Mathematics for Applied Sciences (Osnabrück 2023-2024)/Part I/Lecture 23/refcontrol

The solution set of a homogeneous system of linear equations in variables over a field is a linear subspace of . Quite often, this solution space is described as the set of all "linear combinations“ of finitely many (simple) solutions. In this lecture, we develop the concepts to make this precise.



Generating systems
The plane generated by two vectors and consists of all linear combinations .

Let be a field,MDLD/field and let be a -vector space.MDLD/vector space Let denote a family of vectors in . Then the vector

is called a linear combination of this vectors

(for the coefficient tuple ).

Two different coefficient tuples can define the same vector.


Let be a field,MDLD/field and let be a -vector space.MDLD/vector space A family , , is called a generating system (or spanning system) of , if every vector can be written as

with a finite subfamily , and with

.

In , the standard vectors , , form a generating system. In the polynomial ring , the powers , , form an (infinite) generating system.


Let be a field,MDLD/field and let be a -vector space.MDLD/vector space For a family , , we set

and call this the linear span of the family, or the generated linear subspace.

The empty set generates the null space.[1] The null space is also generated by the element . A single vector spans the space . For , this is a line, a term we will make more precise in the framework of dimension theory. For two vectors and , the "form“ of the spanned space depends on how the two vectors are related to each other. If they both lie on a line, say , then is superfluous, and the linear subspace generated by the two vectors equals the linear subspace generated by . If this is not the case (and and are not ), then the two vectors span a "plane“.

We list some simple properties for generating systems and linear subspaces.


Let be a field,MDLD/field and let be a

-vector space.MDLD/vector space Then the following statements hold.
  1. For a family , , of elements in , the linear spanMDLD/linear span is a linear subspaceMDLD/linear subspace of .
  2. The family , , is a spanning system of , if and only if

Proof



Linear independence

Let be a field,MDLD/field and let be a -vector space.MDLD/vector space A family of vectors , , (where denotes a finite index set) is called linearly independent if an equation of the form

is only possible when

for all .


If a family is not linearly independent,MDLD/linearly independent then it is called linearly dependent. A linear combination is called a representation of the null vector. It is called the trivial representation if all coefficients equal and, if at least one coefficient is not , a nontrivial representation of the null vector. A family of vectors is linearly independent if and only if one can represent with the family the null vector only in the trivial way. This is equivalent with the property that no vector of the family can be expressed as a linear combination by the others.


== Example Example 23.6

change==

The standard vectorsMDLD/standard vectors in are linearly independent.MDLD/linearly independent A representation

just means

The -th row yields directly .


The three vectors

are linearly dependent.MDLD/linearly dependent The equation

is a nontrivial representation of the null vector.


Let be a field,MDLD/field let be a -vector space,MDLD/vector space and let , ,

be a family of vectors in . Then the following statements hold.
  1. If the family is linearly independent, then for each subset , also the family  , , is linearly independent.
  2. The empty family is linearly independent.
  3. If the family contains the null vector, then it is not linearly independent.
  4. If a vector appears several times in the family, then the family is not linearly independent.
  5. A single vector is linearly independent if and only if .
  6. Two vectors and are linearly independent if and only if is not a scalar multiple of and vice versa.

Proof



The vectors are linearly dependentMDLD/linearly dependent if and only if the homogeneous linear systemMDLD/homogeneous linear system

has a nontrivial solution.



Basis

Let be a field,MDLD/field and let be a -vector space.MDLD/vector space Then a linearly independentMDLD/linearly independent generating systemMDLD/generating system (vs) , ,

of is called a basis of .

The standard vectorsMDLD/standard vectors in form a basis.MDLD/basis (vs) The linear independenceMDLD/linear independence was shown in Example 23.6 . To show that they also form a generating system,MDLD/generating system (vs) let

be an arbitrary vector. Then we have immediately

Hence, we have a basis, which is called the standard basis of .


TheoremTheorem 23.12 change

Let be a field,MDLD/field and let be a -vector space.MDLD/vector space Let

be a family of vectors. Then the following statements are equivalent.
  1. The family is a basisMDLD/basis (vs) of .
  2. The family is a minimal generating system;MDLD/generating system (vs) that is, as soon as we remove one vector , the remaining family is not a generating system any more.
  3. For every vector , there is exactly one representation
  4. The family is maximally linearly independent;MDLD/linearly independent that is, as soon as some vector is added, the family is not linearly independent any more.

Proof

This proof was not presented in the lecture.



Let a basisMDLD/basis (vs) of a -vector spaceMDLD/vector space be given. Due to Theorem 23.12   (3), this means that for every vector , there exists a uniquely determined representation

The elements (scalars) are called the coordinates of with respect to the given basis. Thus, for a fixed basis, we have a (bijective) correspondence between the vectors from , and the coordinate tuples . We express this by saying that a basis determines a linear coordinate system.[2]


Let be a field,MDLD/field and let be a -vector spaceMDLD/vector space with a finite generating system.MDLD/generating system (vs) Then has a finite

basis.MDLD/basis (vs)

Let , , be a finite generating system of with a finiteMDLD/finite (set) index set . We argue with the characterization from Theorem 23.12   (2). If the family is minimal, then we have a basis. If not, then there exists some such that the remaining family, where is removed, that is, , , is also a generating system. In this case, we can go on with this smaller index set. With this method, we arrive at a subset such that , , is a minimal generating set, hence a basis.



Dimension theory

A finitely generated vector space has many quite different bases. However, the number of elements in a basis is constant and depends only on the vector space. We will formulate this important property now and take it as the departure for the definition of dimension of a vector space.


TheoremTheorem 23.15 change

Let be a field,MDLD/field and let be a -vector spaceMDLD/vector space with a finite generating system.MDLD/generating system (vs) Then any two basesMDLD/bases (vs)

of have the same number of vectors.

Proof

This proof was not presented in the lecture.


This theorem enables the following definition.


Let be a field,MDLD/field and let be a -vector spaceMDLD/vector space with a finite generating system.MDLD/generating system (vs) Then the number of vectors in any basisMDLD/basis (vs) of is called the dimension of , written

Due to the preceding theorem, the dimension is well-defined. If a vector space is not finitely generated, then one puts . The null space has dimension . A one-dimensional vector space is called a line, a two-dimensional vector space a plane, a three-dimensional vector space a space (in the strict sense) but every vector space is called a space.


Let be a field,MDLD/field and . Then the standard spaceMDLD/standard space has the

dimensionMDLD/dimension (fgvs) .

The standard basisMDLD/standard basis (vs) , , consists of vectors; hence, the dimension is .



The complex numbersMDLD/complex numbers form a two-dimensional real vector space;MDLD/vector space a basisMDLD/basis (vs) is and .


The polynomial ringMDLD/polynomial ring (K1) over a fieldMDLD/field is not a finite-dimensionalMDLD/finite-dimensional (vs) vector space.MDLD/vector space To see this, we have to show that there is no finite generating systemMDLD/generating system (vs) for the polynomial ring. Consider polynomials . Let be the maximum of the degreesMDLD/degrees (polynomial) of these polynomials. Then every -linear combinationMDLD/linear combination has at most degree . In particular, polynomials of larger degree can not be presented by , so these do not form a generating system for all polynomials.


CorollaryCorollary 23.20 change

Let denote a finite-dimensional vector space over a field . Let denote a linear subspace.MDLD/linear subspace Then is also finite-dimensional, and the estimate

holds.

Proof

This proof was not presented in the lecture.



CorollaryCorollary 23.21 change

Let be a field,MDLD/field and let be a -vector spaceMDLD/vector space with finite dimensionMDLD/dimension (fgvs) . Let vectors in be given. Then the following properties are equivalent.

  1. form a basisMDLD/basis (vs) of .
  2. form a generating systemMDLD/generating system (vs) of .
  3. are linearly independent.MDLD/linearly independent

Proof



Let be a field.MDLD/field It is easy to get an overview over the linear subspacesMDLD/linear subspaces of , as the dimensionMDLD/dimension (fgvs) of a linear subspace equals  with , due to Corollary 23.20 . For , there is only the null space itself; for , there is the null space and itself. For , there is the null space, the whole plane , and the one-dimensional lines through the origin. Every line has the form

with a vector . Two vectors different from define the same line if and only if they are linearly dependent.MDLD/linearly dependent For , there is the null space, the whole space , the one-dimensional lines through the origin, and the two-dimensional planes through the origin.


TheoremTheorem 23.23 change

Let denote a finite-dimensional vector space over a field . Let

denote linearly independentMDLD/linearly independent vectors in . Then there exist vectors

such that

form a basisMDLD/basis (vs)

of .

Proof

This proof was not presented in the lecture.




Footnotes
  1. This follows from the definition, if we use the convention that the empty sum equals .
  2. Linear coordinates give a bijective relation between points and number tuples. Due to linearity, such a bijection respects addition and scalar multiplication. In many different contexts, also nonlinear (curvilinear) coordinates are important. These put points of a space and number tuples into a bijective relation. Examples are polar coordinates, cylindrical coordinates, and spherical coordinates. By choosing suitable coordinates, mathematical problems, like the computation of volumes, can be simplified.


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