Serlo: EN: Quotient space
{{#invoke:Mathe für Nicht-Freaks/Seite|oben}} In this article we consider the quotient space of a -vector space with respect to a subspace . The quotient space is a vector space in which we can do computations as in , up to an addition of arbitrary terms from .
Introduction
Computations with solutions of a linear system
We consider the matrix Vorlage:Einrücken We now want to solve the linear system of equations for different vectors . For example, taking , we get a solution and for , we get a solution . That is, and hold. What is then the solution for ? To find this out, we can use linearity of : We just have to add our previous solutions together, since . Thus, a solution to is given by .
The solution to the above system of equations is not unique. For instance, the system is also solved by and the system is also solved by . The solutions and , as well as and differ from each other. Their differences are and . Both and are solutions to the (homogeneous) linear system . That is, they lie in the kernel of .Vorlage:Todo This "kernel property" is true in general: if and are two different solutions of , they differ exactly by an element in the kernel of , because . Since the kernel of is important, we give it the separate name in the following. Conversely, whenever we have two solutions and of , then their difference is in the kernel . So once a single solution is found, then the kernel can be used to find all solutions to the system. Put differently, we can consider two vectors whose difference is in as equivalent, since if one vector solves , then the other also does.
For scalar multiplication by , we can use linearity of again: We have a solution of and we want to solve without recalculating. Again, we can obtain a solution by using our already determined solution : We have , so is a solution to . For the second solution this also works: is a solution of . Again, the difference of both (equivalent) solutions and is in . So we can scale solutions of linear systems to find solutions to scaled systems. While scaling, the differences stay in , so both solutions stay equivalent. A different way to say that two vectors are equivalent is to say that they are the same modulo whenever they differ only by some vector in . For example, the solutions and of the system of equations are equal modulo , since . When calculating with solutions of systems of linear equations, we therefore calculate modulo .
Construction of the quotient space
In the example, we made calculations in a vector space , but only looked at the results up to differences in a subspace . That is, we considered two vectors and in as equivalent, whenever . To formalise these "calculations up to some element in ", we identify vectors which using an equivalence relation that is defined by Vorlage:Einrücken This is exactly the relation we used to define cosets of a subspace. In this article, we have also checked that is an equivalence relation. Mathematically, the set of all equivalence classes is denoted by .
We will now show that on , we can define a natural vector space structure. To do so, we introduce an addition and a scalar multiplication on : For and we define Vorlage:Einrücken These definitions make use of representatives. That is, we took one element from each involved coset to define and . However, we still have to show that the definitions are independent of the chosen representative.
That is, we must show that this definition is independent of the choice of representative and thus makes sense. We give this proof further below. The property that a mathematical definition makes sense is also called well-definedness.
We also need to show that is a vector space with this addition and scalar multiplication, which we will do below.
Definition
In the previous section, we considered what a vector space might look like, in which we can calculate modulo . The elements of are the cosets . We want to define the vector space structure using the representatives. Further below , we then show that the definition makes mathematical sense, that is, the vector space structure is proven to be well--defined.
To distinguish addition and scalar multiplication on from that on , we refer to the operations on as "" and "" in this article. Other articles and sources mostly use "" and "" for the vector space operations.
Mathe für Nicht-Freaks: Vorlage:Definition
Explanation of the definition
A short explanation concerning the brackets appearing in and : To define the addition in , we need two vectors from . Vectors in are cosets, so and denote cosets given by . The expression is also a coset, namely the one associated with : Vorlage:Einrücken The scalar multiplication works similarly: For a scalar and a coset with we want to define . For this we first calculate the scalar product in and then turn to the associated coset : Vorlage:Einrücken So we first execute the addition or scalar multiplication of the representatives in and then turn to the coset to get the addition or scalar multiplication on . Mathematically, we also say that the vector space structure on "induces" the structure on .
Well-defined operations in the quotient space Vorlage:Anker
We want to check whether the operations of and are independent of the choice of representatives - that is, they are well-defined. Mathe für Nicht-Freaks: Vorlage:Satz
Establishing the vector space axioms
We show that the quotient space is again a -vector space by taking the axioms valid for and inferring those axioms of . Hence, taking quotient spaces is a way to generate new vector spaces from an existing -vector space, just like taking subspaces.
Mathe für Nicht-Freaks: Vorlage:Aufgabe
Examples
Satellite images
Mathe für Nicht-Freaks: Vorlage:Beispiel
Example in finite vector space
Now, we turn to a more abstract mathematical example, that will involve some donuts.
Mathe für Nicht-Freaks: Vorlage:Beispiel
Relationship between quotient space and complement
In the quotient space we calculate with vectors in up to arbitrary modifications from . We know another construction that can be interpreted similarly: The complement. A complement of a subspace is a subspace such that . Here denotes the inner direct sum of and in , that is, and . A vector can then be decomposed uniquely as , where and . But the complement itself is then not unique! There can be different subspaces , with .
For the quotient space, we "forget" the part of that is in by identifying with the coset : Vorlage:Einrücken If is a complement of and for distinct and , then we can analogously forget the -part by mapping to the -part, called : Vorlage:Einrücken Apparently and the complement are similar. Can we identify the two vector spaces and , i.e., are they isomorphic? Yes, they are, as we prove in the following theorem.
Mathe für Nicht-Freaks: Vorlage:Satz We have seen that is isomorphic to any complement of . So it should also behave like a complement, i.e. should hold. But be careful: Because is not a subspace of , we cannot form the inner direct sum with . However, we can still consider the outer direct sum of and : Vorlage:Einrücken This may not be equal to , but it may be isomorphic to . And we will show that it indeed is isomorphic. Mathe für Nicht-Freaks: Vorlage:Satz
Exercises
Mathe für Nicht-Freaks: Vorlage:Aufgabe
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