matrix inversion Antonyms

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Meaning of matrix inversion

Wordnet

matrix inversion (n)

determination of a matrix that when multiplied by the given matrix will yield a unit matrix

matrix inversion Sentence Examples

  1. In linear algebra, matrix inversion involves finding the multiplicative inverse of a given square matrix.
  2. Matrix inversion is essential for solving systems of linear equations and other matrix-based operations.
  3. The inverse of a matrix, if it exists, can be computed using various methods, such as Gaussian elimination or cofactor expansion.
  4. The matrix inversion process can be represented as solving the equation AX = I, where A is the original matrix, X is the inverse matrix, and I is the identity matrix.
  5. Matrix inversion has applications in various fields, including computer graphics, statistics, and control theory.
  6. In computer graphics, matrix inversion is used to transform objects and perform perspective projections.
  7. In statistics, matrix inversion is employed in regression analysis and other statistical techniques.
  8. In control theory, matrix inversion is applied to design feedback systems and analyze their stability.
  9. The process of matrix inversion can be computationally intensive, especially for large matrices.
  10. Specialized algorithms and software tools have been developed to optimize the efficiency and accuracy of matrix inversion.

FAQs About the word matrix inversion

determination of a matrix that when multiplied by the given matrix will yield a unit matrix

No synonyms found.

No antonyms found.

In linear algebra, matrix inversion involves finding the multiplicative inverse of a given square matrix.

Matrix inversion is essential for solving systems of linear equations and other matrix-based operations.

The inverse of a matrix, if it exists, can be computed using various methods, such as Gaussian elimination or cofactor expansion.

The matrix inversion process can be represented as solving the equation AX = I, where A is the original matrix, X is the inverse matrix, and I is the identity matrix.