© 2014 Society for Industrial and Applied Mathematics. Consider a symmetric matrix A(v) ∈ ℝnxn depending on a vector v ∈ ℝn and satisfying the property A(αv) = A(v) for any α ∈ ℝ\{0}. We will here study the problem of finding (λ, v) ∈ ℝ x ℝn\{0} such that (ℝ, v) is an eigenpair of the matrix A(v) and we propose a generalization of inverse iteration for eigenvalue problems with this type of eigenvector nonlinearity. The convergence of the proposed method is studied and several convergence properties are shown to be analogous to inverse iteration for standard eigenvalue problems, including local convergence properties. The algorithm is also shown to be equivalent to a particular discretization of an associated ordinary differential equation, ...