“…After determining the eigenvectors of L one performs the actual clustering, e.g., via a standard k-means algorithm or simple thresholding. Note that in various applications a spectral clustering based on solely one eigenvector, i.e., the corresponding eigenvector of the second-smallest eigenvalue, already yields interesting results, e.g., for image segmentation [12]. On the other hand, due to the linear nature of the graph Laplacian this approach is rather restricted in many real world applications.…”