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Rank-Nullity Theorem

Let f:EFf:E\to F be a linear mapping. The rank of ff is the dimension of the image, rk(f):=dim(Im(f))rk(f) := dim(Im(f)) The rank is an invariant of the map.

The dimension of the kernel, dim(ker(f))dim(ker(f)) is said nullity of a mapping.

Theorem

Under the hypothese: the sum of rank and nullity of a mapping is equal to the dimension of the vector space (E,+,.)(E,+,.): dim(ker(f))+dim(Im(f))=dim(E)dim(ker(f)) + dim(Im(f)) = dim(E) Usually dim(Im(f))dim(Im(f)) is the hardest to calculate and this theorem allows an easy way to compute it as dim(E)dim(ker(f))dim(E)-dim(ker(f))

Proof

If dim(ker(f))=0dim(ker(f))=0 then ff is injective. If the basis spans the image, the vectors are linearly independent.

Corollaries of Rank-Nullity Theorem

Let f:EEf:E\to E be an endomorphism where (E,+,.)(E,+,.) is a finite-dimensional vector space.

  • If ff is injective then it is also surjective
  • if ff is surjective then it is also injective

Corollary

Let f:EFf:E\to F be a linear mapping with (E,+,.)(E,+,.) and (F,+,.)(F,+,.).

  • Consider dim(E)>dim(F)dim(E)>dim(F). Follows that the mapping is not injective.
  • Consider dim(E)<dim(F)dim(E)<dim(F). Follows that the mapping is not surjective

Eigenvalues and Eigenvectors

Let f:EEf:E\to E be an endomorphism where (E,+,.)(E,+,.) is a vectors space with dimension KK. Every vector xx such that f(x)=λxf(x)=\lambda x with a λ\lambda scalar and xE÷{oE}x\in E\div \{o_E\} is said eigenvector of the endomorphism ff related to the eigenvalue λ\lambda Eigenvalue and eigenvector are building blocks of reality

Dan terms: λ\lambda = eigenvalue (num of x) xx = eigenvector (any number) homogeneous = (0,0)

Eigenspace

Let f:EEf:E\to E be an endomorphism The set V(λ)EV(\lambda)\subset E with λK\lambda\in K defined as V(λ)=e{oE}{xEf(x)=λx}V(\lambda)=e\{o_E\}\cup\{x\in E|f(x)=\lambda x\} This is said eigenspace of the endomorphism ff related to the eigenvalue λ\lambda. The dimension of the eigenspace is said geometric multiplicity of the eigne value λ\lambda and is indicated with γm\gamma_m

Determining Eigenvalues and Eigenvectors

Let f:EEf:E\to E be an endomorphism. Let p(λ)p(\lambda) be the order nn characteristic polynomial related to the endomorphism. The number of roots of ρ(λ)\rho(\lambda) is called algebraic multiplicity.

Introduction to Diagonalization

One variable for each line in a diagonal manner. Not all the mappings/matrices can be diagonalized, Need to have enough linearly independent columns of PP.

Let f:EEf:E\to E be an endomorphism. The matrix is diagonalizable if and only if it has n linearly independent eigenvectors:

  • All the eigenvalues are distinct
  • The algebraic multiplicity of each eigenvalue coincides with its geometric multiplicity

Symmetric Mappings

If the mapping is characterised by a symmetric matrix, then can prove that;

  • The mapping is always diagonalisable
  • The transformation matrix PP can be built to be orthogonal (P1=PT)P^{-1}=P^{T}). Also means the new reference system given by the eigenvectors is also a convenient orthogonal system