Given a linear map L:V-->V ; V,W vector spaces, the eigenspace E associated with an eigenvalue $\lambda$ is that subspace of V where L acts as a scalar , i.e., L acts by stretching vectors.
The geometric multiplicity of $\lambda$ is the dimension of the subspace of V (in
the domain ) where T acts as a scalar, with scaling coefficient $\lambda$ , i.e., T
when restricted to the eigenspace is a map given by T(v)=$\lambda v$.
Maybe the clearest example is that given by the identity map I:V-->V :i(v)=v, where
V is n-dimensional ( $n< \infty$), with associated matrix the identity matrix. Here,
the only eiegenvalue is 1, and you can easily see, e.g, by looking at the associated
matrix (M-$\lambda I:=(I-1I)=0$ that the geometric multiplicity is n ; this means
that the identity acts on the whole of V by scaling by 1. Substituting the identity
matrix for a scalar matrix (i.e. $a_{ii}=c; a_{ij}=0 ; i\neq j$ ) illustrates the same
point, e.g., if our matrix is the matrix ($a_{ij}:a_{ii}=2; a_{ij}=0$ if $i \neq j$ )
then M acts like a scalar for every vector. On the other extreme, if our matrix represents a linear transformation of a rotation by an angle $\theta \neq 0, \neq 2n\pi$ , then the eigenspace is 0-dimensional, since each point will be sent to another
point with the same radius (because it will send a point p in a circle C to another point p' in the same circle ), and no point will be rotated into itself.
the eigenspace would then be zero-dimensional, since only the dimension-zero subspace will be sent to itself .