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Hot-Get-Richer Network Growth Model

机译:热度富裕的网络增长模型

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Under preferential attachment (PA) network growth models late arrivals are at a disadvantage with regard to their final degrees. Previous extensions of PA have addressed this deficiency by either adding the notion of node fitness to PA, usually drawn from some fitness score distributions, or by using fitness alone to control attachment. Here we introduce a new dynamical approach to address late arrivals by adding a recent-degree-change bias to PA so that nodes with higher relative degree change in temporal proximity to an arriving node get an attachment probability boost. In other words, if PA describes a rich-get-richer mechanism, and fitness-based approaches describe good-get-richer mechanisms, then our model can be characterized as a hot-get-richer mechanism, where hotness is determined by the rate of degree change over some recent past. The proposed model produces much later high-ranking nodes than the PA model and, under certain parameters, produces networks with structure similar to PA networks.
机译:在优惠附件(PA)下,网络增长模型迟到抵达的劣势对于他们的最终度数是劣势。 PA的先前扩展通过将节点适合度的概念添加到PA,通常从某些健身得分分布中绘制,或者通过单独使用适用度来控制附件来解决这一缺陷。在这里,我们介绍一种新的动态方法来解决迟到的抵达,通过向PA添加最近的变化偏差,使得具有更高的相对程度的相对度的节点在到达到到达节点上的时间接近变化,得到了附加概率提升。换句话说,如果PA描述了丰富的机制,并且基于健身的方法描述了良好的机制,那么我们的模型可以被称为热变富的机制,其中热度取决于速率最近的一些学位变化。所提出的模型在稍后的高级节点中产生比PA型号,并且在某些参数下,产生具有类似PA网络的结构的网络。

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