Eigenvalue Guide, Meaning , Facts, Information and Description
In linear algebra, a scalar λ is called an eigenvalue (in some older texts, a characteristic value) of a linear mapping A if there exists a nonzero vector x such that Ax=λx. The vector x is called an eigenvector.
In matrix theory, an element in the underlying ring R of a square matrix A is called a right eigenvalue if there exists a nonzero column vector x such that Ax=λx, or a left eigenvalue if there exists a nonzero row vector y such that yA=yλ. If R is commutative, the left eigenvalues of A are exactly the right eigenvalues of A and are just called eigenvalues. If R is not commutative, e.g. quaternions, they may be different.
In graph theory, an eigenvalue of a graph is simply an eigenvalue of the graph's adjacency matrix.
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2 Spectrum 3 Multiset of eigenvalues 4 Trace and determinant 5 See also |
Multiplicity
Suppose A is a square matrix over a commutative ring. The algebraic multiplicity (or simply multiplicity) of an eigenvalue λ of A is the number of factors t-λ of the characteristic polynomial of A. The geometric multiplicity of λ is the number of factors t-λ of the minimal polynomial of A or equivalently the nullity of (λI-A).
An eigenvalue of algebraic multiplicity 1 is called a simple eigenvalue.
Spectrum
In functional analysis, the spectrum of a bounded linear operator A on a Banach space is the set of scalars ν such that νI-A does not have a bounded two-sided inverse. Note that by the closed graph theorem, if a bounded operator has an inverse, the inverse is necessarily bounded.
If the underlying Banach space is finite dimensional, then the spectrum of A is the same of the set of eigenvalues of A. This follows from the fact that on finite dimensional spaces injectivity of a linear operator A is equivalent to surjectivity of A.
This style is used because algebraic multiplicity is the key to many mathematical proofs in matrix theory.
This is an Article on Eigenvalue. Page Contains Information, Facts Details or Explanation Guide About Eigenvalue Multiset of eigenvalues
Occasionally, in an article on matrix theory, one may read a statement like:
It means the algebraic multiplicity of 4 is two, of 3 is three, of 2 is two and of 1 is one.Trace and determinant
Suppose the eigenvalues of a matrix A are λ1,λ2,...,λn. Then the trace of A is λ1+λ2+...+λn and the determinant of A is λ1λ2...λn. These two are very important concepts in matrix theory.See also
Please refer to eigenvector for some other properties of eigenvalues.
