IIT JAM Exam  >  IIT JAM Notes  >  Document for eigen values and eigen vector matrix

Document for eigen values and eigen vector matrix - IIT JAM PDF Download

Needed a Document for eigen values and eigen vector matrix?

Ref: https://edurev.in/question/858227/Needed-a-Document-for-eigen-values-and-eigen-vector-matrix-Related-2-Eigenvalues-and-Eigenvectors-

Eigen vector of a matrix A is a vector represented by a matrix X such that when X is multiplied with matrix A, then the direction of the resultant matrix remains same as vector X.

Mathematically, above statement can be represented as:

AX = λX

where A is any arbitrary matrix, λ are eigen values and X is an eigen vector corresponding to each eigen value.

Here, we can see that AX is parallel to X. So, X is an eigen vector.

Method to find eigen vectors and eigen values of any square matrix A
We know that,

AX = λX

=> AX – λX = 0

             => (A – λI) X = 0 …..(1)

Above condition will be true only if (A – λI) is singular. That means,

|A – λI| = 0 …..(2)

(2) is known as characteristic equation of the matrix.

The roots of the characteristic equation are the eigen values of the matrix A.

Now, to find the eigen vectors, we simply put each eigen value into (1) and solve it by Gaussian elimination, that is, convert the augmented matrix (A – λI) = 0 to row echelon form and solve the linear system of equations thus obtained.

 Some important properties of eigen values

  • Eigen values of real symmetric and hermitian matrices are real

  • Eigen values of real skew symmetric and skew hermitian matrices are either pure imaginary or zero

  • Eigen values of unitary and orthogonal matrices are of unit modulus |λ| = 1

  • If λ1, λ2…….λn are the eigen values of A, then kλ1, kλ2…….kλn are eigen values of kA

  • If λ1, λ2…….λn are the eigen values of A, then 1/λ1, 1/λ2…….1/λn are eigen values of A-1

  • If λ1, λ2…….λn are the eigen values of A, then λ1k, λ2k…….λnk are eigen values of Ak

    Eigen values of A = Eigen Values of A(Transpose)
  • Sum of Eigen Values = Trace of A (Sum of diagonal elements of A)

  • Product of Eigen Values = |A|

  • Maximum number of distinct eigen values of A = Size of A

  • If A and B are two matrices of same order then, Eigen values of AB = Eigen values of BA

The document Document for eigen values and eigen vector matrix - IIT JAM is a part of IIT JAM category.
All you need of IIT JAM at this link: IIT JAM

FAQs on Document for eigen values and eigen vector matrix - IIT JAM

1. What are eigenvalues and eigenvectors in matrix algebra?
Ans. Eigenvalues and eigenvectors are important concepts in matrix algebra. Eigenvalues are scalar values that represent the scaling factor of the eigenvectors when a linear transformation is applied to them. Eigenvectors are non-zero vectors that remain in the same direction after the transformation. In other words, eigenvalues and eigenvectors provide information about the behavior of a matrix under linear transformations.
2. How can we find eigenvalues of a matrix?
Ans. To find the eigenvalues of a matrix, we need to solve the characteristic equation, which is obtained by subtracting the identity matrix multiplied by a scalar λ from the given matrix and taking its determinant. The resulting equation is then solved to find the values of λ, which are the eigenvalues of the matrix.
3. What is the significance of eigenvalues and eigenvectors in real-world applications?
Ans. Eigenvalues and eigenvectors have various applications in fields such as physics, engineering, computer science, and data analysis. They are used to analyze and understand the behavior of dynamic systems, such as vibrations in mechanical structures, electrical circuits, quantum mechanics, and image processing. Eigenvalues and eigenvectors also play a crucial role in solving linear systems of differential equations.
4. Can a matrix have more eigenvalues than its dimensions?
Ans. No, a matrix cannot have more eigenvalues than its dimensions. The number of eigenvalues of a matrix is equal to its dimensions. For example, a 2x2 matrix will have two eigenvalues, a 3x3 matrix will have three eigenvalues, and so on. However, it is possible for a matrix to have repeated eigenvalues, which means some eigenvalues may have multiplicity greater than one.
5. How are eigenvalues and eigenvectors used in principal component analysis (PCA)?
Ans. Principal Component Analysis (PCA) is a statistical technique that uses eigenvalues and eigenvectors to reduce the dimensionality of a dataset. The eigenvectors of the covariance matrix of the dataset represent the principal components, while the corresponding eigenvalues determine the amount of variance explained by each principal component. By selecting a subset of the eigenvectors with the highest eigenvalues, PCA can be used to transform the dataset into a lower-dimensional space while preserving most of the variation in the data.
Download as PDF
Explore Courses for IIT JAM exam
Signup for Free!
Signup to see your scores go up within 7 days! Learn & Practice with 1000+ FREE Notes, Videos & Tests.
10M+ students study on EduRev
Related Searches

video lectures

,

Semester Notes

,

Free

,

past year papers

,

Viva Questions

,

Document for eigen values and eigen vector matrix - IIT JAM

,

Objective type Questions

,

Document for eigen values and eigen vector matrix - IIT JAM

,

mock tests for examination

,

study material

,

Sample Paper

,

ppt

,

Exam

,

practice quizzes

,

MCQs

,

shortcuts and tricks

,

Previous Year Questions with Solutions

,

pdf

,

Extra Questions

,

Document for eigen values and eigen vector matrix - IIT JAM

,

Important questions

,

Summary

;