Spread of a matrix

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In mathematics, and more specifically matrix theory, the spread of a matrix is the largest distance in the complex plane between any two eigenvalues of the matrix.

Contents

Definition

Let be a square matrix with eigenvalues . That is, these values are the complex numbers such that there exists a vector on which acts by scalar multiplication:

Then the spread of is the non-negative number

Examples

See also

Related Research Articles

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