A matrix is diagonalizable when algebraic and geometric multiplicities are equal

In summary, a matrix is diagonalizable if and only if there exists a complete set of eigenvectors for the linear transformation it represents. This means that the algebraic and geometric multiplicities of the eigenvalues must be equal. This can be represented by a matrix with the eigenvalues in the diagonal entries and zeros everywhere else.
  • #1
jack_bauer
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A matrix is diagonalizable when algebraic and geometric multiplicities are equal.
I know this is true, and my professor proved it, but I did not understand him fully. Can someone please explain?
 
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  • #2
This area is for "Learning Materials", not questions. I am moving this thread to "Linear and Abstract Algebra".
 
  • #3
A matrix is diagonalizable if and only if there exist a "complete set" of eigenvectors. (Your "algebraic and geometric multiplicities are equal". The algebraic multiplicity is the size of the matrix, the geometric multiplicity is the number of independent eigenvectors.) Specifically, if the matrix represents a linear transformation on vector space U, then, in order to be "diagonalizable", there must exist a basis for U consisting of eigenvectors of the linear transformation. You construct the matrix representing a linear transformation, in a given basis, by applying the transformation to each basis vector in turn, writing the result as a linear combination of basis vectors. The coefficients give each column of the matrix.

If all the basis vectors [itex]\{v_1, v_2, \cdot\cdot\cdot\, v_n\}[/itex] are eigenvectors, that is, if [itex]Lv_1= \lambda_1v_1[/itex], [itex]Lv_2= \lamba_2v_2[/itex], [itex]\cdot\cdot\cdot[/itex], [itex]Lv_n= \lambda_nv_n[/itex], then each column consists of the eigenvalue, in the appropriate position, and "0"s:
[tex]\begin{bmatrix}\lambda_1 & 0 & \cdot & \cdot & \cdot & 0 \\ 0 & \lambda_2 & \cdot & \cdot\ & \cdot & 0 \\ \cdot & \cdot\ & \cdot\ & \cdot & \cdot & \cdot \\ 0 & 0 & \cdot & \cdot & \cdot & \lambda_n\end{bmatrix}[/tex]
 

What does it mean for a matrix to be diagonalizable?

A matrix is diagonalizable when it can be transformed into a diagonal matrix through a similarity transformation. This means that the matrix can be written as a product of three matrices: A = PDP^-1, where P is an invertible matrix and D is a diagonal matrix.

What are the algebraic and geometric multiplicities of a matrix?

The algebraic multiplicity of an eigenvalue of a matrix is the number of times the eigenvalue appears as a root of the characteristic polynomial of the matrix. The geometric multiplicity, on the other hand, is the dimension of the eigenspace corresponding to that eigenvalue.

How do I determine if the algebraic and geometric multiplicities are equal?

To determine if the algebraic and geometric multiplicities are equal, you can calculate the dimension of the eigenspace for each eigenvalue and compare it to the algebraic multiplicity. If they are equal for all eigenvalues, then the matrix is diagonalizable.

Why is it important for the algebraic and geometric multiplicities to be equal for a matrix to be diagonalizable?

If the algebraic and geometric multiplicities are not equal, it means that there are not enough linearly independent eigenvectors to form the diagonalizing matrix. This results in the matrix being not diagonalizable and can cause complications in calculations involving the matrix.

What are some applications of diagonalizable matrices in science?

Diagonalizable matrices are used in various fields of science, such as physics, engineering, and computer science. They are particularly useful in solving systems of differential equations, finding stable and unstable equilibrium points, and performing transformations in computer graphics and image processing.

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