Real-world networks tend to be scale free, having heavy-tailed degree distributions with more hubs than predicted by classical random graph generation methods. Preferential attachment and growth are the most commonly accepted mechanisms leading to these networks and are incorporated in the Barab\'asi-Albert (BA) model. We provide an alternative model using a randomly stopped linking process inspired by a generalized Central Limit Theorem (CLT) for geometric distributions with widely varying parameters. The common characteristic of both the BA model and our randomly stopped linking model is the mixture of widely varying geometric distributions, suggesting the critical characteristic of scale free networks is high variance, not growth or preferential attachment. The limitation of classical random graph models is low variance in parameters, while scale free networks are the natural, expected result of real-world variance.
翻译:现实世界网络一般是免费的,其分布高度重,比古典随机图形生成方法预测的枢纽要多。偏重和增长是导致这些网络的最普遍接受的机制,并被纳入Barab\'asi-Albert(BA)模式。我们提供了一个替代模型,使用由通用中央限制理论(CLT)启发的随机停止的连接进程,用于参数差异很大的几何分布。BA模型和我们随机停止的连接模式的共同特点是,不同几何分布的混合,表明规模自由网络的关键特征是差异很大,而不是增长或偏重。经典随机图形模型的局限性是参数的低差异,而规模自由网络是真实世界差异的自然和预期结果。