The availability of large scale streaming network data has reinforced the ubiquity of power-law distributions in observations and enabled precision measurements of the distribution parameters. The increased accuracy of these measurements allows new underlying generative network models to be explored. The preferential attachment model is a natural starting point for these models. This work adds additional model components to account for observed phenomena in the distributions. In this model, preferential attachment is supplemented to provide a more accurate theoretical model of network traffic. Specifically, a probabilistic complex network model is proposed using preferential attachment as well as additional parameters to describe the newly observed prevalence of leaves and unattached nodes. Example distributions from this model are generated by considering random sampling of the networks created by the model in such a way that replicates the current data collection methods.
翻译:大规模流成网络数据的可用性加强了观测中电源法分布的普及性,并使得能够精确测量分布参数。这些测量的准确性提高使得可以探索新的原始基因网络模型。优惠附加模型是这些模型的自然起点。这项工作增加了额外的模型组成部分,以说明分布中观察到的现象。在这个模型中,优惠附加模型得到补充,以提供一个更准确的网络交通理论模型。具体地说,提议了一种概率复杂的网络模型,使用优惠附件和额外的参数来描述新观察到的叶和未连接节点的流行情况。通过考虑随机取样模型所创建的网络,从而复制目前的数据收集方法,产生了这一模型的示例分布。