It is then necessary to specify which of these ground fields is being used in the definition of "linear". If ''V'' and ''W'' are considered as spaces over the field ''K'' as above, we talk about ''K''-linear maps. For example, the conjugation of
complex numbers is an 'R'-linear map 'C' → 'C', but it is not 'C'-linear.
A linear map from ''V'' to ''K'' (with ''K'' viewed as a vector space over itself) is called a
linear functional.
It immediately follows from the definition that ''f''(0) = 0. Hence linear maps are sometimes called 'homogeneous linear maps' (see
linear function).
Examples
★ The
identity map and
zero map are linear.
★ For real numbers, the map
is not linear.
★ If ''A'' is an ''m'' × ''n''
matrix, then ''A'' defines a linear map from 'R'
''n'' to 'R'
''m'' by sending the
column vector ''x'' ∈ 'R'
''n'' to the column vector ''Ax'' ∈ 'R'
''m''. Conversely, any linear map between
finite-dimensional vector spaces can be represented in this manner; see the following section.
★ The
integral yields a linear map from the space of all real-valued integrable functions on some
interval to 'R'
★
Differentiation is a linear map from the space of all differentiable functions to the space of all functions.
★ If ''V'' and ''W'' are finite-dimensional vector spaces over a field ''F'', then functions that send linear maps ''f'' : ''V'' → ''W'' to dim
''F''(''W'')-by-dim
''F''(''V'') matrices in the way described in the sequel are themselves linear maps.
Matrices
If ''V'' and ''W'' are
finite-dimensional, and one has chosen
bases in those spaces, then every linear map from ''V'' to ''W'' can be represented as a
matrix; this is useful because it allows concrete calculations. Conversely, matrices yield examples of linear maps: if ''A'' is a real ''m''-by-''n'' matrix, then the rule
''f''(''x'') = ''Ax'' describes a linear map 'R'
''n'' → 'R'
''m'' (see
Euclidean space).
Let
be a basis for ''V''. Then every vector ''v'' in ''V'' is uniquely determined by the coefficients
in
:
If ''f'' : ''V'' → ''W'' is a linear map,
:
which implies that the function f is entirely determined by the values of
Now let
be a basis for ''W''. Then we can represent the values of each
as
:
Thus, the function ''f'' is entirely determined by the values of
If we put these values into an ''m''-by-''n'' matrix ''M'', then we can conveniently use it to compute the value of ''f'' for any vector in ''V''. For if we place the values of
in an n-by-1 matrix ''C'', we have ''MC'' = f(''v'').
A single linear map may be represented by many matrices. This is because the values of the elements of the matrix depend on the bases that are chosen.
Examples of linear transformation matrices
Some special cases of linear transformations of two-
dimensional space 'R'
2 are illuminating:
★
rotation by 90 degrees counterclockwise:
★ :
★
reflection against the ''x'' axis:
★ :
★
scaling by 2 in all directions:
★ :
★
vertical shear:
★ :
★
squeezing:
★ :
★
projection onto the ''y'' axis:
★ :
Forming new linear maps from given ones
The composition of linear maps is linear: if ''f'' : ''V'' → ''W'' and ''g'' : ''W'' → ''Z'' are linear, then so is ''g'' o ''f'' : ''V'' → ''Z''.
The
inverse of a linear map, when defined, is again a linear map.
If ''f''
1 : ''V'' → ''W'' and ''f''
2 : ''V'' → ''W'' are linear, then so is their sum ''f''
1 + ''f''
2 (which is defined by (''f''
1 + ''f''
2)(''x'') = ''f''
1(''x'') + ''f''
2(''x'')).
If ''f'' : ''V'' → ''W'' is linear and ''a'' is an element of the ground field ''K'', then the map ''af'', defined by (''af'')(''x'') = ''a'' (''f''(''x'')), is also linear.
Thus the set ''L''(''V'',''W'') of linear maps from ''V'' to ''W'' itself forms a vector space over ''K'', sometimes denoted Hom(''V'',''W''). Furthermore, in the case that ''V''=''W'', this vector space (denoted End(''V'')) is an
associative algebra under
composition of maps, since the composition of two linear maps is again a linear map, and the composition of maps is always associative. This case is discussed in more detail below.
Given again the finite-dimensional case, if bases have been chosen, then the composition of linear maps corresponds to the
matrix multiplication, the addition of linear maps corresponds to the
matrix addition, and the multiplication of linear maps with scalars corresponds to the multiplication of matrices with scalars.
Endomorphisms and automorphisms
A linear transformation ''f'' : ''V'' → ''V'' is an
endomorphism of ''V''; the set of all such endomorphisms End(''V'') together with addition, composition and scalar multiplication as defined above forms an
associative algebra with identity element over the field ''K'' (and in particular a
ring). The multiplicative identity element of this algebra is the
identity map id : ''V'' → ''V''.
An endomorphism of ''V'' that is also an
isomorphism is called an
automorphism of ''V''. The composition of two automorphisms is again an automorphism, and the set of all automorphisms of ''V'' forms a
group, the
automorphism group of ''V'' which is denoted by Aut(''V'') or GL(''V''). Since the automorphisms are precisely those endomorphisms which possess inverses under composition, Aut(''V'') is the group of
units in the ring End(''V'').
If ''V'' has finite dimension ''n'', then End(''V'') is
isomorphic to the
associative algebra of all ''n'' by ''n'' matrices with entries in ''K''. The automorphism group of ''V'' is
isomorphic to the
general linear group GL(''n'', ''K'') of all ''n'' by ''n'' invertible matrices with entries in ''K''.
Kernel, image and the rank-nullity theorem
If ''f'' : ''V'' → ''W'' is linear, we define the '
kernel' and the '
image' or '
range' of ''f'' by
:
:
ker(''f'') is a
subspace of ''V'' and im(''f'') is a subspace of ''W''. The following
dimension formula, known as the
rank-nullity theorem, is often useful:
:
The number dim(im(''f'')) is also called the ''rank of f'' and written as rk(''f''), or sometimes, ρ(''f''); the number dim(ker(''f'')) is called the ''nullity of f'' and written as ν(''f''). If ''V'' and ''W'' are finite dimensional, bases have been chosen and ''f'' is represented by the matrix ''A'', then the rank and nullity of ''f'' are equal to the
rank and
nullity of the matrix ''A'', respectively.
Algebraic classifications of linear transformations
No classification of linear maps could hope to be exhaustive. The following incomplete list enumerates some important classifications that do not require any additional structure on the vector space.
Let ''V'' and ''W'' denote vector spaces over a field, ''F''. Let ''T'':''V'' → ''W'' be a linear map.
★ ''T'' is said to be ''
injective'' or a ''
monomorphism'' if any of the following equivalent conditions are true:
★
★ ''T'' is
one-to-one as a map of
sets.
★
★ ker ''T'' = 0
★
★ ''T'' is
monic or left-cancellable, which is to say, for any vector space ''U'' and any pair of linear maps ''R'':''U'' → ''V'' and ''S'':''U'' → ''V'', the equation ''TR''=''TS'' implies ''R''=''S''.
★
★ ''T'' is
left-invertible, which is to say there exists a linear map ''S'':''W'' → ''V'' such that ''ST'' is the
identity map on ''V''.
★ ''T'' is said to be ''
surjective'' or an ''
epimorphism'' if any of the following equivalent conditions are true:
★
★ ''T'' is
onto as a map of
sets.
★
★
coker ''T'' = 0
★
★ ''T'' is
epic or right-cancellable, which is to say, for any vector space ''U'' and any pair of linear maps ''R'':''W'' → ''U'' and ''S'':''W'' → ''U'', the equation ''RT''=''ST'' implies ''R''=''S''.
★
★ ''T'' is
right-invertible, which is to say there exists a linear map ''S'':''W'' → ''V'' such that ''TS'' is the
identity map on ''V''.
★ ''T'' is said to be an ''
isomorphism'' if it is both left- and right-invertible. This is equivalent to ''T'' being both one-to-one and onto (a
bijection of sets) or also to ''T'' being both epic and monic, and so being a
bimorphism.
★ If ''T'': ''V'' → ''V'' is an endomorphism, then:
★
★ If, for some positive integer ''n'', the ''n''-th iterate of ''T'', ''T''
''n'', is identically zero, then ''T'' is said to be
nilpotent.
★
★ If ''T'' ''T'' = ''T'', then ''T'' is said to be
idempotent
★
★ If ''T'' = ''k'' ''I'', where ''k'' is some scalar, then ''T'' is said to be a scaling transformation or scalar multiplication map.
Continuity
Main articles: Discontinuous linear map
A ''linear operator'' between
topological vector spaces, for example
normed spaces, may also be
continuous and therefore be a
continuous linear operator. On a normed space, a linear operator is continuous if and only if it is
bounded, for example, when the domain is finite-dimensional. If the domain is infinite-dimensional, then there may be
discontinuous linear operators. An example of an unbounded, hence not continuous, linear transformation is differentiation on the space of smooth functions equipped with the supremum norm (a function with small values can have a derivative with large values).
Applications
A specific application of linear maps is in the field of computational neuroscience. An example of a system being modeled is the innervation of V1 (primary visual cortex) by the retina. This transformation is called the
logmap transformation. This kind of transformation is known as a domain coordinate transformation and provides a mathematical model of how neural states can be conferred within the system (CNS and PNS), when a change of state is required, such as from the retina to V1 as previously mentioned.
Another specific application is for geometric transformations, such as those performed in
computer graphics, where the translation, rotation and scaling of 2D or 3D objects is performed by the use of a
transformation matrix.
Another application of these transformations is in
compiler optimizations of nested loop code, and in parallelizing compiler techniques.
See also
★
Linear equation
★
Antilinear map
★
Transformation matrix
★
Continuous linear operator
★
★
Neural network
★
Computer graphics
References
★
Halmos, Paul R., ''Finite-Dimensional Vector Spaces'', Springer-Verlag, (1993). ISBN 0-387-90093-4.