What are Eigenvectors and Eigenvalues in Relation to Matrices?

In summary: This is called the diagonalization of the matrix.In summary, matrices can be represented in terms of eigenvectors and eigenvalues, which are analogous to a vector's modulus and unit vectors. Diagonalization is a method of representing a matrix in terms of its eigenvectors and eigenvalues.
  • #1
Jhenrique
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Given a vector ##\vec{r} = x \hat{x} + y \hat{y}## is possbile to write it as ##\vec{r} = r \hat{r}## being ##r = \sqrt{x^2+y^2}## and ##\hat{r} = \cos(\theta) \hat{x} + \sin(\theta) \hat{y}##. Speaking about matrices now, the the eigenvalues are like the modulus of a vector and the eigenvectors are like the unit vectors associated to modulus of a vector?
 
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  • #2
Jhenrique said:
Given a vector ##\vec{r} = x \hat{x} + y \hat{y}## is possbile to write it as ##\vec{r} = r \hat{r}## being ##r = \sqrt{x^2+y^2}## and ##\hat{r} = \cos(\theta) \hat{x} + \sin(\theta) \hat{y}##. Speaking about matrices now, the the eigenvalues are like the modulus of a vector and the eigenvectors are like the unit vectors associated to modulus of a vector?
I don't think these analogies are useful or even correct. The matrices that we're talking about here are square, meaning that they are transformations of some vector space to itself.

The defining relationship between a matrix and its eigenvectors and eigenvalues is this:
Ax = λx, where x is a nonzero vector, and λ is a scalar.

In a sense, the eigenvectors are preferred directions. Any vector with this same direction gets mapped by the transformation to a multiple of itself.

A given transformation from a vector space to itself can have many matrices that represent it, depending on that basis that is used for that space. If an n x n matrix has n distinct eigenvectors, it's possible to write the matrix in terms of this basis of eigenvectors, which results in a diagonal matrix, with the eigenvalues on the main diagonal.
 
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1. What are eigenvectors and eigenvalues?

Eigenvectors and eigenvalues are mathematical concepts used in linear algebra to describe the behavior of a linear transformation. An eigenvector is a vector that, when multiplied by a square matrix, results in a scalar multiple of itself. The corresponding scalar multiple is called the eigenvalue. In other words, eigenvectors are special vectors that do not change direction when a transformation is applied, and eigenvalues represent the scaling factor of the transformation.

2. What is the significance of eigenvectors and eigenvalues?

Eigenvectors and eigenvalues are important because they allow us to understand the behavior of a linear transformation, such as a rotation, scaling, or shearing, in a simpler way. They also have applications in various fields, including physics, engineering, and data analysis.

3. How do you find eigenvectors and eigenvalues?

To find eigenvectors and eigenvalues, we first need to represent the linear transformation as a square matrix. Then, we need to solve the characteristic equation of the matrix, which is a polynomial equation that involves the eigenvalue. The solutions to this equation are the eigenvalues. Once we have the eigenvalues, we can find the corresponding eigenvectors by solving a system of linear equations.

4. What does it mean for an eigenvector to have a complex eigenvalue?

An eigenvector with a complex eigenvalue still follows the same concept as a real eigenvalue; it is a vector that does not change direction when a transformation is applied. However, in this case, the transformation involves a rotation in addition to scaling. Complex eigenvalues and eigenvectors are commonly used in quantum mechanics and other areas of physics.

5. Can an eigenvector have more than one eigenvalue?

No, an eigenvector can only have one eigenvalue. However, a single matrix can have multiple eigenvectors with different eigenvalues. This is because the eigenvalue represents the scaling factor of the transformation, and two different eigenvectors can have different scaling factors for the same transformation.

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