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Eigen Values and Eigen Vectors

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

Example: Solve for λ:

Eigenvalues & Eigenvectors | Engineering Mathematics - Civil Engineering (CE)

The document Eigenvalues & Eigenvectors | Engineering Mathematics - Civil Engineering (CE) is a part of the Civil Engineering (CE) Course Engineering Mathematics.
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FAQs on Eigenvalues & Eigenvectors - Engineering Mathematics - Civil Engineering (CE)

1. What are eigenvalues and eigenvectors?
Ans. Eigenvalues and eigenvectors are concepts in linear algebra that are used to analyze certain properties of a linear transformation or a matrix. An eigenvector is a non-zero vector that remains in the same direction after the transformation, except that it may be scaled by a scalar factor known as the eigenvalue. Eigenvalues and eigenvectors are often used in various fields, including computer science engineering, to solve problems related to matrix operations and systems of linear equations.
2. How do eigenvalues and eigenvectors relate to computer science engineering?
Ans. Eigenvalues and eigenvectors have several applications in computer science engineering. They are used in various algorithms and techniques for data analysis, machine learning, computer graphics, image processing, network analysis, and many other areas. For example, in machine learning, eigenvalues and eigenvectors are used in principal component analysis (PCA) to reduce the dimensionality of data and extract important features. In computer graphics, they are used for tasks like image compression and morphing.
3. What are some important properties of eigenvalues and eigenvectors?
Ans. There are several important properties of eigenvalues and eigenvectors: - The sum of the eigenvalues of a square matrix is equal to the sum of its diagonal elements (also known as the trace of the matrix). - The product of the eigenvalues of a square matrix is equal to its determinant. - The eigenvectors corresponding to distinct eigenvalues of a matrix are linearly independent. - The eigenvectors corresponding to different eigenvalues of a matrix are orthogonal. - The eigenvalues of a symmetric matrix are always real.
4. How can eigenvalues and eigenvectors be computed?
Ans. To compute the eigenvalues and eigenvectors of a matrix, one can use various numerical methods and algorithms. One common approach is to solve the characteristic equation of the matrix, which involves finding the roots of a polynomial equation. For small matrices, the eigenvalues and eigenvectors can be computed analytically. However, for larger matrices, numerical methods like the power iteration method, QR algorithm, or Jacobi method are often used.
5. Can eigenvalues and eigenvectors be used to diagonalize a matrix?
Ans. Yes, eigenvalues and eigenvectors can be used to diagonalize a matrix. If a square matrix has n linearly independent eigenvectors, then it can be diagonalized by forming a matrix with the eigenvectors as its columns and a diagonal matrix with the corresponding eigenvalues on the diagonal. This diagonalization process can simplify certain matrix operations and make it easier to analyze the properties of the matrix. However, not all matrices are diagonalizable, and some may require more advanced techniques like Jordan decomposition.
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