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复杂网络上有偏随机游走的特征时间

Characteristic times of biased random walks on complex networks.

作者信息

Bonaventura Moreno, Nicosia Vincenzo, Latora Vito

机构信息

School of Mathematical Sciences, Queen Mary University of London, Mile End Road, London E1 4NS, United Kingdom and School of Business and Management, Queen Mary University of London, Mile End Road, London E1 4NS, United Kingdom.

School of Mathematical Sciences, Queen Mary University of London, Mile End Road, London E1 4NS, United Kingdom.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2014 Jan;89(1):012803. doi: 10.1103/PhysRevE.89.012803. Epub 2014 Jan 9.

Abstract

We consider degree-biased random walkers whose probability to move from a node to one of its neighbors of degree k is proportional to k(α), where α is a tuning parameter. We study both numerically and analytically three types of characteristic times, namely (i) the time the walker needs to come back to the starting node, (ii) the time it takes to visit a given node for the first time, and (iii) the time it takes to visit all the nodes of the network. We consider a large data set of real-world networks and we show that the value of α which minimizes the three characteristic times differs from the value α(min)=-1 analytically found for uncorrelated networks in the mean-field approximation. In addition to this, we found that assortative networks have preferentially a value of α(min) in the range [-1,-0.5], while disassortative networks have α(min) in the range [-0.5,0]. We derive an analytical relation between the degree correlation exponent ν and the optimal bias value α(min), which works well for real-world assortative networks. When only local information is available, degree-biased random walks can guarantee smaller characteristic times than the classical unbiased random walks by means of an appropriate tuning of the motion bias.

摘要

我们考虑度偏置随机游走者,其从一个节点移动到度为k的邻居节点之一的概率与k(α)成正比,其中α是一个调整参数。我们通过数值和解析方法研究了三种类型的特征时间,即:(i) 游走者回到起始节点所需的时间;(ii) 首次访问给定节点所需的时间;(iii) 访问网络中所有节点所需的时间。我们考虑了一个大型的真实世界网络数据集,并表明使这三个特征时间最小化的α值与在平均场近似中为不相关网络解析得出的α(min)= -1的值不同。除此之外,我们发现同配网络优先具有在[-1, -0.5]范围内的α(min)值,而异配网络具有在[-0.5, 0]范围内的α(min)值。我们推导了度相关指数ν与最优偏置值α(min)之间的解析关系,这对于真实世界的同配网络效果良好。当仅可获得局部信息时,通过对运动偏置进行适当调整,度偏置随机游走可以保证比经典的无偏随机游走具有更小的特征时间。

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