Information theoretic description of networks

被引:37
|
作者
Wilhelm, Thomas [1 ]
Hollunder, Jens [1 ]
机构
[1] FLI Jena, Theoret Syst Biol, D-07745 Jena, Germany
关键词
information theory; complexity; graph; network; network characterization;
D O I
10.1016/j.physa.2007.06.029
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
We present a new information theoretic approach for network characterizations. It is developed to describe the general type of networks with n nodes and L directed and weighted links, i.e., it also works for the simpler undirected and unweighted networks. The new information theoretic measures for network characterizations are based on a transmitter-receiver analogy of effluxes and influxes. Based on these measures, we classify networks as either complex or non-complex and as either democracy or dictatorship networks. Directed networks, in particular, are furthermore classified as either information spreading and information collecting networks. The complexity classification is based on the information theoretic network complexity measure medium articulation (MA). It is proven that special networks with a medium number of links (L similar to n(1.5)) show the theoretical maximum complexity MA = (log n)(2)/2. A network is complex if its MA is larger than the average MA of appropriately randomized networks: MA > MA(r). A network is of the democracy type if its redundancy R < R-r, otherwise it is a dictatorship network. In democracy networks all nodes are, on average, of similar importance, whereas in dictatorship networks some nodes play distinguished roles in network functioning. In other words, democracy networks are characterized by cycling of information (or mass, or energy), while in dictatorship networks there is a straight through-flow from sources to sinks. The classification of directed networks into information spreading and information collecting networks is based on the conditional entropies of the considered networks (H(A/B) = uncertainty of sender node if receiver node is known, H(B/A) = uncertainty of receiver node if sender node is known): if H(A/B) > H(B/A), it is an information collecting network, otherwise an information spreading network. Finally, different real networks (directed and undirected, weighted and unweighted) are classified according to our general scheme. (C) 2007 Elsevier B.V. All rights reserved.
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页码:385 / 396
页数:12
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