Generalised eigenspace contains the eigenspace?

  • Thread starter Silversonic
  • Start date
In summary: Can someone help me out?In summary, the definition of a generalised eigenspace for a linear operator A of an n-dimensional vector space V over an algebraically closed field k provides a space of all generalized eigenvectors. It should be straightforward to show that any eigenvector is a generalized eigenvector and so is in the space of generalized eigenvectors.
  • #1
Silversonic
130
1
I've been introduced to the definition of a generalised eigenspace for a linear operator [itex] A [/itex] of an n-dimensional vector space [itex] V [/itex] over an algebraically closed field [itex] k [/itex]. If [itex] \lambda_1, \lambda_2,...,\lambda_k [/itex] are the eigenvalues of [itex] A [/itex] then the characteristic polynomial of [itex] A [/itex] is defined

[itex] \chi_A(t) = det(tI - A) = \prod_i (t-\lambda_i)^{m_i} [/itex]

[itex] m_i [/itex] being the multiplicity of the eigenvalue [itex] \lambda_i [/itex]. [itex] \chi_A(A) = 0 [/itex].

Define [itex] q_k(t) = \prod_{i \neq k}(t-\lambda_i)^{m_i} = \chi_A(t)/(t-\lambda_k)^{m_k}[/itex]. Then we define the generalised eigenspace [itex] V(\lambda_k) [/itex] as

[itex] V(\lambda_k) = Im(q_k(A)) = (q_k(A)(v) \mid v \in V) [/itex]

One can show that [itex] V [/itex] is the direct sum of these generalised eigenspaces. By construction [itex] V(\lambda_k) [/itex] is [itex] A [/itex] invariant and [itex] (A-\lambda_k I)^{m_k}(v) = 0 ~\forall v \in V(\lambda_k) [/itex]

I'm trying to show that the eigenspace [itex] V_{\lambda_k} [/itex] is contained in the generalised eigenspace [itex] V(\lambda_k) [/itex]. The worst bit is my text says its straightforward, and to top it off I've actually done this before but forgotten how.

I'm honestly a bit lost as to how to do this. Take [itex] v \in V_{\lambda_j} [/itex], then [itex] v = v_1 + ... v_k [/itex] where [itex] v_i \in V(\lambda_i) [/itex].

[itex] Av = \lambda_j v [/itex]

i.e.

[itex] Av_1 + Av_2 + ... + Av_k = \lambda_j v_1 + \lambda_j v_2 + ... + \lambda_j v_k [/itex]

So one has [itex] (A-\lambda_jI)v_i = 0 ~\forall i \leq k [/itex]

But can anyone help point me in the right direction as to how I would go about proving this inclusion, using this definition of generalised eigenspace?
 
Physics news on Phys.org
  • #2
The "generalized eigenspace" is the space of all generalized eigenvectors. It should be simple to show, from the definitions of "generalized eigenvector" and "eigenvector" that any eigenvector is a "generalized" eigenvector and so is in the space of generalized eigenvectors. What are those definitions?
 
  • #3
HallsofIvy said:
The "generalized eigenspace" is the space of all generalized eigenvectors. It should be simple to show, from the definitions of "generalized eigenvector" and "eigenvector" that any eigenvector is a "generalized" eigenvector and so is in the space of generalized eigenvectors. What are those definitions?


Currently on mobile so I can't check this fully. If I recall a generalised eigenvector for [itex]\lambda[/itex] is a nonzero vector [itex]v[/itex] such that for some integer N

[itex](A-\lambda I)^N v = 0[/itex]

So obviously from they definition an eigenvector for lambda is inside the generalised eigenspace.

But how do I show it using the definition given in my original post? It would amount to showing the two statements of generalised eigenspace are the same. I can't seem to do that without having my original question answered. Showing that the eigenspace is inside the generalised eigenspace with my definition would mean showin either

1) An eigenvector is the image of some other vector under [itex]q_k(A)[/itex].

Or

2) It being an eigenvector automatically ensures all components of its direct sum this aren't part of the desired generalised eigenspace are zero.

I've tried and thought, I can't seem to do either.
 
Last edited:

What is a generalised eigenspace?

A generalised eigenspace is a subspace of a vector space that contains all the eigenvectors associated with a specific eigenvalue. It can also be thought of as the set of all solutions to the generalised eigenvector equation.

What is an eigenspace?

An eigenspace is a subspace of a vector space that contains all the eigenvectors associated with a specific eigenvalue. It can also be thought of as the set of all solutions to the eigenvector equation.

How is a generalised eigenspace related to an eigenspace?

A generalised eigenspace contains the eigenspace as a subset. This means that all the eigenvectors in the eigenspace are also part of the generalised eigenspace. Additionally, the generalised eigenspace may contain additional eigenvectors that are not in the eigenspace.

Why is it important to understand the relationship between a generalised eigenspace and an eigenspace?

Understanding the relationship between a generalised eigenspace and an eigenspace is important in linear algebra and differential equations. It allows us to find all the solutions to a system of equations and understand the behaviour of a system over time.

Can a generalised eigenspace and an eigenspace be the same?

In some cases, a generalised eigenspace and an eigenspace can be the same. This happens when the multiplicity of an eigenvalue is equal to its algebraic multiplicity. In this case, the generalised eigenspace contains all the eigenvectors associated with that eigenvalue, making it the same as the eigenspace.

Similar threads

  • Linear and Abstract Algebra
Replies
4
Views
922
  • Linear and Abstract Algebra
Replies
10
Views
1K
  • Linear and Abstract Algebra
Replies
8
Views
1K
  • Linear and Abstract Algebra
Replies
3
Views
1K
Replies
11
Views
3K
  • Calculus and Beyond Homework Help
Replies
1
Views
993
  • Calculus and Beyond Homework Help
Replies
3
Views
889
  • Linear and Abstract Algebra
Replies
2
Views
2K
  • Calculus and Beyond Homework Help
Replies
3
Views
1K
  • Calculus and Beyond Homework Help
Replies
1
Views
2K
Back
Top