Unravelling small world networks
作者:
Highlights:
•
摘要
New classes of random graphs have recently been shown to exhibit the small world phenomenon—they are clustered like regular lattices and yet have small average pathlengths like traditional random graphs. Small world behaviour has been observed in a number of real life networks, and hence these random graphs represent a useful modelling tool. In particular, Grindrod [Phys. Rev. E 66 (2002) 066702-1] has proposed a class of range dependent random graphs for modelling proteome networks in bioinformatics. A property of these graphs is that, when suitably ordered, most edges in the graph are short-range, in the sense that they connect near-neighbours, and relatively few are long-range. Grindrod also looked at an inverse problem—given a graph that is known to be an instance of a range dependent random graph, but with vertices in arbitrary order, can we reorder the vertices so that the short-range/long-range connectivity structure is apparent? When the graph is viewed in terms of its adjacency matrix, this becomes a problem in sparse matrix theory: find a symmetric row/column reordering that places most nonzeros close to the diagonal. Algorithms of this general nature have been proposed for other purposes, most notably for reordering to reduce fill-in and for clustering large data sets. Here, we investigate their use in the small world reordering problem. Our numerical results suggest that a spectral reordering algorithm is extremely promising, and we give some theoretical justification for this observation via the maximum likelihood principle.
论文关键词:Adjacency matrix,Bandwidth,Bioinformatics,Cuthill–McKee,Envelope,Genome datasets,Laplacian,Maximum likelihood,Minimum degree,Proteome networks,Random graph,Reordering,Small world phenomenon,Sparse matrix,Two-sum
论文评审过程:Received 15 October 2002, Revised 10 January 2003, Available online 12 July 2003.
论文官网地址:https://doi.org/10.1016/S0377-0427(03)00471-0