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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >A preferential attachment model with Poisson growth for scale-free networks
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A preferential attachment model with Poisson growth for scale-free networks

机译:无规模网络具有Poisson增长的优惠依恋模型

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We propose a scale-free network model with a tunable power-law exponent. The Poisson growth model, as we call it, is an offshoot of the celebrated model of Barabási and Albert where a network is generated iteratively from a small seed network; at each step a node is added together with a number of incident edges preferentially attached to nodes already in the network. A key feature of our model is that the number of edges added at each step is a random variable with Poisson distribution, and, unlike the Barabási–Albert model where this quantity is fixed, it can generate any network. Our model is motivated by an application in Bayesian inference implemented as Markov chain Monte Carlo to estimate a network; for this purpose, we also give a formula for the probability of a network under our model.
机译:我们提出了具有可调幂律指数的无标度网络模型。我们称之为Poisson增长模型,它是著名的Barabási和Albert的模型的分支,Barabási和Albert的模型是通过一个小型种子网络迭代生成的。在每个步骤中,将节点与多个入射边缘一起添加,这些入射边缘优先连接到网络中已经存在的节点。我们模型的一个关键特征是,每一步添加的边数是具有Poisson分布的随机变量,并且与Barabási-Albert模型不同(该数目固定),它可以生成任何网络。我们的模型是受贝叶斯推理中应用的启发而实现的,该应用被实现为马尔可夫链蒙特卡罗估计网络。为此,我们还给出了模型下网络概率的公式。

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